基于BERT模型的问答系统创造力指数计算

Abhinav Nandgaonkar, S. Mane, V. Khatavkar
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引用次数: 0

摘要

该系统提出了一个问答模型来分析用户对开放式问题的回答。对于这个系统,我们使用小队数据集。小队数据集对开放式问题很有帮助。该模型使用NLP和BERT问答模型来处理答案。问题解决指的是对问题的分析,并以一种创造性的、可行的、有效的方式回答问题。解决问题的方法给出了问题解决者的思维方式。计算方法和自然语言处理正在被开发来计算这些指数。在NLP中的问答系统的帮助下,对用户的回答进行分析和测量,正在尝试进行这种分析,但问题的答案因人而异,这使得答案分析具有挑战性。用户给出的答案和小组数据集中存在的问题的答案通过使用余弦相似度来计算创造力指数进行比较。创造力指数是流畅性、灵活性、独特性和精细化指数的线性组合;通过比较给定的答案和存储的答案来计算每个给定的答案。该系统经过训练和测试,以解决球队数据集中出现的一般问题。该系统有利于预测和衡量用户的创造性思维、解决问题的能力和思维能力。它有助于在机构、社区和工作场所建立工作文化、社会文化和个人行为。CI对于企业、办公室员工和学生来说是一个非常有用的工具。思考和解决问题的能力是用这种方法计算出来的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Creativity index calculation with question answering system using BERT model
This system proposes a question-answer model to analyze answers given by the users to the open-ended question. For this system, we use a squad dataset. The squad dataset is helpful for open-ended questions. The model uses NLP and the BERT question-answer model for handling the answers. Problem-solving deals with the analysis of questions and answering them in a creative, feasible, and efficient way. The problem-solving the approach gives the way of thinking of the problem solver. Computational methods along with NLP are being developed to calculate these indices. With the help of question-answer systems in NLP, the users’ answers are analyzed and measured are being attempts to perform such analysis but the answers to the questions are varied from person to person which makes answer analysis challenging. Answers given by users and answer for the question present in the squad dataset is compared by using cosine similarity to calculate the creativity index. The creativity index is a linear combination of fluency, flexibility, uniqueness, and elaboration indices; calculated for every given answer by comparing given answers and the stored answers. The system is trained and tested for the general questions present in the squad dataset. This system is beneficial to predict and measure the creative thinking, problem-solving ability, and thinking ability of the user. It helps to build the work culture, societal culture, and behavior of individuals in the institution, community, and workplace. The CI is a tremendously useful tool for businesses, office employees, and students. Thinking and problem-solving skills are calculated using this technique.
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