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User preferences prediction approach based on embedded deep summaries

机译:基于嵌入式深厚摘要的用户偏好预测方法

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摘要

Some existing preference prediction methods have utilized users' review texts to learn additional knowledge to support the prediction task. Such methods determine and represent users' preference knowledge by conducting user sentiment, aspect sentiment and topic analysis as recognized in the review texts. However, the discovered item topics from topic-based methods may not fit the preferences of most users while the discovered users' opinions and aspects' sentiments from sentiment based methods may not reflect each user's opinion. This paper proposes a hybrid approach to learn and represent users' preference knowledge from review texts and utilize the acquired representation to support rating prediction. Our approach assumes that user preferences are affected by relevant item aspects and majority preference which can be captured through proper summarization and representation of users' review texts. Thus, two deep learning practices are established: the recurrent neural network- Long Short-Term Memory (RNN-LSTM) architecture to learn users' preference knowledge along with item aspects which influence preferences and the Doc2Vec algorithm to convert the acquired knowledge to a suitable representation. The approach extends probabilistic matrix factorization (PMF) model by strengthening its latent factors predictions with the acquired preference knowledge which is used to regulate the predictions. Our experiments on the Amazon products dataset have revealed the capability of learning a suitable representation for users' preference knowledge and its impact on rating prediction as our proposed approach beats alternative methods. (C) 2019 Elsevier Ltd. All rights reserved.
机译:一些现有的偏好预测方法利用用户的审查文本来学习额外的知识来支持预测任务。通过在审查文本中识别的用户情绪,方面情绪和主题分析,可以确定和代表用户的偏好知识。然而,来自主题的方法的发现项目主题可能不适合大多数用户的偏好,而发现的用户的意见和方面的情绪是基于情绪的方法可能不会反映每个用户的意见。本文提出了一种混合方法来学习和代表来自审查文本的偏好知识,并利用所获得的表示来支持评级预测。我们的方法假设用户偏好受相关项目方面的影响,并且可以通过适当的摘要和表示用户审查文本来捕获的大多数偏好。因此,建立了两个深度学习实践:经常性的神经网络长期内存(RNN-LSTM)架构,用于学习用户的偏好知识以及影响偏好和DOC2VEC算法将所获取的知识转换为合适的项目方面表示。该方法通过加强其潜在的偏好知识来扩展概率矩阵分解(PMF)模型,其使用所获得的偏好知识来调节预测。我们在亚马逊产品数据集上的实验揭示了学习适合用户偏好知识的合适代表性的能力,并且由于我们提出的方法击败了替代方法,因此对评级预测的影响。 (c)2019 Elsevier Ltd.保留所有权利。

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