Beyond accuracy, quality measures are gaining importance in modern recommender systems, with reliability being one of the most important indicators in the context of collaborative filtering. This paper proposes Bernoulli Matrix Factorization (BeMF), which is a matrix factorization model, to provide both prediction values and reliability values. BeMF is a very innovative approach from several perspectives: a) it acts on model-based collaborative filtering rather than on memory-based filtering, b) it does not use external methods or extended architectures, such as existing solutions, to provide reliability, c) it is based on a classification-based model instead of traditional regression-based models, and d) matrix factorization formalism is supported by the Bernoulli distribution to exploit the binary nature of the designed classification model. The experimental results show that the more reliable a prediction is, the less liable it is to be wrong: recommendation quality improves after the most reliable predictions are selected. State-of-the-art quality measures for reliability have been tested, which shows that BeMF outperforms previous baseline methods and models.
翻译:除准确性外,质量措施在现代建议系统中越来越重要,可靠性是合作过滤方面最重要的指标之一。本文件提议伯努利母体因子化(BEMF),这是一个矩阵因子化模型,既提供预测值,又提供可靠性值。BEMF从几个角度来说是一个非常创新的方法:a)它采用基于模型的合作过滤法,而不是基于记忆的过滤法;b)它不使用外部方法或扩大结构,如现有解决办法,以提供可靠性;c)它基于基于分类的模型,而不是传统的基于回归模型;d)矩阵因子化形式主义得到伯努利分配法的支持,以利用设计分类模型的二元性。实验结果显示,较可靠的预测是错的:在选择了最可靠的预测后,建议质量得到提高;对可靠方面的国家质量措施进行了测试,这表明BEMF比先前的基准方法和模型更符合标准。