Data, knowledge, and common sense reasoning

<p class="p1">We explore the use of pari-mutuel markets in a peer-to-peer setting to generate a wide diversity of content offerings while responding adaptively to customer demand. Files are served and paid for through a parimutuel market similar to that used for betting in horse race...

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Main Authors: Ali Ghodsi, Bernardo Huberman, Fang Wu
Format: Article
Language:Spanish
Published: Universidad Abierta Interamericana 2018-09-01
Series:Revista Abierta de Informática Aplicada
Online Access:http://portalreviscien.uai.edu.ar/ojs/index.php/RAIA/article/view/160
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spelling doaj-a723e9f8722941af9bca0c3709c70b852020-11-25T00:16:20ZspaUniversidad Abierta InteramericanaRevista Abierta de Informática Aplicada2591-53202018-09-01212332147Data, knowledge, and common sense reasoningAli GhodsiBernardo HubermanFang Wu<p class="p1">We explore the use of pari-mutuel markets in a peer-to-peer setting to generate a wide diversity of content offerings while responding adaptively to customer demand. Files are served and paid for through a parimutuel market similar to that used for betting in horse races and in lotteries. Our simulations are based on rational agents, which all act according to a set of simple rules. The results show that a favorite-longshot bias occurs, where agents tend to bet on longshots rather than favorites when following simple expected utility maximization. Furthermore, we have confirmed that the long-tail does sustain even when the agents only have a limited view of all files to pick from. If the limited view consists of random subsets of all files, the long tail is enhanced. If the limited view consists of the top most popular items, the long tail slightly decreases. We have also explored the effect of bounded rationality. Our results show that the system is robust in presence of a large fraction of providers that have bounded rationality. If the providers with bounded rationality pick random items, the long tail is enhanced. Conversely, if the providers with bounded rationality only pick their favorite, the long tail slightly decreases.<span class="Apple-converted-space"> </span></p>http://portalreviscien.uai.edu.ar/ojs/index.php/RAIA/article/view/160
collection DOAJ
language Spanish
format Article
sources DOAJ
author Ali Ghodsi
Bernardo Huberman
Fang Wu
spellingShingle Ali Ghodsi
Bernardo Huberman
Fang Wu
Data, knowledge, and common sense reasoning
Revista Abierta de Informática Aplicada
author_facet Ali Ghodsi
Bernardo Huberman
Fang Wu
author_sort Ali Ghodsi
title Data, knowledge, and common sense reasoning
title_short Data, knowledge, and common sense reasoning
title_full Data, knowledge, and common sense reasoning
title_fullStr Data, knowledge, and common sense reasoning
title_full_unstemmed Data, knowledge, and common sense reasoning
title_sort data, knowledge, and common sense reasoning
publisher Universidad Abierta Interamericana
series Revista Abierta de Informática Aplicada
issn 2591-5320
publishDate 2018-09-01
description <p class="p1">We explore the use of pari-mutuel markets in a peer-to-peer setting to generate a wide diversity of content offerings while responding adaptively to customer demand. Files are served and paid for through a parimutuel market similar to that used for betting in horse races and in lotteries. Our simulations are based on rational agents, which all act according to a set of simple rules. The results show that a favorite-longshot bias occurs, where agents tend to bet on longshots rather than favorites when following simple expected utility maximization. Furthermore, we have confirmed that the long-tail does sustain even when the agents only have a limited view of all files to pick from. If the limited view consists of random subsets of all files, the long tail is enhanced. If the limited view consists of the top most popular items, the long tail slightly decreases. We have also explored the effect of bounded rationality. Our results show that the system is robust in presence of a large fraction of providers that have bounded rationality. If the providers with bounded rationality pick random items, the long tail is enhanced. Conversely, if the providers with bounded rationality only pick their favorite, the long tail slightly decreases.<span class="Apple-converted-space"> </span></p>
url http://portalreviscien.uai.edu.ar/ojs/index.php/RAIA/article/view/160
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AT bernardohuberman dataknowledgeandcommonsensereasoning
AT fangwu dataknowledgeandcommonsensereasoning
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