TPR: Text-aware Preference Ranking for recommender systems

Textual data is common and informative auxiliary information for recommender systems. Most prior art utilizes text for rating prediction, but rare work connects it to top-N recommendation. Moreover, although advanced recommendation models capable of incorporating auxiliary information have been deve...

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Main Authors: CHUANG, Yu-Neng, CHEN, Chih-Ming, WANG, Chuan-Ju, TSAI, Ming-Feng, FANG, Yuan, LIM, Ee-peng
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Language:English
Published: Institutional Knowledge at Singapore Management University 2020
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Online Access:https://ink.library.smu.edu.sg/sis_research/5295
https://ink.library.smu.edu.sg/context/sis_research/article/6298/viewcontent/CIKM20_TPR.pdf
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spelling sg-smu-ink.sis_research-62982020-09-24T04:18:53Z TPR: Text-aware Preference Ranking for recommender systems CHUANG, Yu-Neng CHEN, Chih-Ming WANG, Chuan-Ju TSAI, Ming-Feng FANG, Yuan LIM, Ee-peng Textual data is common and informative auxiliary information for recommender systems. Most prior art utilizes text for rating prediction, but rare work connects it to top-N recommendation. Moreover, although advanced recommendation models capable of incorporating auxiliary information have been developed, none of these are specifically designed to model textual information, yielding a limited usage scenario for typical user-to-item recommendation. In this work, we present a framework of text-aware preference ranking (TPR) for top-N recommendation, in which we comprehensively model the joint association of user-item interaction and relations between items and associated text. Using the TPR framework, we construct a joint likelihood function that explicitly describes two ranking structures: 1) item preference ranking (IPR) and 2) word relatedness ranking (WRR), where the former captures the item preference of each user and the latter captures the word relatedness of each item. As these two explicit structures are by nature mutually dependent, we propose TPR-OPT, a simple yet effective learning criterion that additionally includes implicit structures, such as relatedness between items and relatedness between words for each user for model optimization. Such a design not only successfully describes the joint association among users, words, and text comprehensively but also naturally yields powerful representations that are suitable for a range of recommendation tasks, including user-toitem, item-to-item, and user-to-word recommendation, as well as item-to-word reconstruction. In this paper, extensive experiments have been conducted on eight recommendation datasets, the results of which demonstrate that by including textual information from item descriptions, the proposed TPR model consistently outperforms state-of-the-art baselines on various recommendation tasks. 2020-10-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/5295 info:doi/10.1145/3340531.3411969 https://ink.library.smu.edu.sg/context/sis_research/article/6298/viewcontent/CIKM20_TPR.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University recommender systems textual information preference ranking Databases and Information Systems Systems Architecture
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic recommender systems
textual information
preference ranking
Databases and Information Systems
Systems Architecture
spellingShingle recommender systems
textual information
preference ranking
Databases and Information Systems
Systems Architecture
CHUANG, Yu-Neng
CHEN, Chih-Ming
WANG, Chuan-Ju
TSAI, Ming-Feng
FANG, Yuan
LIM, Ee-peng
TPR: Text-aware Preference Ranking for recommender systems
description Textual data is common and informative auxiliary information for recommender systems. Most prior art utilizes text for rating prediction, but rare work connects it to top-N recommendation. Moreover, although advanced recommendation models capable of incorporating auxiliary information have been developed, none of these are specifically designed to model textual information, yielding a limited usage scenario for typical user-to-item recommendation. In this work, we present a framework of text-aware preference ranking (TPR) for top-N recommendation, in which we comprehensively model the joint association of user-item interaction and relations between items and associated text. Using the TPR framework, we construct a joint likelihood function that explicitly describes two ranking structures: 1) item preference ranking (IPR) and 2) word relatedness ranking (WRR), where the former captures the item preference of each user and the latter captures the word relatedness of each item. As these two explicit structures are by nature mutually dependent, we propose TPR-OPT, a simple yet effective learning criterion that additionally includes implicit structures, such as relatedness between items and relatedness between words for each user for model optimization. Such a design not only successfully describes the joint association among users, words, and text comprehensively but also naturally yields powerful representations that are suitable for a range of recommendation tasks, including user-toitem, item-to-item, and user-to-word recommendation, as well as item-to-word reconstruction. In this paper, extensive experiments have been conducted on eight recommendation datasets, the results of which demonstrate that by including textual information from item descriptions, the proposed TPR model consistently outperforms state-of-the-art baselines on various recommendation tasks.
format text
author CHUANG, Yu-Neng
CHEN, Chih-Ming
WANG, Chuan-Ju
TSAI, Ming-Feng
FANG, Yuan
LIM, Ee-peng
author_facet CHUANG, Yu-Neng
CHEN, Chih-Ming
WANG, Chuan-Ju
TSAI, Ming-Feng
FANG, Yuan
LIM, Ee-peng
author_sort CHUANG, Yu-Neng
title TPR: Text-aware Preference Ranking for recommender systems
title_short TPR: Text-aware Preference Ranking for recommender systems
title_full TPR: Text-aware Preference Ranking for recommender systems
title_fullStr TPR: Text-aware Preference Ranking for recommender systems
title_full_unstemmed TPR: Text-aware Preference Ranking for recommender systems
title_sort tpr: text-aware preference ranking for recommender systems
publisher Institutional Knowledge at Singapore Management University
publishDate 2020
url https://ink.library.smu.edu.sg/sis_research/5295
https://ink.library.smu.edu.sg/context/sis_research/article/6298/viewcontent/CIKM20_TPR.pdf
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