Collaborative Filtering Similarity Measures: Revisiting

This paper discussed the most commonly used similarity measures in Collaborative Filtering (CF) recommender system. In addition, the author introduced some recommendations related to CF system quality improvement which should be considered in the process of formulating similarity measure that may le...

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Main Authors: Al-Bashiri, Hael, Abdulgabber, Mansoor Abdullateef, Awanis, Romli, Hujainah, Fadhl
Format: Conference or Workshop Item
Language:English
English
Published: Association for Computing Machinery 2017
Subjects:
Online Access:http://umpir.ump.edu.my/id/eprint/18508/
http://umpir.ump.edu.my/id/eprint/18508/1/fskkp-2017-hael-Collaborative%20Filtering%20Similarity%20Measures%20Revisiting.pdf
http://umpir.ump.edu.my/id/eprint/18508/7/fskkp-2017-hael-Collaborative%20Filtering%20Similarity1.pdf
id ump-18508
recordtype eprints
spelling ump-185082019-10-18T02:32:56Z http://umpir.ump.edu.my/id/eprint/18508/ Collaborative Filtering Similarity Measures: Revisiting Al-Bashiri, Hael Abdulgabber, Mansoor Abdullateef Awanis, Romli Hujainah, Fadhl QA76 Computer software This paper discussed the most commonly used similarity measures in Collaborative Filtering (CF) recommender system. In addition, the author introduced some recommendations related to CF system quality improvement which should be considered in the process of formulating similarity measure that may lead to alleviating the issue of data sparsity and some existing measures shortcomings. Generally, CF approach is one of the most widely used and most successful methods for the recommendation system, such as e-commerce. CF system introduced items to the user based on his/her previous ratings and the ratings of his/her neighbors. Therefore, the most important stage in CF system is locating the successful neighbor. Nevertheless, the sparsity of data is the major issue faced by the memory-based CF. The reason behind this is that many of the users rated a few number of items from the huge number of available items. This has encouraged many researchers to provide solutions. One of these solutions was by proposing or updating similarities measures take in considerations the global information preference, all ratings provided by users, the size of common ratings, and so on. In this work, the researcher discussed these measures alongside with their limitations. In addition, the researcher also listed some advicesthat are important in the process of locating successful neighbors, which may help researchers to improve the quality of CF system. Association for Computing Machinery 2017 Conference or Workshop Item PeerReviewed application/pdf en http://umpir.ump.edu.my/id/eprint/18508/1/fskkp-2017-hael-Collaborative%20Filtering%20Similarity%20Measures%20Revisiting.pdf application/pdf en http://umpir.ump.edu.my/id/eprint/18508/7/fskkp-2017-hael-Collaborative%20Filtering%20Similarity1.pdf Al-Bashiri, Hael and Abdulgabber, Mansoor Abdullateef and Awanis, Romli and Hujainah, Fadhl (2017) Collaborative Filtering Similarity Measures: Revisiting. In: International Conference on Advances in Image Processing (ICAIP 2017), 25-27 August 2017 , Bangkok, Thailand. pp. 1-5.. ISBN 978-1-4503-5295-6
repository_type Digital Repository
institution_category Local University
institution Universiti Malaysia Pahang
building UMP Institutional Repository
collection Online Access
language English
English
topic QA76 Computer software
spellingShingle QA76 Computer software
Al-Bashiri, Hael
Abdulgabber, Mansoor Abdullateef
Awanis, Romli
Hujainah, Fadhl
Collaborative Filtering Similarity Measures: Revisiting
description This paper discussed the most commonly used similarity measures in Collaborative Filtering (CF) recommender system. In addition, the author introduced some recommendations related to CF system quality improvement which should be considered in the process of formulating similarity measure that may lead to alleviating the issue of data sparsity and some existing measures shortcomings. Generally, CF approach is one of the most widely used and most successful methods for the recommendation system, such as e-commerce. CF system introduced items to the user based on his/her previous ratings and the ratings of his/her neighbors. Therefore, the most important stage in CF system is locating the successful neighbor. Nevertheless, the sparsity of data is the major issue faced by the memory-based CF. The reason behind this is that many of the users rated a few number of items from the huge number of available items. This has encouraged many researchers to provide solutions. One of these solutions was by proposing or updating similarities measures take in considerations the global information preference, all ratings provided by users, the size of common ratings, and so on. In this work, the researcher discussed these measures alongside with their limitations. In addition, the researcher also listed some advicesthat are important in the process of locating successful neighbors, which may help researchers to improve the quality of CF system.
format Conference or Workshop Item
author Al-Bashiri, Hael
Abdulgabber, Mansoor Abdullateef
Awanis, Romli
Hujainah, Fadhl
author_facet Al-Bashiri, Hael
Abdulgabber, Mansoor Abdullateef
Awanis, Romli
Hujainah, Fadhl
author_sort Al-Bashiri, Hael
title Collaborative Filtering Similarity Measures: Revisiting
title_short Collaborative Filtering Similarity Measures: Revisiting
title_full Collaborative Filtering Similarity Measures: Revisiting
title_fullStr Collaborative Filtering Similarity Measures: Revisiting
title_full_unstemmed Collaborative Filtering Similarity Measures: Revisiting
title_sort collaborative filtering similarity measures: revisiting
publisher Association for Computing Machinery
publishDate 2017
url http://umpir.ump.edu.my/id/eprint/18508/
http://umpir.ump.edu.my/id/eprint/18508/1/fskkp-2017-hael-Collaborative%20Filtering%20Similarity%20Measures%20Revisiting.pdf
http://umpir.ump.edu.my/id/eprint/18508/7/fskkp-2017-hael-Collaborative%20Filtering%20Similarity1.pdf
first_indexed 2023-09-18T22:26:15Z
last_indexed 2023-09-18T22:26:15Z
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