An Unsupervised Aspect-Aware Recommendation Model with Explanation Text Generation

Peijie Sun, Le Wu, Kun Zhang, Yuxuan Su, Meng Wang
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引用次数: 7

Abstract

Review based recommendation utilizes both users’ rating records and the associated reviews for recommendation. Recently, with the rapid demand for explanations of recommendation results, reviews are used to train the encoder–decoder models for explanation text generation. As most of the reviews are general text without detailed evaluation, some researchers leveraged auxiliary information of users or items to enrich the generated explanation text. Nevertheless, the auxiliary data is not available in most scenarios and may suffer from data privacy problems. In this article, we argue that the reviews contain abundant semantic information to express the users’ feelings for various aspects of items, while these information are not fully explored in current explanation text generation task. To this end, we study how to generate more fine-grained explanation text in review based recommendation without any auxiliary data. Though the idea is simple, it is non-trivial since the aspect is hidden and unlabeled. Besides, it is also very challenging to inject aspect information for generating explanation text with noisy review input. To solve these challenges, we first leverage an advanced unsupervised neural aspect extraction model to learn the aspect-aware representation of each review sentence. Thus, users and items can be represented in the aspect space based on their historical associated reviews. After that, we detail how to better predict ratings and generate explanation text with the user and item representations in the aspect space. We further dynamically assign review sentences which contain larger proportion of aspect words with larger weights to control the text generation process, and jointly optimize rating prediction accuracy and explanation text generation quality with a multi-task learning framework. Finally, extensive experimental results on three real-world datasets demonstrate the superiority of our proposed model for both recommendation accuracy and explainability.
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具有解释文本生成的无监督方面感知推荐模型
基于评论的推荐利用用户的评级记录和相关评论进行推荐。近年来,随着对推荐结果解释的快速需求,评论被用于训练编码器-解码器模型来生成解释文本。由于大多数评论都是一般文本,没有详细的评价,一些研究者利用用户或物品的辅助信息来丰富生成的解释文本。然而,辅助数据在大多数情况下是不可用的,并且可能遭受数据隐私问题。在本文中,我们认为评论包含了丰富的语义信息来表达用户对项目的各个方面的感受,而这些信息在目前的解释性文本生成任务中并没有得到充分的挖掘。为此,我们研究如何在没有任何辅助数据的情况下,在基于评论的推荐中生成更细粒度的解释文本。虽然这个想法很简单,但它不是微不足道的,因为方面是隐藏的和未标记的。此外,注入方面信息来生成带有噪声评审输入的解释文本也是非常具有挑战性的。为了解决这些挑战,我们首先利用一种先进的无监督神经方面提取模型来学习每个复习句子的方面感知表示。因此,用户和项可以基于它们的历史关联评论在方面空间中表示。之后,我们详细介绍了如何更好地预测评分,并使用方面空间中的用户和项目表示生成解释文本。我们进一步动态分配包含更大权重的方面词比例的复习句来控制文本生成过程,并通过多任务学习框架共同优化评级预测精度和解释文本生成质量。最后,在三个真实数据集上的大量实验结果证明了我们提出的模型在推荐准确性和可解释性方面的优越性。
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