基于日常生活开放域的问答系统问题的主观预测

Wenzhe Wang, Yong Yue, Xiaohui Zhu
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引用次数: 0

摘要

人和计算机对问题有不同的理解,人们对答案也有不同的需求。对于一些问题,人们可能不需要客观的答案,而是需要发展性的意见。本文对开放域问答系统中的长、难问题进行分析,并通过主观预测为系统提供有效信息。它使用伪标签技术和混合多个预训练的语言模型来提高对长而难的文本问题句的理解。此外,通过设计各种主观标签,模型对问题主观性和客观性的预测可以为问答系统提供有效的信息。由于主观标签和文本长难问题句目前没有标准的定义和标准,我们基于30个问句主观标签和长度大于512个字符的文本长问题对文本长问题进行了主观分析,并使用Spearman’s relative coefficient作为模型预测的评价标准。本工作首次通过设计30个主观标签,实现了对开放域长难文本的主观预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Subjective Prediction of Questions in Q & A System based on the Open Domain of Daily Life
People and computers have different understandings of questions, and people have different needs for answers. For some questions, people may not need objective answers, but developmental opinions. This paper analyzes long and difficult questions in an open domain question answering system and provides effective information to the system with subjective predictions. It uses pseudo-label technology and the blending of multiple pre-trained language models to improve the understanding of long and difficult text question sentences. In addition, by designing a variety of subjective labels, the model's prediction of the subjectivity and objectivity of questions can provide effective information for the question-and-answer system. Since there are currently no standard definitions or standards for subjective labels and long and difficult text question sentences, we have conducted a subjective analysis of long text questions based on 30 question sentence subjective labels and long text question longer than 512 characters, using Spearman's relative coefficient as the evaluation standard for model prediction. This work is the first to implement subjective prediction of long and difficult text in the open domain area by designing 30 subjective labels.
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