基于属性和个性的图书推荐混合系统

'Adli Ihsan Hariadi, Dade Nurjanah
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引用次数: 24

摘要

近年来,随着图书的迅速增加,寻找相关书籍已经成为一个问题。为此,人们可能需要同伴的意见来完成这项任务。问题是,只有当有其他用户或同行与他们有相同的兴趣时,才能获得相关的书籍。否则,他们将永远得不到相关的书籍。推荐系统可以解决这个问题。他们的工作是根据其他用户的经验找到相关的项目。尽管对推荐系统的研究越来越多,但考虑到推荐系统中用户个性的研究仍然不多,尽管个人偏好在当今确实很重要。本文讨论了基于属性和基于用户个性的图书推荐系统混合方法的研究。前面已经实现了基于属性的方法。在我们的研究中,我们实现了MSV-MSL(最相似访问材料到最相似学习者)方法,因为它是混合属性方法中最好的方法。在建立邻里关系时,使用个性因素来寻找用户之间的相似性。使用book -crossing和Amazon Review对图书类别数据集进行了测试。我们的实验表明,在Book-crossing数据集上,考虑用户个性的组合方法比不考虑用户个性的组合方法效果更好。相反,它导致亚马逊评论数据集的性能较低。可以得出,在特定的条件下,根据数据集本身和使用比例,考虑用户个性可以得到更好的结果。
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Hybrid attribute and personality based recommender system for book recommendation
In recent years, with the rapid increases of books, finding relevant books has been a problem. For that, people might need their peers' opinion to complete this task. The problem is that relevant books can be gained only if there are other users or peers have same interests with them. Otherwise, they will never get relevant books. Recommender systems can be a solution for that problem. They work on finding relevant items based on other users' experience. Although research on recommender system increases, there is still not much research that considers user personality in recommender systems, even though personal preferences are really important these days. This paper discusses our research on a hybrid-based method that combines attribute-based and user personality-based methods for book recommender system. The attribute-based method has been implemented previously. In our research, we have implemented the MSV-MSL (Most Similar Visited Material to the Most Similar Learner) method, since it is the best method among hybrid attribute-based methods. The personality factor is used to find the similarity between users when creating neighborhood relationships. The method is tested using Book-crossing and Amazon Review on book category datasets. Our experiment shows that the combined method that considers user personality gives a better result than those without user personality on Book-crossing dataset. In contrary, it resulted in a lower performance on Amazon Review dataset. It can be concluded that user personality consideration can give a better result in a certain condition depending on the dataset itself and the usage proportion.
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