Multi-Branch Convolutional Network for Context-Aware Recommendation

Wei Guo, Can Zhang, Huifeng Guo, Ruiming Tang, Xiuqiang He
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引用次数: 4

Abstract

Factorization Machine (FM)-based models can only reveal the relationship between a pair of features. With all feature embeddings fed to a MLP, DNN-based factorization models which combine FM with multi-layer perceptron (MLP) can only reveal the relationship among some features implicitly. Some other DNN-based methods apply CNN to generate feature interactions. However, (1) they model feature interactions at the bit-wise (where only part of an embedding is utilized to generate feature interactions), which can not express the semantics of features comprehensively, (2) they can only model the interactions among the neighboring features. To deal with aforementioned problems, this paper proposes a Multi-Branch Convolutional Network (MBCN) which includes three branches: the standard convolutional layer, the dilated convolutional layer and the bias layer. MBCN is able to explicitly model feature interactions with arbitrary orders at the vector-wise, which fully express context-aware feature semantics. Extensive experiments on three public benchmark datasets are conducted to demonstrate the superiority of MBCN, compared to the state-of-the-art baselines for context-aware top-k recommendation.
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上下文感知推荐的多分支卷积网络
基于因子分解机(FM)的模型只能揭示一对特征之间的关系。当所有的特征嵌入都被输入到多层感知器(MLP)中,基于深度神经网络的FM与多层感知器(MLP)相结合的分解模型只能隐式地揭示部分特征之间的关系。其他一些基于dnn的方法应用CNN来生成特征交互。然而,(1)它们以位为单位(仅利用嵌入的一部分来生成特征交互)对特征交互建模,不能全面表达特征的语义;(2)它们只能对相邻特征之间的交互建模。为了解决上述问题,本文提出了一种多分支卷积网络(MBCN),该网络包括三个分支:标准卷积层、扩展卷积层和偏置层。MBCN能够在矢量方向上显式地对任意顺序的特征交互进行建模,从而充分表达上下文感知的特征语义。在三个公共基准数据集上进行了广泛的实验,以证明MBCN与上下文感知的top-k推荐的最先进基线相比的优越性。
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