A Tutorial on Evaluation Metrics used in Natural Language Generation

Mitesh M. Khapra, Ananya B. Sai
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引用次数: 4

Abstract

The advent of Deep Learning and the availability of large scale datasets has accelerated research on Natural Language Generation with a focus on newer tasks and better models. With such rapid progress, it is vital to assess the extent of scientific progress made and identify the areas/components that need improvement. To accomplish this in an automatic and reliable manner, the NLP community has actively pursued the development of automatic evaluation metrics. Especially in the last few years, there has been an increasing focus on evaluation metrics, with several criticisms of existing metrics and proposals for several new metrics. This tutorial presents the evolution of automatic evaluation metrics to their current state along with the emerging trends in this field by specifically addressing the following questions: (i) What makes NLG evaluation challenging? (ii) Why do we need automatic evaluation metrics? (iii) What are the existing automatic evaluation metrics and how can they be organised in a coherent taxonomy? (iv) What are the criticisms and shortcomings of existing metrics? (v) What are the possible future directions of research?
自然语言生成中使用的评价指标教程
深度学习的出现和大规模数据集的可用性加速了自然语言生成的研究,重点是更新的任务和更好的模型。随着如此迅速的进步,评估科学进步的程度和确定需要改进的领域/组成部分是至关重要的。为了以自动和可靠的方式实现这一目标,NLP社区积极地追求自动评估指标的发展。特别是在最近几年中,越来越多的人关注于评估度量标准,对现有度量标准提出了一些批评,并对几个新度量标准提出了一些建议。本教程通过具体解决以下问题,介绍了自动评估指标的发展到目前的状态以及该领域的新趋势:(i)是什么使NLG评估具有挑战性?(ii)为什么我们需要自动评估指标?(iii)现有的自动评估指标是什么?如何将它们组织成一个连贯的分类法?(iv)现有量度有何批评和不足?(v)未来可能的研究方向是什么?
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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