具有外部产品信息的电子商务平台的评审响应生成

Lujun Zhao, Kaisong Song, Changlong Sun, Qi Zhang, Xuanjing Huang, Xiaozhong Liu
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引用次数: 16

摘要

“用户评论”正在成为电子商务的一个重要组成部分。当买家写下负面或怀疑的评论时,理想情况下,卖家需要迅速做出回应,以尽量减少潜在的影响。当评论数量以惊人的速度增长时,迫切需要为客户服务提供商建立一个回复写作助手。为了生成高质量的响应,算法需要消费和理解来自原始评论和目标产品的信息。传统的序列对序列(Seq2Seq)方法很难满足这一要求。本文提出了一种新的基于Seq2Seq框架的深度神经网络模型,该模型通过门控多源注意机制和复制机制将产品信息整合到电子商务平台的评论响应生成任务中。此外,我们采用强化学习技术来减少暴露偏差问题。为了评估所提出的模型,我们从一个流行的电子商务网站构建了一个包含产品信息的大规模数据集。对自动评价指标和人工注释的实证研究表明,该模型可以生成信息丰富且多样化的响应,显著优于目前最先进的文本生成模型。
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Review Response Generation in E-Commerce Platforms with External Product Information
''User reviews” are becoming an essential component of e-commerce. When buyers write a negative or doubting review, ideally, the sellers need to quickly give a response to minimize the potential impact. When the number of reviews is growing at a frightening speed, there is an urgent need to build a response writing assistant for customer service providers. In order to generate high-quality responses, the algorithm needs to consume and understand the information from both the original review and the target product. The classical sequence-to-sequence (Seq2Seq) methods can hardly satisfy this requirement. In this study, we propose a novel deep neural network model based on the Seq2Seq framework for the review response generation task in e-commerce platforms, which can incorporate product information by a gated multi-source attention mechanism and a copy mechanism. Moreover, we employ a reinforcement learning technique to reduce the exposure bias problem. To evaluate the proposed model, we constructed a large-scale dataset from a popular e-commerce website, which contains product information. Empirical studies on both automatic evaluation metrics and human annotations show that the proposed model can generate informative and diverse responses, significantly outperforming state-of-the-art text generation models.
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