@techreport{97cbe5441a264ca59c66a1ebdd917155,
title = "CHESTNUT: Improve serendipity in movie recommendation by an Information Theory-based collaborative filtering approach",
abstract = "The term serendipity has been understood narrowly in the Recommender System. Applying a user-centered approach, user-friendly serendipitous recommender systems are expected to be developed based on a good understanding of serendipity. In this paper, we introduce CHESTNUT , a memory-based movie collaborative filtering system to improve serendipity performance. Relying on a proposed Information Theory-based algorithm and previous study, we demonstrate a method of successfully injecting insight, unexpectedness and usefulness, which are key metrics for a more comprehensive understanding of serendipity, into a practical serendipitous runtime system. With lightweight experiments, we have revealed a few runtime issues and further optimized the same. We have evaluated CHESTNUT in both practicability and effectiveness , and the results show that it is fast, scalable and improves serendip-ity performance significantly, compared with mainstream memory-based collaborative filtering. The source codes of CHESTNUT are online at https://github.com/unnc-idl-ucc/CHESTNUT/.",
keywords = "InformationTheory, RecommederSystems, Serendipity, InformationTheory, RecommederSystems, Serendipity",
author = "Xiangjun Peng and Hongzhi Zhang and Xiaosong Zhou and Shuolei Wang and Xu Sun and Qingfeng Wang",
year = "2019",
month = jan,
day = "1",
language = "English",
publisher = "Unpublished",
type = "WorkingPaper",
institution = "Unpublished",
}