Topic-Level Bayesian Surprise and Serendipity for Recommender Systems

被引:0
|
作者
Hasan, Tonmoy [1 ]
Bunescu, Razvan [1 ]
机构
[1] Univ North Carolina Charlotte, Charlotte, NC 28223 USA
关键词
surprise and serendipity; non-stationary time series; topic distributions;
D O I
10.1145/3604915.3608851
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
A recommender system that optimizes its recommendations solely to fit a user's history of ratings for consumed items can create a filter bubble, wherein the user does not get to experience items from novel, unseen categories. One approach to mitigate this undesired behavior is to recommend items with high potential for serendipity, namely surprising items that are likely to be highly rated. In this paper, we propose a content-based formulation of serendipity that is rooted in Bayesian surprise and use it to measure the serendipity of items after they are consumed and rated by the user. When coupled with a collaborative-filtering component that identifies similar users, this enables recommending items with high potential for serendipity. To facilitate the evaluation of topic-level models for surprise and serendipity, we introduce a dataset of book reading histories extracted from Goodreads, containing over 26 thousand users and close to 1.3 million books, where we manually annotate 449 books read by 4 users in terms of their time-dependent, topic-level surprise. Experimental evaluations show that models that use Bayesian surprise correlate much better with the manual annotations of topic-level surprise than distance-based heuristics, and also obtain better serendipitous item recommendation performance.
引用
收藏
页码:933 / 939
页数:7
相关论文
共 50 条
  • [41] Topic-level opinion influence model (TOIM): An investigation using tencent microblogging
    Li, Daifeng
    Tang, Jie
    Ding, Ying
    Shuai, Xin
    Chambers, Tamy
    Sun, Guozheng
    Luo, Zhipeng
    Zhang, Jingwei
    JOURNAL OF THE ASSOCIATION FOR INFORMATION SCIENCE AND TECHNOLOGY, 2015, 66 (12) : 2657 - 2673
  • [42] Bayesian nets for recommender systems
    Klopotek, MA
    Wierzchon, ST
    INTELLIGENT INFORMATION PROCESSING AND WEB MINING, 2003, : 87 - 96
  • [43] Topic-level sentiment analysis of social media data using deep learning
    Pathak, Ajeet Ram
    Pandey, Manjusha
    Rautaray, Siddharth
    APPLIED SOFT COMPUTING, 2021, 108
  • [44] Improving Serendipity and Accuracy in Cross-Domain Recommender Systems
    Kotkov, Denis
    Wang, Shuaiqiang
    Veijalainen, Jari
    WEB INFORMATION SYSTEMS AND TECHNOLOGIES (WEBIST 2016), 2017, 292 : 105 - 119
  • [45] How does serendipity affect diversity in recommender systems? A serendipity-oriented greedy algorithm
    Kotkov, Denis
    Veijalainen, Jari
    Wang, Shuaiqiang
    COMPUTING, 2020, 102 (02) : 393 - 411
  • [46] A Novel Topic-Level Random Walk Framework for Scene Image Co-segmentation
    Yuan, Zehuan
    Lu, Tong
    Shivakumara, Palaiahnakote
    COMPUTER VISION - ECCV 2014, PT I, 2014, 8689 : 695 - 709
  • [47] How does serendipity affect diversity in recommender systems? A serendipity-oriented greedy algorithm
    Denis Kotkov
    Jari Veijalainen
    Shuaiqiang Wang
    Computing, 2020, 102 : 393 - 411
  • [48] Can Large Language Models Assess Serendipity in Recommender Systems?
    Tokutake, Yu
    Okamoto, Kazushi
    JOURNAL OF ADVANCED COMPUTATIONAL INTELLIGENCE AND INTELLIGENT INFORMATICS, 2024, 28 (06) : 1263 - 1272
  • [49] Investigating Serendipity in Recommender Systems Based on Real User Feedback
    Kotkov, Denis
    Konstan, Joseph A.
    Zhao, Qian
    Veijalainen, Jari
    33RD ANNUAL ACM SYMPOSIUM ON APPLIED COMPUTING, 2018, : 1341 - 1350
  • [50] Relational Collaborative Topic Regression for Recommender Systems
    Wang, Hao
    Li, Wu-Jun
    IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2015, 27 (05) : 1343 - 1355