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Recommender system by grasping individual preference and influence from other users

机译:通过掌握个人偏好和其他用户的影响来推荐系统

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We propose a recommendation method that considers the user's individual preference and influence from other users in social media. This method predicts the user's individual preference and influence from other users by applying the probability of divergence from random-selection based on a statistical hypothesis test as a form of modified content-based filtering. We evaluated the proposed method by focusing on the rate at which items that have recommended tags are contained among all items. The proposed method is shown to have higher accuracy than traditional content-based filtering. It is especially effective when some percentage of the items have recommendation tags.
机译:我们提出了一种建议方法,该方法考虑了用户的个人偏好以及社交媒体中其他用户的影响。此方法通过应用基于统计假设检验作为改进的基于内容的过滤形式的随机选择的发散概率,来预测用户的个人偏爱和其他用户的影响。我们通过关注所有项目中包含推荐标签的项目的比率来评估所提出的方法。与传统的基于内容的过滤相比,该方法具有更高的准确性。当一定比例的项目具有推荐标签时,此功能特别有效。

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