A New Contextual Influencer User Measure to Improve the Accuracy of Recommender System

Maryam Jallouli, Sonia Lajmi, Ikram Amous
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引用次数: 2

Abstract

In the last decade, social-based recommender systems have become the best way to resolve a user's cold start problem. In fact, it enriches the user's model by adding additional information provided from his social network. Most of those approaches are based on a collaborative filtering and compute similarities between the users. The authors' preliminary objective in this work is to propose an innovative context aware metric between users (called contextual influencer user). These new similarities are called C-COS, C-PCC and C-MSD, where C refers to the category. The contextual influencer user model is integrated into a social based recommendation system. The category of the items is considered as the most pertinent context element. The authors' proposal is implemented and tested within the food dataset. The experimentation proved that the contextual influencer user measure achieves 0.873, 0.874, and 0.882 in terms of Mean Absolute Error (MAE) corresponding to C-cos, C-pcc and C-msd, respectively. The experimental results showed that their model outperforms several existing methods.
一种新的上下文影响者用户度量以提高推荐系统的准确性
在过去的十年里,基于社交的推荐系统已经成为解决用户冷启动问题的最佳方式。事实上,它通过添加来自社交网络的额外信息,丰富了用户的模型。这些方法大多是基于协同过滤和计算用户之间的相似度。作者在这项工作中的初步目标是在用户之间提出一种创新的上下文感知度量(称为上下文影响者用户)。这些新的相似性被称为C- cos, C- pcc和C- msd,其中C指的是类别。将情境影响者用户模型集成到基于社交的推荐系统中。项目的类别被认为是最相关的上下文元素。作者的建议在食品数据集中实现和测试。实验证明,上下文影响者用户度量对应C-cos、C-pcc和C-msd的平均绝对误差(MAE)分别达到0.873、0.874和0.882。实验结果表明,该模型优于现有的几种方法。
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