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ACNN-FM: A novel recommender with attention-based convolutional neural network and factorization machines

机译:ACNN-FM:带有基于注意力的卷积神经网络和分解机的新型推荐器

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摘要

With the rapid development of the Internet, the data generated from application platforms such as online shopping, e-education, and digital entertainment has exhibited dramatical growth, which has caused serious information overload to Internet users. The traditional recommendation approaches are crucial for Internet users to extract valuable information from various information. However, there exist some problems such as sparse data, cold start, and over-reliance on manual extracted feature and so on. To address the above problems, this paper proposes a novel recommender with Attentionbased Convolutional Neural Network and Factorization Machines (ACNN-FM), which achieves the recommendation with comments. Firstly, from the perspective of local to overall, this paper proposes a word-level attention mechanism and a phrase-level attention mechanism to increase the ability to remember the importance and the order of historical vocabulary (phrase) in the process of text processing of convolutional neural networks. Secondly, it constructs a model to automatically extract hidden features of users and items from comments in the form of natural language. Finally, we utilize factorization machines to analyze the association between the hidden features of users and items, and implement the recommendation based on the association. Extensive experiments are conducted for demonstrating that ACNN-FM method outperforms state-of-the-art NARR method, and ACNN-FM has the highest data utilization among NARR, DeepCoNN, BCF and NMF methods, thus the recommendation performance is significantly improved in large-scale data environment. (C) 2019 Elsevier B.V. All rights reserved.
机译:随着Internet的快速发展,在线购物,电子教学,数字娱乐等应用平台生成的数据呈现出惊人的增长,给Internet用户带来了严重的信息过载。传统的推荐方法对于Internet用户从各种信息中提取有价值的信息至关重要。但是,仍然存在诸如数据稀疏,冷启动以及过度依赖手动提取功能等问题。为了解决上述问题,本文提出了一种基于注意力的卷积神经网络和因子分解机(ACNN-FM)的新型推荐器,并通过注释实现了推荐。首先,从局部到整体的角度,提出了单词级注意机制和短语级注意机制,以提高记忆历史词汇(短语)的重要性和顺序的能力。卷积神经网络。其次,构建一个模型,以自然语言的形式自动从注释中提取用户和项目的隐藏特征。最后,我们利用分解机分析用户和项目的隐藏特征之间的关联,并基于该关联实施推荐。进行了广泛的实验,证明ACNN-FM方法优于最新的NARR方法,并且ACNN-FM在NARR,DeepCoNN,BCF和NMF方法中具有最高的数据利用率,因此,推荐性能在很大程度上得到了改善。规模的数据环境。 (C)2019 Elsevier B.V.保留所有权利。

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