多域门控CNN评论帮助预测

Cen Chen, Minghui Qiu, Yinfei Yang, Jun Zhou, Jun Huang, Xiaolong Li, F. S. Bao
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引用次数: 32

摘要

今天的消费者在网上购物时要面对太多的评论。提供最有帮助的评论,而不是所有的评论,将大大简化他们的购买决策。现有的复习帮助预测研究大多集中在标签丰富的领域,不适合标签不足的领域。为此,我们探索了一种学习领域关系的多领域方法,通过将知识从数据丰富的领域转移到数据缺乏的领域来帮助完成任务。为了更好地建模领域差异,我们的方法在基于神经网络(NN)的迁移学习框架中引入了多粒度嵌入,以反映单词在领域变化中的重要性。大量的实验经验表明,我们的模型在没有门控的情况下优于最先进的基线和基于神经网络的方法。我们的方法促进了更有效的领域之间的知识转移,特别是当目标领域数据集很小的时候。同时,领域关系和特定于领域的嵌入门控具有深刻的洞察力和可解释性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Domain Gated CNN for Review Helpfulness Prediction
Consumers today face too many reviews to read when shopping online. Presenting the most helpful reviews, instead of all, to them will greatly ease purchase decision making. Most of the existing studies on review helpfulness prediction focused on domains with rich labels, not suitable for domains with insufficient labels. In response, we explore a multi-domain approach that learns domain relationships to help the task by transferring knowledge from data-rich domains to data-deficient domains. To better model domain differences, our approach gates multi-granularity embeddings in a Neural Network (NN) based transfer learning framework to reflect the domain-variant importance of words. Extensive experiments empirically demonstrate that our model outperforms the state-of-the-art baselines and NN-based methods without gating on this task. Our approach facilitates more effective knowledge transfer between domains, especially when the target domain dataset is small. Meanwhile, the domain relationship and domain-specific embedding gating are insightful and interpretable.
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