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Social web artifacts for boosting recommenders: theory and implementation

Recommender systems, software programs that learn from human behavior and make predictions of what products we are expected to appreciate and purchase, have become an integral part of our everyday life. They proliferate across electronic commerce around the globe and exist for virtually all sorts of...

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Detalles Bibliográficos
Autor principal: Ziegler, Cai-Nicolas
Lenguaje:eng
Publicado: Springer 2013
Materias:
Acceso en línea:https://dx.doi.org/10.1007/978-3-319-00527-0
http://cds.cern.ch/record/1552007
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author Ziegler, Cai-Nicolas
author_facet Ziegler, Cai-Nicolas
author_sort Ziegler, Cai-Nicolas
collection CERN
description Recommender systems, software programs that learn from human behavior and make predictions of what products we are expected to appreciate and purchase, have become an integral part of our everyday life. They proliferate across electronic commerce around the globe and exist for virtually all sorts of consumable goods, such as books, movies, music, or clothes. At the same time, a new evolution on the Web has started to take shape, commonly known as the “Web 2.0” or the “Social Web”: Consumer-generated media has become rife, social networks have emerged and are pulling significant shares of Web traffic. In line with these developments, novel information and knowledge artifacts have become readily available on the Web, created by the collective effort of millions of people. This textbook presents approaches to exploit the new Social Web fountain of knowledge, zeroing in first and foremost on two of those information artifacts, namely classification taxonomies and trust networks. These two are used to improve the performance of product-focused recommender systems: While classification taxonomies are appropriate means to fight the sparsity problem prevalent in many productive recommender systems, interpersonal trust ties – when used as proxies for interest similarity – are able to mitigate the recommenders' scalability problem.
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spelling cern-15520072021-04-21T22:40:09Zdoi:10.1007/978-3-319-00527-0http://cds.cern.ch/record/1552007engZiegler, Cai-NicolasSocial web artifacts for boosting recommenders: theory and implementationEngineeringRecommender systems, software programs that learn from human behavior and make predictions of what products we are expected to appreciate and purchase, have become an integral part of our everyday life. They proliferate across electronic commerce around the globe and exist for virtually all sorts of consumable goods, such as books, movies, music, or clothes. At the same time, a new evolution on the Web has started to take shape, commonly known as the “Web 2.0” or the “Social Web”: Consumer-generated media has become rife, social networks have emerged and are pulling significant shares of Web traffic. In line with these developments, novel information and knowledge artifacts have become readily available on the Web, created by the collective effort of millions of people. This textbook presents approaches to exploit the new Social Web fountain of knowledge, zeroing in first and foremost on two of those information artifacts, namely classification taxonomies and trust networks. These two are used to improve the performance of product-focused recommender systems: While classification taxonomies are appropriate means to fight the sparsity problem prevalent in many productive recommender systems, interpersonal trust ties – when used as proxies for interest similarity – are able to mitigate the recommenders' scalability problem.Springeroai:cds.cern.ch:15520072013
spellingShingle Engineering
Ziegler, Cai-Nicolas
Social web artifacts for boosting recommenders: theory and implementation
title Social web artifacts for boosting recommenders: theory and implementation
title_full Social web artifacts for boosting recommenders: theory and implementation
title_fullStr Social web artifacts for boosting recommenders: theory and implementation
title_full_unstemmed Social web artifacts for boosting recommenders: theory and implementation
title_short Social web artifacts for boosting recommenders: theory and implementation
title_sort social web artifacts for boosting recommenders: theory and implementation
topic Engineering
url https://dx.doi.org/10.1007/978-3-319-00527-0
http://cds.cern.ch/record/1552007
work_keys_str_mv AT zieglercainicolas socialwebartifactsforboostingrecommenderstheoryandimplementation