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Hybrid Data Set Optimization in Recommender Systems Using Fuzzy T-Norms

机译:基于模糊T范数的推荐系统混合数据集优化

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摘要

A recommender system uses specific algorithms and techniques in order to suggest specific services, goods or other type of recommendations that users could be interested in. User's preferences or ratings are used as inputs and top-N recommendations are produced by the system. The evaluation of the recommendations is usually based on accuracy metrics such as the Mean Absolute Error (MAE) and the Root Mean Squared Error (RMSE), while on the other hand Precision and Recall is used to measure the quality of the top-N recommendations. Recommender systems development has been mainly focused in the development of new recommendation algorithms. However, one of the major problems in modern offline recommendation system is the sparsity of the datasets and the selection of the suitable users Y that could produce the best recommendations for users X. In this paper, we propose an algorithm that uses Fuzzy sets and Fuzzy norms in order to evaluate the correlation between users in the data set so the system can select and use only the most relevant users. At the same time, we are extending our previous work about Reproduction of experiments in recommender systems by developing new explanations and variables for the proposed new algorithm. Our proposed approach has been experimentally evaluated using a real dataset and the results show that it is really efficient and it can increase both accuracy and quality of recommendations.
机译:推荐器系统使用特定的算法和技术来建议用户可能感兴趣的特定服务,商品或其他类型的推荐。用户的偏好或等级用作输入,系统产生前N个推荐。建议的评估通常基于准确度指标,例如平均绝对误差(MAE)和均方根误差(RMSE),而“精确度和召回率”则用于衡量前N个建议的质量。推荐系统的开发主要集中在新推荐算法的开发上。但是,现代离线推荐系统中的主要问题之一是数据集的稀疏性以及对用户X可能产生最佳推荐的合适用户Y的选择。在本文中,我们提出了一种使用模糊集和模糊算法的算法。为了评估数据集中用户之间的相关性,系统可以选择和使用最相关的用户。同时,我们通过为提出的新算法开发新的解释和变量,扩展了我们先前在推荐系统中重现实验的工作。我们提出的方法已经使用真实数据集进行了实验评估,结果表明该方法确实有效,并且可以提高建议的准确性和质量。

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