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Self-paced learning enhanced neural matrix factorization for noise-aware recommendation

机译:自花奏学习增强了噪声感知推荐的神经矩阵分解

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Matrix factorization-based collaborative filtering, learning user and item latent features, has been one of the powerful recommendation techniques. Due to its simply modeling of user-item interactions by inner product of two vectors as a linear model, its efficiency needs an improvement. Neural Network based matrix factorization has been proposed to deal with this issues. Usually, these methods are proposed on clean data, but in real applications, there are possibly unexpected noises and outliers, due to many subjective or objective reasons. The noisy instances would disturb the learning of normal instances and thus cause adverse affect as the model would also be easily over-fitted. Thus, we propose an enhanced neural matrix factorization model by introducing a self-paced learning (SPL) schema, which can automatically distinguish noisy instances and learn the model mostly based on clean instances. The main contribution of our model is that we design a bounded SPL learning schema with a parameter to control how many instances will be finally induced in the model learning. Thus, different from traditional SPL that gradually selects instances until all are selected, the bounded SPL mechanism tries to learn the model mainly on clean data and exclude noisy instances. The effectiveness of proposed method on collaborative filtering is demonstrated by extensive experiments on three widely used datasets. (C) 2020 Elsevier B.V. All rights reserved.
机译:基于矩阵分组的协作滤波,学习用户和项目潜在特征,是强大的推荐技术之一。由于其简单地建模了两个向量的内部产品作为线性模型的用户项目的相互作用,其效率需要改进。已经提出了基于神经网络的矩阵分解来处理此问题。通常,这些方法在清洁数据上提出,但在实际应用中,由于许多主观或客观的原因,可能存在意外的噪音和异常值。嘈杂的实例会扰乱正常情况的学习,因此导致由于模型也将容易地过度拟合的不利影响。因此,我们通过引入自定节平学习(SPL)模式来提出增强的神经矩阵分解模型,这可以自动区分噪声实例并基于清洁实例来学习模型。我们的模型的主要贡献是我们设计了一个有界的SPL学习模式,其中一个参数来控制模型学习中最终诱导的情况。因此,与传统的SPL不同,逐渐选择实例,直到所有选中都选择,所界限的SPL机制尝试主要在清洁数据上学习模型,并排除嘈杂的实例。通过在三个广泛使用的数据集上进行广泛的实验,证明了提出的协作滤波方法的有效性。 (c)2020 Elsevier B.v.保留所有权利。

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