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Integrating Multiple Linear Regression and Multicriteria Collaborative Filtering for Better Recommendation

机译:集成多个线性回归和多准则协同过滤以更好地推荐

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Recommender systems are emergent to help overcome the information overload challenges by providing personalized suggestion based on usersȁ9; preference. To achieve this goal, most recommender systems utilize Collaborative Filtering (CF) technique. Multiple Criteria Decision Analysis (MCDA) is a discipline aimed at supporting decision makers to make an optimal selection in an environment of conflicting and competing criteria. In the paper, we propose a mechanism for integrating MCDA into the CF process for multiple criteria recommendations. The proposed system consists of two main parts. Firstly, the weight of each user toward each feature is computed by using multiple linear regression. The feature weight is then incorporated into the collaborative filtering process to provide recommendations. The experimental results showed that the proposed approach outperformed the single criterion CF method.
机译:推荐系统应运而生,它可以通过基于用户9的个性化建议来帮助克服信息过载的挑战;偏爱。为了实现此目标,大多数推荐系统都使用了协作过滤(CF)技术。多标准决策分析(MCDA)是一门旨在支持决策者在冲突和竞争标准的环境中进行最佳选择的学科。在本文中,我们提出了一种将MCDA集成到CF过程中的机制,以提出多个标准建议。拟议的系统包括两个主要部分。首先,通过使用多元线性回归来计算每个用户对每个特征的权重。然后将特征权重合并到协作过滤过程中以提供建议。实验结果表明,该方法优于单准则CF方法。

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