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Alleviating data sparsity and cold start in recommender systems using social behaviour

机译:使用社交行为缓解推荐系统中的数据稀疏和冷启动

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Recommender systems are used to find preferences of people or to predict the ratings with the help of information available from other users. The most widely used collaborative filtering recommender system by the e-commerce sites suffers from both the sparsity and cold-start problem due to insufficient data. Most of the existing systems consider only the ratings of the similar users and they do not give any preferences to the social behavior of users which shall aid the recommendations made to the user to a great extent. In this paper, instead of finding similarity from rating information, we propose a new approach which predicts the ratings of items by considering directed and transitive trust with timestamps and profile similarity from the social network along with the user-rated information. In cases where the trust and the rating details of users from the system is absent, we still make use of the social data of the users like the products liked by the user, user's social profile-education status, location etc. to make recommendation. Experimental analysis proves that our approach can improve the user recommendations at the extreme levels of sparsity in user-rating data. We also show that our approach works considerably well for cold-start users under the circumstances where collaborative filtering approach fails.
机译:推荐系统用于找到人们的偏好或在其他用户提供的信息的帮助下预测评级。电子商务站点使用最广泛使用的协作过滤推荐系统由于数据不足而遭受稀疏性和冷启动问题。大多数现有系统仅考虑类似用户的评级,并且他们不会向用户的社会行为提供任何偏好,这将帮助在很大程度上提出给用户的建议。在本文中,代替从评级信息找到相似性,我们提出了一种新方法,该方法通过考虑与来自社交网络的时间戳和简档相似度以及用户额定信息来预测项目的额定值。在信任和来自系统用户的评分细节的情况下,我们仍然利用用户喜欢的产品,用户的社交资料 - 教育状态,位置等来利用用户的社交数据。实验分析证明,我们的方法可以在用户评级数据中的极端稀疏性提高用户建议。我们还表明,在协作过滤方法失败的情况下,我们的方法在冷启动用户方面适用于冷启动用户。

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