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A Content-Based Deep Hybrid Approach with Segmented Max-Pooling

机译:分段最大池的基于内容的深度混合方法

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Convolutional matrix factorization (ConvMF), which integrates convolutional neural network (CNN) into probabilistic matrix factorization (PMF), has been recently proposed to utilize the contextual information and achieve higher rating prediction accuracy of model-based collaborative filtering (CF) recommender systems. While ConvMF uses max-pooling, which may lose the feature's location and frequency information. In order to solve this problem, a novel approach with segmented max-pooling (ConvMF-S) has been proposed in this paper. ConvMF-S can extract multiple features and keep their location and frequency information. Experiments show that the rating prediction accuracy has been improved.
机译:最近提出了将卷积神经网络(CNN)集成到概率矩阵分解(PMF)中的卷积矩阵分解(ConvMF),以利用上下文信息并实现基于模型的协同过滤(CF)推荐系统的更高等级的预测精度。虽然ConvMF使用最大池化,但这可能会丢失功能的位置和频率信息。为了解决这个问题,本文提出了一种新的分段最大池化方法(ConvMF-S)。 ConvMF-S可以提取多个特征并保留其位置和频率信息。实验表明,收视率预测精度得到了提高。

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