为与新冠病毒相关的查询生成上下文和同理心的响应

Sowmya Rasipuram, Anutosh Maitra, Bishal Shaw, S. Saha
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引用次数: 0

摘要

这项工作满足了在大流行期间向人们提供相关、正确和基本信息的迫切需要。利用先进的自然语言处理和机器学习机制,通过上下文对话生成对用户查询的响应。为了帮助人们识别他们接收到的信息,提出了一个会话系统来识别查询的正确意图,并使用基于强化学习的生成模型来进行会话。我们提出了一种端到端实时文本生成模型,可以响应用户对covid - 19的查询。我们创建了一个新的数据集,其中包含来自各种来源的1200多个与covid相关的问题,并对其进行预处理,以获得简短而直接的答案。数据集也被人工观察,以识别令人沮丧的问题,并将回答转换为更具同理心。该数据集已用于微调DailoGPT,这是一种基于gpt2的变压器模型,以生成与COVID相关的响应。与covid相关的查询被分为15类,以确定人们的确切意图。我们的模型产生了语境和同理心反应,并在语境相关性方面获得了3.48分(5分)和2.12分(3分)的人类评价分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Generating Contextual and Empathetic Response for Covid-related Queries
This work addresses the vital need of keeping people informed with relevant, correct and essential information during the pandemic. Advanced NLP and machine learning mechanisms have been leveraged to generate responses to user queries through contextual conversation. In order to help people be discerning about what information they receive, a conversational system is proposed that identifies the correct intent of the query and a reinforcement Learning based generation model is used to proceed with conversation. We propose an end-to-end real-time text generation model that can respond to users queries on covid19. We created a new dataset with 1200+ covid-related questions from various sources and pre-processed them for a brief and direct answer. The dataset has also been manually observed to identify depressed questions and the responses are converted to be more empathetic. The dataset has been used to fine-tune DailoGPT, a GPT2-based transformer model to generate the responses related to COVID. COVID-related queries are bucketed into 15 categories to identify the exact intent of people. Our model generated both contextual and empathetic responses and achieved a human evaluation score of 3.48 (on a scale of 5) in terms of contextual relevance and a score of 2.12 (on a scale of 3).
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