使用 NLP 生成答案方法的综合调查

Prashant Upadhyay, Rishabh Agarwal, Sumeet Dhiman, Abhinav Sarkar, Saumya Chaturvedi
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引用次数: 0

摘要

问题解答系统的最新进展大大增强了计算机理解和响应自然语言查询的能力。本文全面回顾了问题解答系统的发展历程,重点介绍了过去几年的发展情况。我们研究了问题解答框架的基础方面,包括问题分析、答案提取和段落检索。此外,我们还深入研究了问题解答系统遇到的挑战,如问题处理的复杂性、上下文数据源的必要性以及实时问题解答的复杂性。我们的研究根据现有问题回答系统所处理问题的类型、所生成答案的性质以及生成这些答案所采用的各种方法对其进行了分类。我们还探讨了基于观点的答案生成、基于提取的答案生成、基于检索的答案生成和基于生成的答案生成之间的区别。通过分类,我们可以深入了解每种方法的优势和局限性,为该领域未来的创新铺平道路。本综述旨在提供对问题解答系统现状的清晰认识,并确定所需的扩展,以满足用户对连贯、准确的自然语言自动回复不断增长的期望和需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comprehensive survey on answer generation methods using NLP

Recent advancements in question-answering systems have significantly enhanced the capability of computers to understand and respond to queries in natural language. This paper presents a comprehensive review of the evolution of question answering systems, with a focus on the developments over the last few years. We examine the foundational aspects of a question answering framework, including question analysis, answer extraction, and passage retrieval. Additionally, we delve into the challenges that question answering systems encounter, such as the intricacies of question processing, the necessity of contextual data sources, and the complexities involved in real-time question answering. Our study categorizes existing question answering systems based on the types of questions they address, the nature of the answers they produce, and the various approaches employed to generate these answers. We also explore the distinctions between opinion-based, extraction-based, retrieval-based, and generative answer generation. The classification provides insight into the strengths and limitations of each method, paving the way for future innovations in the field. This review aims to offer a clear understanding of the current state of question answering systems and to identify the scaling needed to meet the rising expectations and demands of users for coherent and accurate automated responses in natural language.

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