使用指示从句注意和对抗性学习的产品问题意图检测

Qian Yu, Wai Lam
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引用次数: 6

摘要

由于许多电子商务网站提供QA服务,对产品问题的理解变得非常重要。产品问题具有与传统问题不同的特点,因为它们冗长且与电子商务设置特有的不同意图相关联。我们对一些商业电子商务网站的不同产品类别的产品问题进行了彻底的调查。确定了一组适合电子商务设置的问题意图类。我们还研究了自动意图检测的挑战,并基于定制的深度神经模型开发了一个意图检测框架。我们的框架的第一个特点是,它能够通过识别指示从句来处理冗长的问题。第二个特点是设计了一种对抗学习算法,利用辅助分类器来避免具有问题意图检测质量的产品方面的干扰。大量的实验结果证明了该框架的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Product Question Intent Detection using Indicative Clause Attention and Adversarial Learning
Due to the provision of QA service in many E-commerce sites, product question understanding becomes important. Product questions have different characteristics from traditional questions in that they are long and verbose as well as associated with different intents unique for the E-commerce setting. We conduct a thorough investigation on product questions covering different product categories from some commercial E-commerce sites. A set of question intent classes suitable for the E-commerce setting are identified. We also investigate the challenges of automatic intent detection and develop an intent detection framework based on a tailor-made deep neural model. The first characteristic of our framework is that it is capable of coping with long and verbose questions via identifying the indicative clauses. The second characteristic is that an adversarial learning algorithm is designed making use of an auxiliary classifier for avoiding the interference of product aspects with question intent detection quality. Extensive experiment results demonstrate the effectiveness of the proposed framework.
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