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Enhanced New User Recommendations based on Quantitative Association Rule Mining

机译:基于定量关联规则挖掘的增强型新用户推荐

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In the era of information explosion, how to provide tailored suggestions to a new user is a major concern for collaborative filtering (CF) based recommender systems. The CF recommender system performs very poorly for a new user with very poor profile information. Therefore, we investigate the use of quantitative association rules (QARs) for making recommendations to a new user by exploiting the cold user data which is readily available such as age, gender, occupation, etc. and ratings of items available in the historical data set. The proposed recommendation method, called QARF (QAR based filtering scheme), extracts relationships between readily available information of users and items, and the rating values. Additionally, QARs are extracted during offline processing which optimizes the online computation cost. The discovered rules are then employed during online processing in order to generate recommendations for a new user. Moreover, the QARF recommendation scheme is combined with CF, namely QARF/CF, to further improve recommendation accuracy. Proposed approaches QARF and QARF/CF are evaluated on the platform of MovieLens dataset. Experimental results demonstrate that the proposed schemes enhance new user recommendations and outperform other state of the art CF schemes.
机译:在信息爆炸的时代,如何为新用户提供量身定制的建议是基于协作过滤(CF)的推荐系统的主要问题。 CF推荐器系统对于配置文件信息非常差的新用户的性能非常差。因此,我们研究利用定量关联规则(QAR)通过利用容易获得的冷用户数据(例如年龄,性别,职业等)和历史数据集中可用项目的等级来向新用户提出建议。所提出的推荐方法称为QARF(基于QAR的过滤方案),它提取用户和项目的随时可用信息与评级值之间的关系。此外,在离线处理期间提取QAR,从而优化了在线计算成本。然后在在线处理期间采用发现的规则,以便为新用户生成推荐。此外,将QARF推荐方案与CF相结合,即QARF / CF,以进一步提高推荐准确性。在MovieLens数据集的平台上评估了建议的方法QARF和QARF / CF。实验结果表明,所提出的方案可增强新用户的推荐,并优于其他最新的CF方案。

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