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Supervised Transfer Learning for Product Information Question Answering

机译:产品信息问答的监督转移学习

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Popular e-commerce websites such as Amazon offer community question answering systems for users to pose product-related questions and experienced customers may provide answers voluntarily. In this paper, we show that the large volume of existing community question answering data can be beneficial when building a system for answering questions related to product facts and specifications. Our experimental results demonstrate that the performance of a model for answering questions related to products listed in the Home Depot website can be improved by a large margin via a simple transfer learning technique from an existing large-scale Amazon community question answering dataset. Transfer learning can result in an increase of about 10% in accuracy in the experimental setting where we restrict the size of the data of the target task used for training. As an application of this work, we integrate the best performing model trained in this work into a mobile-based shopping assistant and show its usefulness.
机译:诸如Amazon之类的流行电子商务网站为用户提供社区问题解答系统,以提出与产品相关的问题,而经验丰富的客户可以自愿提供答案。在本文中,我们表明,在构建用于回答与产品事实和规格相关的问题的系统时,大量现有的社区问题回答数据可能是有益的。我们的实验结果表明,通过从现有的大规模亚马逊社区问答数据集中使用简单的转移学习技术,可以大大提高Home Depot网站上列出的与产品相关的问题的回答模型的性能。在我们限制用于训练的目标任务的数据大小的实验环境中,转移学习可以使准确性提高大约10%。作为这项工作的应用程序,我们将在这项工作中训练得最好的模型集成到基于移动设备的购物助手中,并显示其有用性。

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