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Iterative Use of Weighted Voronoi Diagrams to Improve Scalability in Recommender Systems

机译:迭代使用加权Voronoi图提高推荐系统的可伸缩性

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Collaborative Filtering (CF) technique is used by most of the Recommender Systems (RS) for formulating suggestions of item relevant to users' interest. It typically associates a user with a community of like minded users, and then recommend items to the user liked by others in the community. However, with the rapid growth of the Web in terms of users and items, majority of the RS using CF technique suffers from the scalability problem. In order to address this scalability issue, we propose a decomposition based Recommendation Algorithm using Multi-plicatively Weighted Voronoi Diagrams. We divide the entire users' space into smaller regions based on the location, and then apply the Recommendation Algorithm separately to these regions. This helps us to avoid computations over the entire data. We measure Spatial Autocorrelation indices in the regions or cells formed by the Voronoi decomposition. One of the main objectives of our work is to reduce the running time without compromising the recommendation quality much. This ensures scalability, allowing us to tackle bigger datasets using the same resources. We have tested our algorithms on the MovieLens and Book-Crossing datasets. Our proposed decomposition scheme is oblivious of the underlying recommendation algorithm.
机译:大多数推荐系统(RS)使用协作过滤(CF)技术来制定与用户兴趣相关的项目建议。它通常将用户与志趣相投的用户社区相关联,然后向社区中其他人喜欢的用户推荐商品。但是,随着Web在用户和项目方面的快速增长,大多数使用CF技术的RS都遭受了可伸缩性问题的困扰。为了解决此可伸缩性问题,我们提出了一种使用乘法加权Voronoi图的基于分解的推荐算法。我们根据位置将整个用户空间划分为较小的区域,然后将推荐算法分别应用于这些区域。这有助于我们避免对整个数据进行计算。我们测量由Voronoi分解形成的区域或单元中的空间自相关指数。我们工作的主要目标之一是减少运行时间,而又不会大幅降低推荐质量。这确保了可伸缩性,使我们能够使用相同的资源处理更大的数据集。我们已经在MovieLens和Book-Crossing数据集上测试了我们的算法。我们提出的分解方案没有考虑底层的推荐算法。

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