用数据驱动的数据过滤提高评论反应生成的特异性

Tannon Kew, M. Volk
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引用次数: 0

摘要

在电子商务、酒店和旅游业中,响应在线客户评论已成为成功管理和发展业务的重要组成部分。最近,神经文本生成方法旨在帮助作者组成响应已被证明提供高度流畅和自然的文本。然而,他们也倾向于学习一种强烈的、不受欢迎的偏见,即对广泛的投入产生过于通用的、一刀切的产出。虽然这通常会导致“安全”的高概率反应,但在许多实际情况下,更大的特异性是可取的。在这项工作中,我们通过识别培训数据中的一般响应,过滤它们并微调生成模型,研究为酒店领域的在线评论生成更具体的响应的任务。我们对一系列数据驱动的过滤方法进行了实验,并通过自动和人工评估表明,尽管训练数据量减少了60%,但过滤有助于推导出能够生成更具体、更有用的响应的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Specificity in Review Response Generation with Data-Driven Data Filtering
Responding to online customer reviews has become an essential part of successfully managing and growing a business both in e-commerce and the hospitality and tourism sectors. Recently, neural text generation methods intended to assist authors in composing responses have been shown to deliver highly fluent and natural looking texts. However, they also tend to learn a strong, undesirable bias towards generating overly generic, one-size-fits-all outputs to a wide range of inputs. While this often results in ‘safe’, high-probability responses, there are many practical settings in which greater specificity is preferable. In this work we examine the task of generating more specific responses for online reviews in the hospitality domain by identifying generic responses in the training data, filtering them and fine-tuning the generation model. We experiment with a range of data-driven filtering methods and show through automatic and human evaluation that, despite a 60% reduction in the amount of training data, filtering helps to derive models that are capable of generating more specific, useful responses.
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