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Recommendations with Sparsity Based Weighted Context Framework

机译:基于稀疏性的加权上下文框架的建议

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Context-Aware Recommender Systems (CARS) is a sort of information filtering tool which has become crucial for services in this big era of data. Owing to its characteristic of including contextual information, it achieves better results in terms of prediction accuracy. The collaborative filtering has been proved as an efficient technique to recommend items among all existing techniques in this area. Moreover, incorporation of other evolutionary techniques in it for contextualization and to alleviate sparsity problem can give an additive advantage. In this paper, we propose to find the vector of weights using particle swarm optimization to control the contribution of each context feature. It is aimed to make a balance between data sparsity and maximization of contextual effects. Further, the weighting vector is used in different components of user and item neighborhood-based algorithms. Moreover, we present a novel method to find aggregated similarity from local and global similarity based on sparsity measure. Local similarity gives importance to co-rated items while global similarity utilizes all the ratings assigned by a pair of users. The proposed algorithms are evaluated for Individual and Group Recommendations. The experimental results on two contextually rich datasets prove that the proposed algorithms outperform the other techniques of this domain. The sparsity measure that is best suited to find aggregation is dataset dependent. Finally, the algorithms show their efficacy for Group Recommendations too.
机译:上下文感知推荐器系统(CARS)是一种信息过滤工具,对于当今大数据时代的服务而言,它已变得至关重要。由于其包括上下文信息的特性,因此在预测准确性方面可获得更好的结果。事实证明,协同过滤是在该领域所有现有技术中推荐项目的有效技术。此外,将其他进化技术并入其中以进行情境化和减轻稀疏性问题可以提供额外的优势。在本文中,我们建议使用粒子群优化来控制各个上下文特征的贡献来找到权重向量。目的是在数据稀疏性和上下文影响的最大化之间取得平衡。此外,加权矢量被用于基于用户和项目邻域的算法的不同组成部分。此外,我们提出了一种基于稀疏性度量从局部和全局相似性中找到聚合相似性的新方法。局部相似度对共同评估的项目很重要,而全局相似度则利用一对用户分配的所有评估。对提出的算法进行了个人和团体推荐评估。在两个上下文丰富的数据集上的实验结果证明,所提出的算法优于该领域的其他技术。最适合查找聚合的稀疏性度量取决于数据集。最后,这些算法也显示了其对“组推荐”的有效性。

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