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Building user Profiles Based on user Interests and Preferences for Recommender Systems

机译:根据用户的兴趣和偏好为推荐系统建立用户配置文件

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摘要

Nowadays, Web 2.0 allows users to express their opinions about items provided by various Internet services through reviews. These reviews towards particular items could contain a valuable information, such as the reasons why user like or dislike the item. This information can help more accurately describe a user for recommender system and, by that increase the accuracy of recommendations. Moreover, such reasons can reflect user preferences. However, extraction the user preferences from reviews is still a quite challenging task as reviews represented in the free text form. In this paper, a personalized recommendation approach based on user profiles of interests and preferences is proposed. In order to increase the accuracy of personal recommendations, user interests are obtained from item general description attributes such as item tags or categories, whereas user preferences are extracted from users' reviews. To evaluate proposed user profiles, we provided the top personalized recommendations for users. The experiments are conducted on a real-world dataset. We select candidates for recommendations based on user interests profile, and then, narrow and sort them by taking into account user preferences profile. We compare the results with several stateof-the-art recommendation algorithms using precision, recall and F1 metrics for evaluation. The results show the effectiveness and efficiency of our proposed approach in comparison with different recommendation algorithms.
机译:如今,Web 2.0允许用户通过评论表达对各种Internet服务提供的项目的意见。对特定项目的这些评论可能包含有价值的信息,例如用户喜欢或不喜欢该项目的原因。此信息可以帮助更准确地描述推荐系统的用户,从而提高推荐的准确性。而且,这样的原因可以反映用户的偏好。但是,从评论中提取用户首选项仍然是一项颇具挑战性的任务,因为评论以自由文本形式表示。本文提出了一种基于用户兴趣和偏好的个性化推荐方法。为了提高个人推荐的准确性,从项目的一般描述属性(例如项目标签或类别)获得用户兴趣,而从用户的评论中提取用户的偏好。为了评估建议的用户资料,我们为用户提供了最个性化的建议。实验是在真实世界的数据集上进行的。我们根据用户兴趣配置文件选择推荐的候选对象,然后通过考虑用户的偏好配置文件对它们进行缩小和排序。我们将结果与几种使用精度,召回率和F1指标进行评估的最新推荐算法进行比较。结果表明,与不同的推荐算法相比,该方法的有效性和有效性。

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