Combining collaborative and content-based filtering to recommend research papers

Detalhes bibliográficos
Autor(a) principal: Torres Júnior, Roberto Dias
Data de Publicação: 2004
Tipo de documento: Dissertação
Idioma: eng
Título da fonte: Biblioteca Digital de Teses e Dissertações da UFRGS
Texto Completo: http://hdl.handle.net/10183/5887
Resumo: The number of research papers available today is growing at a staggering rate, generating a huge amount of information that people cannot keep up with. According to a tendency indicated by the United States’ National Science Foundation, more than 10 million new papers will be published in the next 20 years. Because most of these papers will be available on the Web, this research focus on exploring issues on recommending research papers to users, in order to directly lead users to papers of their interest. Recommender systems are used to recommend items to users among a huge stream of available items, according to users’ interests. This research focuses on the two most prevalent techniques to date, namely Content-Based Filtering and Collaborative Filtering. The first explores the text of the paper itself, recommending items similar in content to the ones the user has rated in the past. The second explores the citation web existing among papers. As these two techniques have complementary advantages, we explored hybrid approaches to recommending research papers. We created standalone and hybrid versions of algorithms and evaluated them through both offline experiments on a database of 102,295 papers, and an online experiment with 110 users. Our results show that the two techniques can be successfully combined to recommend papers. The coverage is also increased at the level of 100% in the hybrid algorithms. In addition, we found that different algorithms are more suitable for recommending different kinds of papers. Finally, we verified that users’ research experience influences the way users perceive recommendations. In parallel, we found that there are no significant differences in recommending papers for users from different countries. However, our results showed that users’ interacting with a research paper Recommender Systems are much happier when the interface is presented in the user’s native language, regardless the language that the papers are written. Therefore, an interface should be tailored to the user’s mother language.
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spelling Torres Júnior, Roberto DiasAbel, MaraRiedl, John2007-06-06T18:50:49Z2004http://hdl.handle.net/10183/5887000432990The number of research papers available today is growing at a staggering rate, generating a huge amount of information that people cannot keep up with. According to a tendency indicated by the United States’ National Science Foundation, more than 10 million new papers will be published in the next 20 years. Because most of these papers will be available on the Web, this research focus on exploring issues on recommending research papers to users, in order to directly lead users to papers of their interest. Recommender systems are used to recommend items to users among a huge stream of available items, according to users’ interests. This research focuses on the two most prevalent techniques to date, namely Content-Based Filtering and Collaborative Filtering. The first explores the text of the paper itself, recommending items similar in content to the ones the user has rated in the past. The second explores the citation web existing among papers. As these two techniques have complementary advantages, we explored hybrid approaches to recommending research papers. We created standalone and hybrid versions of algorithms and evaluated them through both offline experiments on a database of 102,295 papers, and an online experiment with 110 users. Our results show that the two techniques can be successfully combined to recommend papers. The coverage is also increased at the level of 100% in the hybrid algorithms. In addition, we found that different algorithms are more suitable for recommending different kinds of papers. Finally, we verified that users’ research experience influences the way users perceive recommendations. In parallel, we found that there are no significant differences in recommending papers for users from different countries. However, our results showed that users’ interacting with a research paper Recommender Systems are much happier when the interface is presented in the user’s native language, regardless the language that the papers are written. Therefore, an interface should be tailored to the user’s mother language.application/pdfengArmazenamento : DadosRecuperacao : InformacaoCombining collaborative and content-based filtering to recommend research papersinfo:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/masterThesisUniversidade Federal do Rio Grande do SulInstituto de InformáticaPrograma de Pós-Graduação em ComputaçãoPorto Alegre, BR-RS2004mestradoinfo:eu-repo/semantics/openAccessreponame:Biblioteca Digital de Teses e Dissertações da UFRGSinstname:Universidade Federal do Rio Grande do Sul (UFRGS)instacron:UFRGSORIGINAL000432990.pdf000432990.pdfTexto completo (inglês)application/pdf1222467http://www.lume.ufrgs.br/bitstream/10183/5887/1/000432990.pdf914cb888895d4ef1c9ccbfc40bea3a6fMD51TEXT000432990.pdf.txt000432990.pdf.txtExtracted Texttext/plain137473http://www.lume.ufrgs.br/bitstream/10183/5887/2/000432990.pdf.txtd0ce82b6662f8870d131d0320155692dMD52THUMBNAIL000432990.pdf.jpg000432990.pdf.jpgGenerated Thumbnailimage/jpeg1259http://www.lume.ufrgs.br/bitstream/10183/5887/3/000432990.pdf.jpgd9951c8e0fb5647ee2cad1b0c71451cbMD5310183/58872021-05-26 04:27:26.248534oai:www.lume.ufrgs.br:10183/5887Biblioteca Digital de Teses e Dissertaçõeshttps://lume.ufrgs.br/handle/10183/2PUBhttps://lume.ufrgs.br/oai/requestlume@ufrgs.br||lume@ufrgs.bropendoar:18532021-05-26T07:27:26Biblioteca Digital de Teses e Dissertações da UFRGS - Universidade Federal do Rio Grande do Sul (UFRGS)false
dc.title.pt_BR.fl_str_mv Combining collaborative and content-based filtering to recommend research papers
title Combining collaborative and content-based filtering to recommend research papers
spellingShingle Combining collaborative and content-based filtering to recommend research papers
Torres Júnior, Roberto Dias
Armazenamento : Dados
Recuperacao : Informacao
title_short Combining collaborative and content-based filtering to recommend research papers
title_full Combining collaborative and content-based filtering to recommend research papers
title_fullStr Combining collaborative and content-based filtering to recommend research papers
title_full_unstemmed Combining collaborative and content-based filtering to recommend research papers
title_sort Combining collaborative and content-based filtering to recommend research papers
author Torres Júnior, Roberto Dias
author_facet Torres Júnior, Roberto Dias
author_role author
dc.contributor.author.fl_str_mv Torres Júnior, Roberto Dias
dc.contributor.advisor1.fl_str_mv Abel, Mara
dc.contributor.advisor-co1.fl_str_mv Riedl, John
contributor_str_mv Abel, Mara
Riedl, John
dc.subject.por.fl_str_mv Armazenamento : Dados
Recuperacao : Informacao
topic Armazenamento : Dados
Recuperacao : Informacao
description The number of research papers available today is growing at a staggering rate, generating a huge amount of information that people cannot keep up with. According to a tendency indicated by the United States’ National Science Foundation, more than 10 million new papers will be published in the next 20 years. Because most of these papers will be available on the Web, this research focus on exploring issues on recommending research papers to users, in order to directly lead users to papers of their interest. Recommender systems are used to recommend items to users among a huge stream of available items, according to users’ interests. This research focuses on the two most prevalent techniques to date, namely Content-Based Filtering and Collaborative Filtering. The first explores the text of the paper itself, recommending items similar in content to the ones the user has rated in the past. The second explores the citation web existing among papers. As these two techniques have complementary advantages, we explored hybrid approaches to recommending research papers. We created standalone and hybrid versions of algorithms and evaluated them through both offline experiments on a database of 102,295 papers, and an online experiment with 110 users. Our results show that the two techniques can be successfully combined to recommend papers. The coverage is also increased at the level of 100% in the hybrid algorithms. In addition, we found that different algorithms are more suitable for recommending different kinds of papers. Finally, we verified that users’ research experience influences the way users perceive recommendations. In parallel, we found that there are no significant differences in recommending papers for users from different countries. However, our results showed that users’ interacting with a research paper Recommender Systems are much happier when the interface is presented in the user’s native language, regardless the language that the papers are written. Therefore, an interface should be tailored to the user’s mother language.
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