基于机器学习的推荐系统

Subhankar Ganguli, Sanjeev Thakur
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引用次数: 0

摘要

推荐系统通过询问人们对各种商品的偏好来帮助人们做出决定,并推荐其他尚未评级但与他们的口味相似的商品。传统的推荐系统旨在根据用户间的相似度生成一组满足目标用户的推荐。考虑用户的积极偏好和消极偏好,从而找到强相关的用户。使用加权熵作为相似性度量来确定相似口味的用户。要求目标用户填写评分,以便从知识库中识别出密切相关的用户,并相应地产生top N推荐。结果表明,在使用加权熵和相反偏好作为相似性度量后,准确度有相当大的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Based Recommendation System
Recommender system helps people in decision making by asking their preferences about various items and recommends other items that have not been rated yet and are similar to their taste. A traditional recommendation system aims at generating a set of recommendations based on inter-user similarity that will satisfy the target user. Positive preferences as well as negative preferences of the users are taken into account so as to find strongly related users. Weighted entropy is usedz as a similarity measure to determine the similar taste users. The target user is asked to fill in the ratings so as to identify the closely related users from the knowledge base and top N recommendations are produced accordingly. Results show a considerable amount of improvement in accuracy after using weighted entropy and opposite preferences as a similarity measure.
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