Items of some interest:

These are my recent Pin​board​.in links:

  • [1006.5366] “Not only defended but also applied”: The per­ceived absur­dity of Bayesian inference

    “The mis­sion­ary zeal of many Bayesians of old has been matched, in the other direc­tion, by a view among some the­o­reti­cians that Bayesian meth­ods are absurd-​​not merely mis­guided but obvi­ously wrong in prin­ci­ple. We con­sider sev­eral exam­ples, begin­ning with Feller’s clas­sic text on prob­a­bil­ity the­ory and con­tin­u­ing with more recent cases such as the per­ceived Bayesian nature of the so-​​called dooms­day argu­ment. We ana­lyze in this note the intel­lec­tual back­ground behind var­i­ous mis­con­cep­tions about Bayesian sta­tis­tics, with­out aim­ing at a com­plete his­tor­i­cal cov­er­age of the rea­sons for this dismissal.”

    social-​​dynamics sta­tis­tics martial-​​arts-​​schools
  • [1206.3268] Fea­ture Selec­tion via Block-​​Regularized Regression

    “In this paper, we con­sid­ered the prob­lem of find­ing a sub­set of covari­ates in a high-​​dimensional space that affect the out­put vari­able when there is a block struc– ture in the covari­ates. In the con­text of asso­ci­a­tion map­ping, we pro­posed a regression-​​based model with a Markov chain prior that encodes the infor­ma­tion in the cor­re­la­tion struc­ture such as dis­tance and re– com­bi­na­tion rate between adja­cent SNP mark­ers. We demon­strated on the sim­u­lated and mouse data that our pro­posed algo­rithm can be used to iden­tify groups of SNP mark­ers as a rel­e­vant block of causal SNPs. The idea of rep­re­sent­ing the cor­re­la­tion struc­ture as a Markov chain in a vari­able selec­tion method to learn grouped rel­e­vant vari­ables can be gen­er­al­ized to use a graph­i­cal model as a prior in a vari­able selec­tion prob– lem to rep­re­sent an arbi­trary cor­re­la­tion struc­ture in vari­ables in a high-​​dimensional space. Another inter– est­ing exten­sion of the model is to model a struc­ture in out­put vari­ables as well when mea­sure­ments of mul– tiple out­put vari­ables are available.”

    sta­tis­tics bioin­for­mat­ics algo­rithms data-​​mining feature-​​extraction
  • Fil­ipe Kiss : A bet­ter git log

    “So, are you tired of this old and bored git log screen?”

    yes software-​​development git tricks-​​n-​​tips bash
  • Neu­roskep­tic: Brains are Dif­fer­ent on Macs

    “The paper goes into lots more detail, but the les­son for researchers is extremely sim­ple: don’t cross the streams of data-​​analysis. Set up your analy­sis stream and then use it on all of your data. Same hard­ware, same soft­ware, same set­tings. Imag­ine you’re doing a study com­par­ing brain struc­ture in two groups. Halfway through ana­lyz­ing your data, you upgrade your MacOS. All of the brains you ana­lyze after that will be, say, 5% “big­ger”. That’ll cer­tainly make your data much nois­ier, and if you hap­pen to ana­lyze most of Group A before Group B, it’ll give you a false pos­i­tive find­ing. Some­times you just can’t avoid changes in hard­ware or soft­ware — IT techs have a habit of upgrad­ing things with­out ask­ing — but in these cases, you should run the same data under the old and the new regime to see if it’s mak­ing a dif­fer­ence. Finally, it would be wrong to blame FreeSurfer for this. I’d be sur­prised if they were any worse than the other soft­ware pack­ages. Mix­ing and match­ing ver­sions is some­thing that the FreeSurfer devel­op­ers specif­i­cally warn against. This paper shows why.”

    data-​​analysis repro­ducibil­ity technical-​​assumptions anomalies-​​are-​​where-​​you-​​find-​​them
  • Plug: What is infer­en­tial­ism? « Odontomachus’s Blog

    “I’ve been crit­i­cal of objects and the idea of ref­er­ence for a while now. To me sen­tences and propo­si­tions, by virtue of their role as “moves” in social inter­ac­tions, are likely to have pri­or­ity in a prop­erly objec­tive account of mean­ing. Many puta­tive objects (e.g. cor­po­ra­tions or muta­ble dig­i­tal doc­u­ments) bor­der on being fic­tional, gain­ing their object­hood only through what we say about them; and many refer­ring phrases seem to refer to dif­fer­ent things, depend­ing on what is being pred­i­cated. I think this opin­ion would make me what Pere­grin calls a “strong infer­en­tial­ist”. Even­tu­ally I hope that think­ing clearly about seman­tics ought to (among other things) help bring calm to the cur­rent mass hys­te­ria which is the Seman­tic Web and Linked Data, and help steer all of that energy expen­di­ture to improve its consequence.”

    prag­ma­tism indirect-​​links phi­los­o­phy talking-​​about-​​thinking-​​and-​​the-​​reverse
  • [1206.3552] A Clas­si­fi­ca­tion for Com­mu­nity Dis­cov­ery Meth­ods in Com­plex Networks

    “In the last few years many real-​​world net­works have been found to show a so-​​called com­mu­nity struc­ture orga­ni­za­tion. Much effort has been devoted in the lit­er­a­ture to develop meth­ods and algo­rithms that can effi­ciently high­light this hid­den struc­ture of the net­work, tra­di­tion­ally by par­ti­tion­ing the graph. Since net­work rep­re­sen­ta­tion can be very com­plex and can con­tain dif­fer­ent vari­ants in the tra­di­tional graph model, each algo­rithm in the lit­er­a­ture focuses on some of these prop­er­ties and estab­lishes, explic­itly or implic­itly, its own def­i­n­i­tion of com­mu­nity. Accord­ing to this def­i­n­i­tion it then extracts the com­mu­ni­ties that are able to reflect only some of the fea­tures of real com­mu­ni­ties. The aim of this sur­vey is to pro­vide a man­ual for the com­mu­nity dis­cov­ery prob­lem. Given a meta def­i­n­i­tion of what a com­mu­nity in a social net­work is, our aim is to orga­nize the main cat­e­gories of com­mu­nity dis­cov­ery based on their own def­i­n­i­tion of com­mu­nity. Given a desired def­i­n­i­tion of com­mu­nity and the fea­tures of a prob­lem (size of net­work, direc­tion of edges, mul­ti­di­men­sion­al­ity, and so on) this review paper is designed to pro­vide a set of approaches that researchers could focus on.”

    via:cshalizi graph-​​theory com­mu­nity clas­si­fi­ca­tion algo­rithms nudge
  • [1205.0792] Exact Wavelets on the Ball

    “We develop an exact wavelet trans­form on the three-​​dimensional ball (i.e. on the solid sphere), which we name the fla­glet trans­form. For this pur­pose we first con­struct an exact har­monic trans­form on the radial line using damped Laguerre poly­no­mi­als and develop a cor­re­spond­ing quad­ra­ture rule. Com­bined with the spher­i­cal har­monic trans­form, this approach leads to a sam­pling the­o­rem on the ball and a novel three-​​dimensional decom­po­si­tion which we call the Fourier-​​Laguerre trans­form. We relate this new trans­form to the well-​​known Fourier-​​Bessel decom­po­si­tion and show that band-​​limitness in the Fourier-​​Laguerre basis is a suf­fi­cient con­di­tion to com­pute the Fourier-​​Bessel decom­po­si­tion exactly. We then con­struct the fla­glet trans­form on the ball through a har­monic tiling, which is exact thanks to the exact­ness of the Fourier-​​Laguerre trans­form (from which the name fla­glets is coined). The cor­re­spond­ing wavelet ker­nels have com­pact local­i­sa­tion prop­er­ties in real and har­monic space and their angu­lar aper­ture is invari­ant under radial trans­la­tion. We intro­duce a mul­tires­o­lu­tion algo­rithm to per­form the fla­glet trans­form rapidly, while cap­tur­ing all infor­ma­tion at each wavelet scale in the min­i­mal num­ber of sam­ples on the ball. Our imple­men­ta­tion of these new tools achieves float­ing point pre­ci­sion and is made pub­licly avail­able. We per­form numer­i­cal exper­i­ments demon­strat­ing the speed and accu­racy of these libraries and illus­trate their capa­bil­i­ties on a sim­ple denois­ing example.”

    wavelets geom­e­try representation-​​theory signal-​​processing answer-​​languages
  • [1205.3077] Efficiency-​​Revenue Trade-​​offs in Auctions

    “When agents with inde­pen­dent pri­ors bid for a sin­gle item, Myerson’s opti­mal auc­tion max­i­mizes expected rev­enue, whereas Vickrey’s second-​​price auc­tion opti­mizes social wel­fare. We address the nat­ural ques­tion of trade-​​offs between the two cri­te­ria, that is, auc­tions that opti­mize, say, rev­enue under the con­straint that the wel­fare is above a given level. If one allows for ran­dom­ized mech­a­nisms, it is easy to see that there are polynomial-​​time mech­a­nisms that achieve any point in the trade-​​off (the Pareto curve) between rev­enue and wel­fare. We inves­ti­gate whether one can achieve the same guar­an­tees using deter­min­is­tic mech­a­nisms. We pro­vide a neg­a­tive answer to this ques­tion by show­ing that this is a (weakly) NP-​​hard prob­lem. On the pos­i­tive side, we pro­vide polynomial-​​time deter­min­is­tic mech­a­nisms that approx­i­mate with arbi­trary pre­ci­sion any point of the trade-​​off between these two fun­da­men­tal objec­tives for the case of two bid­ders, even when the val­u­a­tions are cor­re­lated arbi­trar­ily. The major prob­lem left open by our work is whether there is such an algo­rithm for three or more bid­ders with inde­pen­dent val­u­a­tion distributions.”

    algo­rithms Pareto-​​front performance-​​measure multiobjective-​​optimization
  • Sym­bol­set

    “Sym­bol­sets are seman­tic sym­bol fonts. They work in mod­ern browsers and any­where Open­Type fea­tures are supported.”

    typog­ra­phy uni­code
  • [1204.6653] Elim­i­na­tion of Glass Arti­facts and Object Segmentation

    “Many images nowa­days are cap­tured from behind the glasses and may have cer­tain stains dis­crep­ancy because of glass and must be processed to make dif­fer­en­ti­a­tion between the glass and objects behind it. This research paper pro­poses an algo­rithm to remove the dam­aged or cor­rupted part of the image and make it con­sis­tent with other part of the image and to seg­ment objects behind the glass. The dam­aged part is removed using total vari­a­tion inpaint­ing method and seg­men­ta­tion is done using kmeans clus­ter­ing, anisotropic dif­fu­sion and water­shed trans­for­ma­tion. The final out­put is obtained by inter­po­la­tion. This algo­rithm can be use­ful to appli­ca­tions in which some part of the images are cor­rupted due to data trans­mis­sion or needs to seg­ment objects from an image for fur­ther processing.”

    image-​​segmentation image-​​processing nudge-​​targets algo­rithms
  • The whole of the law — Things from your life

    “But it’ll be your deci­sion, not iner­tia or fate. The ongo­ing cadence of ask­ing these ques­tions (and, maybe, the con­tent of any answers you come up with) will con­vene an open space for you to live in. A world where what­ever you do is right.”

    this
  • The Pirate Uni­ver­sity | Pirate university

    “The Pirate Uni­ver­sity is an on-​​line bul­letin board on which stu­dents post requests for aca­d­e­mic pub­li­ca­tions. You can com­pare it to an aca­d­e­mic wish list. Oth­ers, who know where to find these pub­li­ca­tions, reply and if pos­si­ble, pro­vide links to the resources searched. The Pirate Uni­ver­sity is not pro­vid­ing, stor­ing or shar­ing copy­righted mate­r­ial. An impor­tant ques­tion is if the upload­ing of arti­cles, pub­li­ca­tions is legal. If you are the copy­right holder of the arti­cle requested, there should be no prob­lem. Also in cer­tain cases, if you or your insti­tute have acquired the rights of the pub­li­ca­tion, or if it is free of rights, there shouldn’t be a prob­lem. It is prob­a­bly best to con­sult with your librar­ian to see which kind of pub­li­ca­tion is okay to share on the Internet.”

    academic-​​culture pub­lish­ing col­lab­o­ra­tion crowd­sourc­ing librar­i­ans open-​​access schol­ar­ship
  • [1206.3793] A dis­trib­uted classification/​estimation algo­rithm for sen­sor networks

    “…We pro­pose a novel coop­er­a­tive iter­a­tive algo­rithm which copes with the com­mu­ni­ca­tion con­straints imposed by the net­work and shows remark­able per­for­mance. Our main result is a rig­or­ous proof of the con­ver­gence of the algo­rithm and a char­ac­ter­i­za­tion of the limit behav­ior. We also show that, in the limit when the num­ber of sen­sors goes to infin­ity, the com­mon unknown para­me­ter is esti­mated with arbi­trary small error, while the clas­si­fi­ca­tion error con­verges to that of the opti­mal cen­tral­ized max­i­mum like­li­hood esti­ma­tor. We also show numer­i­cal results that val­i­date the the­o­ret­i­cal analy­sis and sup­port their pos­si­ble gen­er­al­iza­tion. We com­pare our strat­egy with the Expectation-​​Maximization algo­rithm and we dis­cuss trade-​​offs in terms of robust­ness, speed of con­ver­gence and imple­men­ta­tion simplicity.”

    distributed-​​processing collective-​​behavior sensor-​​networks algo­rithms nudge-​​targets
  • [1204.6391] Extend­ing par­tial rep­re­sen­ta­tions of func­tion graphs and per­mu­ta­tion graphs

    “Func­tion graphs are graphs rep­re­sentable by inter­sec­tions of con­tin­u­ous real-​​valued func­tions on the inter­val [0,1] and are known to be exactly the com­ple­ments of com­pa­ra­bil­ity graphs. As such they are rec­og­niz­able in poly­no­mial time. Func­tion graphs gen­er­al­ize per­mu­ta­tion graphs, which arise when all func­tions con­sid­ered are lin­ear. We focus on the prob­lem of extend­ing par­tial rep­re­sen­ta­tions, which gen­er­al­izes the recog­ni­tion prob­lem. We observe that for per­mu­ta­tion graphs an easy exten­sion of Golumbic’s com­pa­ra­bil­ity graph recog­ni­tion algo­rithm can be exploited. This approach fails for func­tion graphs. Nev­er­the­less, we present a polynomial-​​time algo­rithm for extend­ing a par­tial rep­re­sen­ta­tion of a graph by func­tions defined on the entire inter­val [0,1] pro­vided for some of the ver­tices. On the other hand, we show that if a par­tial rep­re­sen­ta­tion con­sists of func­tions defined on subin­ter­vals of [0,1], then the prob­lem of extend­ing this rep­re­sen­ta­tion to func­tions on the entire inter­val [0,1] becomes NP-​​complete.”

    graph-​​theory math-i-didn’t-know representation-​​theory ontol­ogy inter­est­ing
  • [1206.3294] Flex­i­ble Pri­ors for Exemplar-​​based Clustering

    “Exemplar-​​based clus­ter­ing meth­ods have been shown to pro­duce state-​​of-​​the-​​art results on a num­ber of syn­thetic and real-​​world clus­ter­ing prob­lems. They are appeal­ing because they offer com­pu­ta­tional ben­e­fits over latent-​​mean mod­els and can han­dle arbi­trary pair­wise sim­i­lar­ity mea­sures between data points. How­ever, when try­ing to recover under­ly­ing struc­ture in clus­ter­ing prob­lems, tai­lored sim­i­lar­ity mea­sures are often not enough; we also desire con­trol over the dis­tri­b­u­tion of clus­ter sizes. Pri­ors such as Dirich­let process pri­ors allow the num­ber of clus­ters to be unspec­i­fied while express­ing pri­ors over data par­ti­tions. To our knowl­edge, they have not been applied to exemplar-​​based mod­els. We show how to incor­po­rate pri­ors, includ­ing Dirich­let process pri­ors, into the recently intro­duced affin­ity prop­a­ga­tion algo­rithm. We develop an effi­cient max­prod­uct belief prop­a­ga­tion algo­rithm for our new model and demon­strate exper­i­men­tally how the expanded range of clus­ter­ing pri­ors allows us to bet­ter recover true clus­ter­ings in sit­u­a­tions where we have some infor­ma­tion about the gen­er­at­ing process.”

    clus­ter­ing algo­rithms
  • Mag­a­zine — The Case Against Cre­den­tial­ism — The Atlantic

    ’”ALL OF OUR WORK HAS GIVEN ME A VERY STRONG view,” Richard Boy­atzis told me one after­noon. The con­sult­ing firm Boy­atzis heads, McBer and Com­pany, was founded by David McClel­land in 1963. Its spe­cialty has been ana­lyz­ing what peo­ple actu­ally do in busi­ness jobs—not what their job descrip­tions say, but how they spend their time and which skills seem most impor­tant to their suc­cess. “I’ve come to see that when­ever a group insti­tutes a cre­den­tial­ing process, whether by licens­ing or insist­ing on advanced degrees, the espoused rhetoric is to enforce the stan­dards of pro­fes­sion­al­ism. This is true whether it’s among accoun­tants or plumbers or physi­cians. But the observed con­se­quences always seem to be these two: the exclu­sion of cer­tain groups, whether by inten­tion or not, and the estab­lish­ment of mediocre per­for­mance standards.“‘

    pro­fes­sion­al­iza­tion cre­den­tial­ing Andrew-​​Abbott-​​smiles-​​in-​​Chicago author­ity exper­tise cultural-​​assumptions disintermediation-​​targets
  • [1205.2483] Edge-​​clique graphs of cock­tail par­ties have unbounded rankwidth

    “In an attempt to find a polynomial-​​time algo­rithm for the edge-​​clique cover prob­lem on cographs we tried to prove that the edge-​​clique graphs of cographs have bounded rankwidth. How­ever, this is not the case. In this note we show that the edge-​​clique graphs of cock­tail party graphs have unbounded rank width.”

    open-​​questions nudge-​​targets graph-​​theory algo­rithms
  • [1206.3235] Iden­ti­fy­ing rea­son­ing pat­terns in games

    “We present an algo­rithm that iden­ti­fies the rea­son­ing pat­terns of agents in a game, by iter­a­tively exam­in­ing the graph struc­ture of its Multi-​​Agent Influ­ence Dia­gram (MAID) rep­re­sen­ta­tion. If the deci­sion of an agent par­tic­i­pates in no rea­son­ing pat­terns, then we can effec­tively ignore that deci­sion for the pur­pose of cal­cu­lat­ing a Nash equi­lib­rium for the game. In some cases, this can lead to expo­nen­tial time sav­ings in the process of equi­lib­rium cal­cu­la­tion. More­over, our algo­rithm can be used to enu­mer­ate the rea­son­ing pat­terns in a game, which can be use­ful for con­struct­ing more effec­tive com­put­er­ized agents inter­act­ing with humans.”

    game-​​theory infer­ence strat­egy nudge-​​targets learning-​​by-​​watching

Items of some interest…

These are my recent Pin​board​.in links:

  • [1106.1804] A Crit­i­cal Assess­ment of Bench­mark Com­par­i­son in Planning

    “Recent trends in plan­ning research have led to empir­i­cal com­par­i­son becom­ing com­mon­place. The field has started to set­tle into a method­ol­ogy for such com­par­isons, which for obvi­ous prac­ti­cal rea­sons requires run­ning a sub­set of plan­ners on a sub­set of prob­lems. In this paper, we char­ac­ter­ize the method­ol­ogy and exam­ine eight implicit assump­tions about the prob­lems, plan­ners and met­rics used in many of these com­par­isons. The prob­lem assump­tions are: PR1) the per­for­mance of a gen­eral pur­pose plan­ner should not be penalized/​biased if exe­cuted on a sam­pling of prob­lems and domains, PR2) minor syn­tac­tic dif­fer­ences in rep­re­sen­ta­tion do not affect per­for­mance, and PR3) prob­lems should be solv­able by STRIPS capa­ble plan­ners unless they require ADL. The plan­ner assump­tions are: PL1) the lat­est ver­sion of a plan­ner is the best one to use, PL2) default para­me­ter set­tings approx­i­mate good per­for­mance, and PL3) time cut-​​offs do not unduly bias out­come. The met­rics assump­tions are: M1) per­for­mance degrades sim­i­larly for each plan­ner when run on degraded run­time envi­ron­ments (e.g., machine plat­form) and M2) the num­ber of plan steps dis­tin­guishes per­for­mance. We find that most of these assump­tions are not sup­ported empir­i­cally; in par­tic­u­lar, that plan­ners are affected dif­fer­ently by these assump­tions. We con­clude with a call to the com­mu­nity to devote research resources to improv­ing the state of the prac­tice and espe­cially to enhanc­ing the avail­able bench­mark problems.”

    plan­ning bench­mark­ing algo­rithms horse-​​races engineering-​​design operations-​​research nudge-​​targets
  • [1108.4361] The rela­tion­ship between acquain­tance­ship and coau­thor­ship in sci­en­tific col­lab­o­ra­tion networks

    “This arti­cle exam­ines the rela­tion­ship between acquain­tance­ship and coau­thor­ship pat­terns in a multi-​​disciplinary, multi-​​institutional, geo­graph­i­cally dis­trib­uted research cen­ter. Two social net­works are con­structed and com­pared: a net­work of coau­thor­ship, rep­re­sent­ing how researchers write arti­cles with one another, and a net­work of acquain­tance­ship, rep­re­sent­ing how those researchers know each other on a per­sonal level, based on their responses to an online sur­vey. Sta­tis­ti­cal analy­ses of the topol­ogy and com­mu­nity struc­ture of these net­works point to the impor­tance of small-​​scale, local, per­sonal net­works pred­i­cated upon acquain­tance­ship for accom­plish­ing col­lab­o­ra­tive work in sci­en­tific communities.”

    academic-​​culture network-​​theory cita­tion social-​​networks
  • [1108.4223] The set-​​theoretic multiverse

    “The mul­ti­verse view in set the­ory, intro­duced and argued for in this arti­cle, is the view that there are many dis­tinct con­cepts of set, each instan­ti­ated in a cor­re­spond­ing set-​​theoretic uni­verse. The uni­verse view, in con­trast, asserts that there is an absolute back­ground set con­cept, with a cor­re­spond­ing absolute set-​​theoretic uni­verse in which every set-​​theoretic ques­tion has a def­i­nite answer. The mul­ti­verse posi­tion, I argue, explains our expe­ri­ence with the enor­mous diver­sity of set-​​theoretic pos­si­bil­i­ties, a phe­nom­e­non that chal­lenges the uni­verse view. In par­tic­u­lar, I argue that the con­tin­uum hypoth­e­sis is set­tled on the mul­ti­verse view by our exten­sive knowl­edge about how it behaves in the mul­ti­verse, and as a result it can no longer be set­tled in the man­ner for­merly hoped for.”

    math­e­mat­ics mathematical-​​criticism looking-​​forward-​​to-​​understanding-​​this-​​someday pragmatism-it-ain’t
  • [1102.1934] The struc­ture of the Arts & Human­i­ties Cita­tion Index: A map­ping on the basis of aggre­gated cita­tions among 1,157 journals

    “Using the Arts & Human­i­ties Cita­tion Index (A&HCI) 2008, we apply map­ping tech­niques pre­vi­ously devel­oped for map­ping jour­nal struc­tures in the Sci­ence and Social Sci­ence Cita­tion Indices. Cita­tion rela­tions among the 110,718 records were aggre­gated at the level of 1,157 jour­nals spe­cific to the A&HCI, and the jour­nal struc­tures are ques­tioned on whether a cog­ni­tive struc­ture can be recon­structed and visu­al­ized. Both cosine-​​normalization (bot­tom up) and fac­tor analy­sis (top down) sug­gest a divi­sion into approx­i­mately twelve sub­sets. The rela­tions among these sub­sets are explored using var­i­ous visu­al­iza­tion tech­niques. How­ever, we were not able to retrieve this struc­ture using the ISI Sub­ject Cat­e­gories, includ­ing the 25 cat­e­gories which are spe­cific to the A&HCI. We dis­cuss options for val­i­da­tion such as against the cat­e­gories of the Human­i­ties Indi­ca­tors of the Amer­i­can Acad­emy of Arts and Sci­ences, the panel struc­ture of the Euro­pean Ref­er­ence Index for the Human­i­ties (ERIH), and com­pare our results with the cur­ricu­lum orga­ni­za­tion of the Human­i­ties Sec­tion of the Col­lege of Let­ters and Sci­ences of UCLA as an exam­ple of insti­tu­tional organization.”

    network-​​theory citation-​​networks human­i­ties academic-​​culture quantitative-​​humanities
  • [1108.4220] A Dynam­i­cal Sys­tems Approach for Sta­tic Eval­u­a­tion in Go

    “In the paper argu­ments are given why the con­cept of sta­tic eval­u­a­tion has the poten­tial to be a use­ful exten­sion to Monte Carlo tree search. A new con­cept of mod­el­ing sta­tic eval­u­a­tion through a dynam­i­cal sys­tem is intro­duced and strengths and weak­nesses are dis­cussed. The gen­eral suit­abil­ity of this approach is demonstrated.”

    representation-​​theory plan­ning monte-​​carlo-​​models nudge algo­rithms
  • [1105.5449] AntNet: Dis­trib­uted Stig­mer­getic Con­trol for Com­mu­ni­ca­tions Networks

    “…We com­pare our algo­rithm with six state-​​of-​​the-​​art rout­ing algo­rithms com­ing from the telecom­mu­ni­ca­tions and machine learn­ing fields. The algo­rithms’ per­for­mance is eval­u­ated over a set of real­is­tic test­beds. We run many exper­i­ments over real and arti­fi­cial IP data­gram net­works with increas­ing num­ber of nodes and under sev­eral par­a­dig­matic spa­tial and tem­po­ral traf­fic dis­tri­b­u­tions. Results are very encour­ag­ing. AntNet showed supe­rior per­for­mance under all the exper­i­men­tal con­di­tions with respect to its com­peti­tors. We ana­lyze the main char­ac­ter­is­tics of the algo­rithm and try to explain the rea­sons for its superiority.”

    ant-​​colony-​​optimization network-​​theory net­works con­trol algo­rithms nudge-​​targets rout­ing
  • Bozo Sapi­ens: Sacco and Vanzetti: Evidence

    “Wigmore’s tech­nique, like prob­a­bil­ity itself, is both wide-​​ranging and tediously painstak­ing; his book was pop­u­lar only among insom­niac judges. But now that com­put­ers can take on the numer­i­cal drudgery, it is prov­ing its worth in just such tan­gled cases as Sacco’s and Vanzetti’s. The legal schol­ars Joseph Kadane and David Schum have applied a sophis­ti­cated exten­sion of Wigmore’s method to the vast body of evi­dence from the case. Theirs is a remark­able achieve­ment; their charts retain all the orig­i­nal com­plex­i­ties: the facts with­held or per­verted, the hearsay, the lies told and dis­avowed on both sides, the charged polit­i­cal atmos­phere of eighty years ago. They never dis­count a fact, no mat­ter how far-​​fetched; they  sim­ply give it its due weight in their dynamic struc­ture. Their con­clu­sion?  Unjust though it is to sum­ma­rize a book in a sen­tence, the bal­ance of prob­a­bil­ity seems to favor the view expressed long ago by one of the defen­dants’ close com­pan­ions: “every­one in the Boston anar­chis­tic cir­cle knew that Sacco was guilty and that Vanzetti was inno­cent as far as the actual par­tic­i­pa­tion in the killing.” So, there it is: whichever side our polit­i­cal instincts favor, we are des­tined to be half wrong. Vanzetti’s last words were: “I wish to for­give some peo­ple for what they are now doing to me.”  If we were all will­ing to make the extra effort to work out the prob­a­bil­i­ties, per­haps we might not need for­give­ness so often.”

    probability-​​theory legal-​​studies computational-​​methods his­tory
  • Get­ting first sale wrong

    “I hate to imag­ine it, but this deci­sion raises some fright­en­ing pos­si­bil­i­ties and requires greater vig­i­lance on the part of librar­i­ans.  At the very least, libraries must demand infor­ma­tion from pub­lish­ers about where every item has been man­u­fac­tured. Obtain­ing such infor­ma­tion is no longer an option, since our legal uses of the things we buy now depends on know­ing this, and the place where the pub­lisher is located or where the sale took place is sim­ply not suf­fi­cient.  But what I really fear is that pub­lish­ers will begin to man­u­fac­ture more of their works over­seas and then try to demand a higher price – one that includes “pub­lic lend­ing rights” – from libraries. If libraries are in a dif­fi­cult posi­tion, stu­dents may be even worse off under the Sec­ond Circuit’s rul­ing.  Again, pub­lish­ers now have an incen­tive to man­u­fac­ture their text­books abroad and sell them to U.S. stu­dents.  Such stu­dents would no longer have the right to re-​​sell their text­books or to pur­chase used texts.  The defen­dant in the case, Supap Kirt­saeng, had made a lucra­tive busi­ness out of reselling text­books pur­chased in Asia.  He was per­haps an unsym­pa­thetic party, but what he was doing was not dif­fer­ent in kind from the resale of texts that is com­mon on all col­lege cam­puses.  This activ­ity makes higher edu­ca­tion a lit­tle more pos­si­ble for many.  Now pub­lish­ers have an easy way for to close down this sec­ondary mar­ket for text­books, about which they have com­plained for years.  In the process, the cost of edu­ca­tion for col­lege stu­dents would be pushed up even further.”

    copy­right insan­ity intellectual-​​property academic-​​culture librar­i­ans
  • [1106.6037] Black Hole Search with Finite Automata Scat­tered in a Syn­chro­nous Torus

    “We con­sider the prob­lem of locat­ing a black hole in syn­chro­nous anony­mous net­works using finite state agents. A black hole is a harm­ful node in the net­work that destroys any agent vis­it­ing that node with­out leav­ing any trace. The objec­tive is to locate the black hole with­out destroy­ing too many agents. This is dif­fi­cult to achieve when the agents are ini­tially scat­tered in the net­work and are unaware of the loca­tion of each other. Pre­vi­ous stud­ies for black hole search used more pow­er­ful mod­els where the agents had non-​​constant mem­ory, were labelled with dis­tinct iden­ti­fiers and could either write mes­sages on the nodes of the net­work or mark the edges of the net­work. In con­trast, we solve the prob­lem using a small team of finite-​​state agents each car­ry­ing a con­stant num­ber of iden­ti­cal tokens that could be placed on the nodes of the net­work. Thus, all resources used in our algo­rithms are inde­pen­dent of the net­work size. We restrict our atten­tion to ori­ented torus net­works and first show that no finite team of finite state agents can solve the prob­lem in such net­works, when the tokens are not mov­able. In case the agents are equipped with mov­able tokens, we deter­mine lower bounds on the num­ber of agents and tokens required for solv­ing the prob­lem in torus net­works of arbi­trary size. Fur­ther, we present a deter­min­is­tic solu­tion to the black hole search prob­lem for ori­ented torus net­works, using the min­i­mum num­ber of agents and tokens.”

    algo­rithms agent-​​based multi-​​agent-​​systems network-​​theory nudge-​​targets
  • [1106.1821] Col­lec­tive Intel­li­gence, Data Rout­ing and Braess’ Paradox

    “We con­sider the prob­lem of design­ing the the util­ity func­tions of the utility-​​maximizing agents in a multi-​​agent sys­tem so that they work syn­er­gis­ti­cally to max­i­mize a global util­ity. The par­tic­u­lar prob­lem domain we explore is the con­trol of net­work rout­ing by plac­ing agents on all the routers in the net­work. Con­ven­tional approaches to this task have the agents all use the Ideal Short­est Path rout­ing Algo­rithm (ISPA). We demon­strate that in many cases, due to the side-​​effects of one agent’s actions on another agent’s per­for­mance, hav­ing agents use ISPA’s is sub­op­ti­mal as far as global aggre­gate cost is con­cerned, even when they are only used to route infin­i­tes­i­mally small amounts of traf­fic. The util­ity func­tions of the indi­vid­ual agents are not “aligned” with the global util­ity, intu­itively speak­ing. As a par­tic­u­lar exam­ple of this we present an instance of Braess’ para­dox in which adding new links to a net­work whose agents all use the ISPA results in a decrease in over­all through­put. We also demon­strate that load-​​balancing, in which the agents’ deci­sions are col­lec­tively made to opti­mize the global cost incurred by all traf­fic cur­rently being routed, is sub­op­ti­mal as far as global cost aver­aged across time is con­cerned. This is also due to ‘side-​​effects’, in this case of cur­rent rout­ing deci­sion on future traf­fic. The math­e­mat­ics of Col­lec­tive Intel­li­gence (COIN) is con­cerned pre­cisely with the issue of avoid­ing such dele­te­ri­ous side-​​effects in multi-​​agent sys­tems, both over time and space. We present key con­cepts from that math­e­mat­ics and use them to derive an algo­rithm whose ideal ver­sion should have bet­ter per­for­mance than that of hav­ing all agents use the ISPA, even in the infin­i­tes­i­mal limit. We present exper­i­ments ver­i­fy­ing this, and also show­ing that a machine-​​learning-​​based ver­sion of this COIN algo­rithm in which costs are only impre­cisely esti­mated via empir­i­cal means (a ver­sion poten­tially applic­a­ble in the real world) also out­per­forms the ISPA, despite hav­ing access to less infor­ma­tion than does the ISPA. In par­tic­u­lar, this COIN algo­rithm almost always avoids Braess’ paradox.”

    collective-​​intelligence search-​​algorithms figure-​​ground-​​error plan­ning nudge
  • [1108.0404] Exploit­ing Agent and Type Inde­pen­dence in Col­lab­o­ra­tive Graph­i­cal Bayesian Games

    “Effi­cient col­lab­o­ra­tive deci­sion mak­ing is an impor­tant chal­lenge for mul­ti­a­gent sys­tems. Find­ing opti­mal joint actions is espe­cially chal­leng­ing when each agent has only imper­fect infor­ma­tion about the state of its envi­ron­ment. Such prob­lems can be mod­eled as col­lab­o­ra­tive Bayesian games in which each agent receives pri­vate infor­ma­tion in the form of its type. How­ever, rep­re­sent­ing and solv­ing such games requires space and com­pu­ta­tion time expo­nen­tial in the num­ber of agents. This arti­cle intro­duces col­lab­o­ra­tive graph­i­cal Bayesian games (CGBGs), which facil­i­tate more effi­cient col­lab­o­ra­tive deci­sion mak­ing by decom­pos­ing the global pay­off func­tion as the sum of local pay­off func­tions that depend on only a few agents. We pro­pose a frame­work for the effi­cient solu­tion of CGBGs based on the insight that they posses two dif­fer­ent types of inde­pen­dence, which we call agent inde­pen­dence and type inde­pen­dence. In par­tic­u­lar, we present a fac­tor graph rep­re­sen­ta­tion that cap­tures both forms of inde­pen­dence and thus enables effi­cient solu­tions. In addi­tion, we show how this rep­re­sen­ta­tion can pro­vide lever­age in sequen­tial tasks by using it to con­struct a novel method for decen­tral­ized par­tially observ­able Markov deci­sion processes. Exper­i­men­tal results in both ran­dom and bench­mark tasks demon­strate the improved scal­a­bil­ity of our meth­ods com­pared to sev­eral exist­ing alternatives.”

    col­lab­o­ra­tion agent-​​based complex-​​systems emergent-​​design nudge-​​targets
  • [1102.2837] Effi­cient Pro­mo­tion Strate­gies in Hier­ar­chi­cal Organizations

    “The Peter prin­ci­ple has been recently inves­ti­gated by means of an agent-​​based sim­u­la­tion and its valid­ity has been numer­i­cally cor­rob­o­rated. It has been con­firmed that, within cer­tain con­di­tions, it can really influ­ence in a neg­a­tive way the effi­ciency of a pyra­mi­dal orga­ni­za­tion adopt­ing mer­i­to­cratic pro­mo­tions. It was also found that, in order to bypass these effects, alter­na­tive pro­mo­tion strate­gies should be adopted, as for exam­ple a ran­dom selec­tion choice. In this paper, within the same line of research, we study pro­mo­tion strate­gies in a more real­is­tic hier­ar­chi­cal and mod­u­lar orga­ni­za­tion and we show the robust­ness of our pre­vi­ous results, extend­ing their valid­ity to a more gen­eral con­text. We dis­cuss also why the adop­tion of these strate­gies could be use­ful for real organizations.”

    organizational-​​behavior com­plex­ol­ogy complexological-​​amusements agent-​​based com­pe­tence

Items of some interest…

These are my recent Pin​board​.in links:

  • Accor­dion Mini Books | WHCC

    “Accor­dion Mini Books are the per­fect gift item for your clients to use as mini folios and brag books. Avail­able in a wal­let and a square 3×3 size, order an Accor­dion Mini Book on any of our press printed papers – stan­dard semi-​​gloss, art linen, art water­color, art recy­cled, and pearl. UV coat­ing can also be added. Cover options include fab­rics, leathers, suedes, or a per­son­al­ized cus­tom photo cover in lus­tre or metal­lic with a matte lam­i­nate. The wal­let Accor­dion Mini Books have up to 14 cus­tomiz­able pan­els and the square 3×3 has up to 10 cus­tomiz­able pan­els. This is a great add-​​on item with any order! Accor­dion Mini Books are avail­able through ROES with a min­i­mum order of 3 iden­ti­cal books, order each side as a spread. Frosted Slip Cov­ers are also avail­able for only $1/​book.”

  • book-​​art project swag-​​making
  • The Truth About the Con­fed­er­acy | Corrente

    “One thing I really would like you to take away from this diary is a basic sense of how the United States, as a self-​​governing demo­c­ra­tic repub­lic, can­not long tol­er­ate oli­garchic and aris­to­cratic ideas in its body politic. This is becom­ing an increas­ingly urgent issue for us today, because the Amer­i­can con­ser­v­a­tive move­ment today is basi­cally a replica of the slavery-​​defending, anti-​​free labor, government-​​hating, insur­rec­tion minded, treason-​​breathing, vio­lently inclined Con­fed­er­acy. And, I want you to be able to instantly rec­og­nize and rebut the false his­to­ries that neo-​​Confederates have cre­ated. So, the first mate­r­ial I place before you is an excerpt from an impor­tant and emo­tion­ally pow­er­ful 1995 book, What They Fought For, 1861–1865, a mas­ter­ful sur­vey and sum­mary of pri­vate cor­re­spon­dence from Civil War sol­diers and offi­cers, by James M. McPherson.”

  • Civil-​​War that-​​Santayana-​​quote-​​you-​​know-​​the-​​one con­ser­vatism Bushism his­tory cultural-​​assumptions
  • mojombo/​grit — GitHub

    “Grit gives you object ori­ented read/​write access to Git repos­i­to­ries via Ruby. The main goals are sta­bil­ity and per­for­mance. To this end, some of the inter­ac­tions with Git repos­i­to­ries are done by shelling out to the system’s git com­mand, and other inter­ac­tions are done with pure Ruby reim­ple­men­ta­tions of core Git func­tion­al­ity. This choice, how­ever, is trans­par­ent to end users, and you need not know which method is being used.”

  • version-​​control Ruby git GitHub library pro­gram­ming doc­u­ments
  • Economist’s View: Labor Mar­ket Pol­icy in the Great Recession

    “The pos­i­tive les­son for the US is that we have a lot of scope to give employ­ers incen­tives to cut hours rather than jobs, includ­ing improv­ing and expand­ing “work-​​sharing” (part-​​time unem­ploy­ment ben­e­fit) pro­grams as well as imple­ment­ing new direct tax cred­its to firms that expand paid time off (paid sick days, paid fam­ily leave, paid vaca­tions, and other mea­sures). The neg­a­tive les­son is that focus­ing on supply-​​side issues such as train­ing, edu­ca­tion, and improved job-​​matching for the unem­ployed –as much sense as they make in the long run– is not likely to get us very far when the econ­omy is at 9 per­cent unem­ploy­ment. Den­mark does far more than we could ever hope to accom­plish along these lines and the unem­ploy­ment there almost dou­bled between 2007 and 2010.”

  • unem­ploy­ment public-​​policy economic-​​crisis gov­ern­ment history-​​is-​​a-​​feature-​​not-​​a-​​bug
  • The per­ils of filter-​​then-​​publish

    “When I pri­vately asked them why they had used R*-trees, while it was easy to check exper­i­men­tally that they did not help, the answer was “it was the only way to get our paper in a major con­fer­ence”. So my work has been made more com­pli­cated for the sole pur­pose of impress­ing the review­ers: “look, I know about R*-trees too!””

  • peer-​​review cultural-​​dynamics pub­lish­ing academic-​​culture jour­nals disintermediation-​​in-​​action
  • Why Do We Quote? The Cul­ture and His­tory of Quo­ta­tion — Open Book Publishers

    “This is a rich and engag­ing work of out­stand­ing schol­ar­ship. Schol­ars in soci­olin­guis­tics, lit­er­a­ture, and folk­lore will rec­og­nize the impor­tance of the book for their fields. Gen­eral read­ers will find it just plain interesting”

  • academic-​​culture books want
  • They Never Cared About Unem­ploy­ment « Open Economics

    “What’s strik­ing, though, is that even in Jan­u­ary of 2010, when unem­ploy­ment was over 10%, deficits received equal men­tion as unem­ploy­ment. The media is cer­tainly cul­pa­ble here, but I’m guess­ing that their head­lines are dri­ven by the polit­i­cal dis­cus­sion, which since the pas­sage of the stim­u­lus has been entirely warped. Goes to show that our polit­i­cal lead­ers, and the media by exten­sion, will never give unem­ploy­ment the atten­tion it deserves.”

  • economic-​​crisis financial-​​crisis pol­i­tics unem­ploy­ment bankers-​​should-​​start-​​avoiding-​​lampposts-​​right-​​about-​​now
  • Guest Post: Gei­th­ner Says “The Size Of The Shock Was Larger Than What Pre­cip­i­tated The Great Depres­sion” « naked capitalism

    “…(So the shock was even big­ger than the one lead­ing up to the Depres­sion because Gei­th­ner and his bud­dies helped blow the bub­ble and try to cover up wrong­do­ing on Wall Street.) Gei­th­ner has been equally bad as Trea­sury boss. Indeed, there is hardly a sin­gle inde­pen­dent econ­o­mist who thinks he has been respond­ing appro­pri­ately to the eco­nomic cri­sis. Sorry to say, but Gei­th­ner has long been a yes-​​man to the powers-​​that-​​be, who ships pal­lets of money wher­ever he is told with­out ques­tion or any follow-​​up or track­ing what­so­ever. Even worse, Gei­th­ner has been called an idiot by Nas­sim Taleb and a “con man” by Time Mag­a­zine. No won­der we’re going to even­tu­ally have another crash … And because Gei­th­ner (along with Bernanke) have insisted that the big banks be bailed out at Main Street’s expense, that the sta­tus quo be pro­tected instead of reformed, and that the U.S. insure the debts of the too big to fails, the next cri­sis will be even big­ger than the last.”

  • bankers-​​should-​​start-​​avoiding-​​lampposts-​​right-​​about-​​now financial-​​crisis this-​​will-​​end-​​badly
  • Stuff Dig­i­tal Human­ists Like: Defin­ing Dig­i­tal Human­i­ties by its Values

    “Here are five to start us off: Like: Twit­ter /​ Don’t like: Face­book. The first thing we have to men­tion, which we have men­tioned a few times already, is Twit­ter. The rea­sons we like Twit­ter are com­plex and I won’t pre­tend to under­stand them all, but I’ll throw out a few sug­ges­tions. First, its “fol­low” rather than “friend” model is more open, allows for the col­lab­o­ra­tion and non-​​hierarchy that the Inter­net and dig­i­tal human­i­ties val­ues. Sec­ond, and related to this, Twit­ter is the place where content-creators—journalists, writ­ers, artists, web devel­op­ers, etc.—tend to hang out. We over­lap with those com­mu­ni­ties, or at least seek to over­lap with them, in pro­duc­tive ways. They are the dis­tant nodes from which we hope new inno­va­tions will come. Third, Twit­ter, in the way we use it, is mostly about shar­ing ideas whereas Face­book is about shar­ing rela­tion­ships. Schol­ars are good at ideas, maybe less so at rela­tion­ships. Like: Agile devel­op­ment /​ Dis­like: long plan­ning cycles. The sec­ond thing I’ll men­tion is agile devel­op­ment, the phi­los­o­phy of “releas­ing early and often,” which we do not only with software/​code but also with our ideas and writ­ing when we Tweet, blog, and chat. We do this as good neigh­bors but also in the hope that releas­ing our code and ideas will improve with con­tri­bu­tions from end points of our net­works. Like: DIY /​ Dis­like: Out­sourc­ing. Most of the most suc­cess­ful dig­i­tal human­i­ties projects are those done by scholar/​technologists not those imag­ined by schol­ars and imple­mented by tech­nol­o­gists. Like­wise, the most suc­cess­ful dig­i­tal human­ists are schol­ars who know the tech­nol­ogy, often those who are self-​​taught, not ones who seek a client-​​vendor rela­tion­ship with tech­nol­o­gists. We take this insight to heart in our hir­ing at CHNM, look­ing for peo­ple with for­mal train­ing in the human­i­ties and self-​​taught tech skills. Like: PHP /​ Dis­like: C++. Fourth, and fol­low­ing from the last point, we like PHP not C++. This is another way of say­ing we like the trans­par­ent, easy-​​to-​​learn, and sim­ple (if some­times ham-​​handed) tech­nolo­gies of the Web more than the more pow­er­ful, more sophis­ti­cated, more ele­gant, but less approach­able com­piled code of the desk­top. A focus on get­ting the most out of sim­ple, trans­par­ent, ver­nac­u­lar tech­nolo­gies allows us to keep the door to the field open to new entrants. Like: Extra­mural fund­ing /​ Dis­like: Intra­mural fund­ing. In one respect, this may seem obvi­ous: every­body likes grants. In another respect it’s prob­a­bly going a lit­tle too far to say we don’t like intra­mural fund­ing: it is essen­tial to build­ing and main­tain­ing capac­ity for our cen­ters and staff. But it seems to me the most suc­cess­ful dig­i­tal human­i­ties projects are those that result from com­pet­i­tive grant mak­ing processes, espe­cially the fed­eral grant mak­ing process. Why is this? I can point to at least three rea­sons: 1) Attract­ing grant money keeps us inno­vat­ing, which, like it or not, is a pre­mium in our busi­ness. Grants are given for new work, not for more of the same. 2) Writ­ing grants and serv­ing on pan­els keep us in con­ver­sa­tion with the field. We have to keep cur­rent and keep in touch with one another to jus­tify our projects to grant­mak­ers and to rec­om­mend oth­ers’ projects for fund­ing. Increas­ingly, fund­ing guide­lines them­selves require col­lab­o­ra­tion. 3) Unlike much tra­di­tional schol­ar­ship, which often requires one big deliv­er­able (a book) after years of close-​​kept study, research, and writ­ing, grant work requires defin­ing and meet­ing a set of closely timed, con­crete deliv­er­ables, a mode of work which encour­ages the kind of agile devel­op­ment so val­ued by the Inter­net and dig­i­tal human­i­ties community.”

  • digital-​​humanities cultural-​​norms open-​​access open­ness network-​​culture
  • Agilistry Stu­dio — Agile Management

    “Sev­eral stud­ies indi­cate that “old-​​style” man­agers are the biggest obsta­cle in tran­si­tions to Agile soft­ware devel­op­ment. Devel­op­ment man­agers and team lead­ers need to learn what their new role is in Agile soft­ware devel­op­ment orga­ni­za­tions. This course will help them.”

  • man­age­ment agile-​​management project-​​management class Jurgen-​​Appelo
  • Embed­ding Col­lab­o­ra­tion from the Start — Jimmy Guter­man — Our Edi­tors — Har­vard Busi­ness Review

    “At Nokia, infor­mal men­tor­ing begins as soon as some­one steps into a new job. Typ­i­cally, within a few days, the employee’s man­ager will sit down and list all the peo­ple in the orga­ni­za­tion, no mat­ter in what loca­tion, it would be use­ful for the employee to meet. This is a deeply ingrained cul­tural norm, which prob­a­bly orig­i­nated when Nokia was a smaller and sim­pler orga­ni­za­tion. The man­ager sits with the new­comer, just as her man­ager sat with her when she joined, and reviews what top­ics the new­comer should dis­cuss with each per­son on the list and why estab­lish­ing a rela­tion­ship with him or her is impor­tant. It is then stan­dard for the new­comer to actively set up meet­ings with the peo­ple on the list, even when it means trav­el­ing to other loca­tions. The gift of time — in the form of hours spent on coach­ing and build­ing net­works — is seen as cru­cial to the col­lab­o­ra­tive cul­ture at Nokia.”

  • col­lab­o­ra­tion man­age­ment Workantile-​​ideas social-​​norms social-​​networks organizational-​​design
  • The Con­ver­sa­tion, the startup Aus­tralian news site, wants to bring aca­d­e­mic exper­tise to break­ing news » Nie­man Jour­nal­ism Lab » Push­ing to the Future of Journalism

    “First, “every author has to fill out a pro­file, so the reader knows who the per­son is and their edu­ca­tion. And there is the addi­tional require­ment of a dis­clo­sure of any poten­tial con­flicts which might color their judgment.” Second, in response to the polit­i­cal ques­tion — after not­ing that my academics-​​are-​​liberal asser­tion might be a bit loaded — Jas­pan replied that what The Con­ver­sa­tion is ulti­mately doing is putting peo­ple in touch with “aca­d­e­mics who are usu­ally bet­ter informed than the gen­eral pub­lic because of their depth of knowl­edge and their sense of the com­plex­ity of the issue.” Third, and most impor­tant, Jas­pan sees The Con­ver­sa­tion, true to its name, as lead­ing to pub­lic debate. “One of the key things we want to do with a public-​​facing media chan­nel is to make sure we have a range of views on some­thing like the exe­cu­tion of Osama Bin Ladin, and that we have dif­fer­ent inter­pre­ta­tions of what hap­pened and whether or not the means in which it was done were judi­cial.” The main goal, though: “We want to sur­prise our read­ers. We don’t want to give them the usual expla­na­tions, alter­na­tive insights, and view­points — and that will lead to lively con­ver­sa­tion.” Jaspan’s back­ers come from both the non­profit and for-​​profit realms. The Con­ver­sa­tion is backed by Ernst & Young, among other cor­po­rate supporters. And from acad­e­mia, he has drawn on some of the top Aus­tralian research uni­ver­si­ties, in addi­tion to Australia’s Depart­ment of Education. To find the aca­d­e­mics, Jas­pan and his staff did a “cen­sus” of aca­d­e­mics based on their areas of exper­tise. Then, by word of mouth, they asked par­tic­i­pat­ing aca­d­e­mics to rec­om­mend col­leagues who would make good con­trib­u­tors to the site.”

  • jour­nal­ism acad­e­mia com­men­tary deepening-​​the-​​news exper­i­ment con­ver­sa­tion
  • Cen­sored Genius: The Fight Goes On.

    “A recent post by Seth Godin attempts to define a librar­ian as some­thing lim­ited by for­mat: print books are bad, dig­i­tal bits are good. So librar­i­ans should become dig­i­tal wiz­ards, or some­thing. I think the cur­rent hip term is “data sherpa who directs and engages con­ver­sa­tions,” or some other bull­shit. And a librar­ian is bad if she’s not con­tin­u­ously evolv­ing and grow­ing toes. But a good librar­ian would never exclude a data for­mat from the search results. You ask me for infor­ma­tion on tur­tles and you’re get­ting every­thing I can find, and that includes printed books. But chances are, you’re going to wave your Kin­dle in my face and say, “I want it here.” And regard­less of my reply, my eyes will tell you to go fuck your­self. Sixty per­cent of the world’s peo­ple would kill to have a library filled with books. Some coun­tries won’t even let you into a library with­out proper iden­ti­fi­ca­tion. But Amer­i­cans, on our rapid decent from being a world power toward become the world’s bag boy, have lost sight of what has last­ing value and moved on to what has recur­ring monthly fees. In response to Seth’s Blog, Bobbi New­man says, “One of the many roles of the pub­lic library is to ensure that all peo­ple have access to that infor­ma­tion.“ And that is the fun­da­men­tal dif­fer­ence with every cur­rent view of the library and the real pur­pose of the library: Libraries are for everyone.”

  • librar­i­ans libraries library2.x cultural-​​assumptions archives cultural-​​banking-​​vs-​​cultural-​​levelling
  • Pirate Bay Heads Nor­we­gian Domain Block­ing List | TorrentFreak

    “The spread of anti-​​filesharing mea­sures across the United States and Europe appears to be accel­er­at­ing at a some­what dizzy­ing pace. On an almost daily basis dur­ing the last few months sto­ries about con­tro­ver­sial and some­times dra­con­ian mea­sures to deal with online infringe­ment have hit the head­lines. Say what you like about the big movie and music stu­dios – they cer­tainly know how to coor­di­nate their lob­by­ing to per­fec­tion. Tim­ing like this, with leg­is­la­tion being mulled in many major mar­kets simul­ta­ne­ously, sends a pow­er­ful message.”

  • rein­ter­me­di­a­tion law glob­al­ism copyright-​​war that-whole-free-assembly-thing-depends-on-what-you’re-up-to

Items of some interest…

These are my recent Pin​board​.in links:

  • Local Motors Com­pe­ti­tion: Terra Prix 2085 — Core77 — “Local Motors, a rev­o­lu­tion­ary crowd-​​sourced car com­pany, is hold­ing a con­cept design com­pe­ti­tion for a transcon­ti­nen­tal race vehi­cle with a sup­port ship.”

  • industrial-​​design com­pe­ti­tion Syd-​​Mead engineering-​​design awe­some
  • Faulty Tow­ers: The Cri­sis in Higher Edu­ca­tion | The Nation — “…For all its pre­ten­sions to pub­lic impor­tance (every pro­fes­sor secretly thinks he’s a pub­lic intel­lec­tual), the pro­fes­so­ri­ate is awfully quiet, essen­tially nonex­is­tent as a col­lec­tive voice. If acad­e­mia is going to once again become a decent place to work, if our best young minds are going to be attracted back to the pro­fes­sion, if higher edu­ca­tion is going to be reclaimed as part of the Amer­i­can promise, if teach­ing and research are going to make the coun­try strong again, then pro­fes­sors need to get off their back­sides and orga­nize: depart­ment by depart­ment, insti­tu­tion to insti­tu­tion, state by state and across the nation as a whole. Tenured pro­fes­sors enjoy the strongest speech pro­tec­tions in soci­ety. It’s time they started using them.”

  • reformation-​​is-​​gonna-​​be-​​ouchy disintermediation-​​targets life-o’-the-mind cultural-​​assumptions edu­ca­tion graduate-​​school academia-doesn’t-guarantee-acuity academic-​​culture
  • Ninth Cir­cuit Court: Secret GPS Track­ing is Legal | Exec­u­tive Gov — ‘In the major­ity opin­ion, the Ninth Cir­cuit Court ruled that since Pineda-Moreno’s dri­ve­way wasn’t enclosed and was open to passersby like deliv­ery men and neigh­bor­hood chil­dren, it didn’t pass the Dunn test for cur­tilage.  Never mind that in the Dunn opin­ion, the major­ity writes “we do not sug­gest that com­bin­ing these fac­tors pro­duces a finely tuned for­mula that, when mechan­i­cally applied, yields a “cor­rect” answer to all extent-​​of-​​curtilage questions.”’

  • Bushism free­dom search-​​and-​​seizure Con­sti­tu­tion­al­ity feds lawyers
  • What Bureau­cracy Looks Like

  • pho­tog­ra­phy exhi­bi­tion bureau­cracy work­life soci­ol­ogy cultural-​​norms
  • Tak­ing the plunge | johnau​gust​.com — “You’ll be told it’s because it makes com­mu­ni­cat­ing your vision eas­ier, and that’s true.  But there are two more impor­tant rea­sons.  First, if you know how to be a sound man, you know how to make the sound man’s job eas­ier. This has the poten­tial to make you very pop­u­lar with sound men (or edi­tors, or cin­e­matog­ra­phers, etc), some­thing you’ll need when your only cur­rency is good will.  Sec­ond, when you begin pro­duc­ing your own work, this renais­sance approach to film­mak­ing will allow you to start before any­one else signs on.  Know­ing you can fin­ish in a pinch, if you have to, will lend you a con­fi­dent relent­less­ness that makes oth­ers want to get involved.”

  • gen­er­al­ism learning-​​by-​​doing advice
  • James on Habit — “…Keep the fac­ulty of effort alive in you by a lit­tle gra­tu­itous exer­cise every day. That is, be sys­tem­at­i­cally heroic in lit­tle unnec­es­sary points, do every day or two some­thing for no other rea­son than its dif­fi­culty, so that, when the hour of dire need draws nigh, it may find you not unnerved and untrained to stand the test.”

  • habit psy­chol­ogy soci­ol­ogy William-​​James advice learn­ing
  • Seth’s Blog: The future of the library — “The next library is a place, still. A place where peo­ple come together to do co-​​working and coor­di­nate and invent projects worth work­ing on together. Aided by a librar­ian who under­stands the Mesh, a librar­ian who can bring domain knowl­edge and peo­ple knowl­edge and access to infor­ma­tion to bear. The next library is a house for the librar­ian with the guts to invite kids in to teach them how to get bet­ter grades while doing less grunt work. And to teach them how to use a sol­der­ing iron or take apart some­thing with no user ser­vi­ca­ble parts inside. And even to chal­lenge them to teach classes on their pas­sions, merely because it’s fun. This librar­ian takes responsibility/​blame for any kid who man­ages to grad­u­ate from school with­out being a first-​​rate data shark. The next library is filled with so many web ter­mi­nals there’s always at least one empty. And the peo­ple who run this library don’t view the com­bi­na­tion of access to data and con­nec­tions to peers as a sidelight–it’s the entire point. Wouldn’t you want to live and work and pay taxes in a town that had a library like that? The vibe of the best Brook­lyn cof­fee shop com­bined with a pas­sion­ate racon­teur of infor­ma­tion? There are one thou­sands things that could be done in a place like this, all built around one mis­sion: take the world of data, com­bine it with the peo­ple in this com­mu­nity and cre­ate value.”

  • library2.0 seth-​​godin libraries communities-​​of-​​practice exper­tise librar­i­ans museums-​​too