Local Collaborative Filtering: A Collaborative Filtering Method that Utilizes Local Similarities among Users
By: Zhaoxin Shen, Dan Wu
Potential Business Impact:
Finds better game suggestions for you.
To leverage user behavior data from the Internet more effectively in recommender systems, this paper proposes a novel collaborative filtering (CF) method called Local Collaborative Filtering (LCF). LCF utilizes local similarities among users and integrates their data using the law of large numbers (LLN), thereby improving the utilization of user behavior data. Experiments are conducted on the Steam game dataset, and the results of LCF align with real-world needs.
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