推荐系统的一种新方法

Show-Jane Yen, Yue-Shi Lee, Li-Tien Wang, Yeuan-Kuen Lee
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引用次数: 0

摘要

在当今的电子商务环境中,协同过滤(CF)是一种广泛应用于推荐系统的算法,它是识别与目标用户有相似偏好的用户,并根据相似用户的偏好评分来预测目标用户的偏好。但是,如果目标用户的偏好评分很少或没有,则无法有效识别与目标用户具有相似偏好的用户。为了解决协同过滤问题,本研究采用隐式评分方法,利用用户的交易数据自动计算用户对商品的偏好,并进一步构建商品对商品、用户对用户、用户对商品的关系,用于计算目标用户的偏好评分,并向目标用户推荐产品。实验结果还表明,该算法的推荐准确率平均高于其他算法。
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A New Approach for Recommender System
In today's e-commerce environment, Collaborative Filtering (CF) is a widely used algorithm for recommender system, which is to identify the users who have similar preferences to the target user, and to predict the preference of the target user according to the preference ratings of the similar users. However, if the preference ratings of the target user are rare or none, then it cannot effectively identify the users with the similar preferences to the target user. In order to solve the problem of collaborative filtering, this study uses the implicit rating method to automatically calculate the user preference for the items by using the transaction data of the users, and further constructs an item-to-item, user-to-user, and user-to-item relationships, which can be used to calculate the preference rating for the target user, and recommend the products to the target user. The experimental results also show that the recommendation accuracy of our algorithm is higher than the other algorithms on average.
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