基于机器学习的问卷设计框架

Saumya Singh, Shivani Chauhan, Er.Mahendra Kumar
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引用次数: 0

摘要

长期以来,人们一直在努力寻找一种从大型文本数据库中检索信息的方法。将数据转换成我们需要的信息。在当前的搜索引擎中,当我们搜索某件事而不是给出精确的答案时,它会从我们的搜索中取出关键字,并给出与这些词相关的文档或网页,但我们想要的是确切的答案,用户为什么要搜索它。也就是说,搜索引擎更多地处理整个文档检索。然而,用户通常希望得到问题的确切或特定的答案。例如,给定问题“今年的洒红节是什么时候?”,他想要的答案是“2022年3月9日”,而不是通过大量包含“洒红节”、“节日”、“年份”等字样的网页来查找节日的日期。也就是说,用户需要的是信息检索,而不是当前文档检索。我们处理回答问题的任务,其中的答案是在一个广泛的文本数据库中的文档。我们采用机器学习技术来回答问题。特别地,答案候选人由分类器培训人员使用一组问答对进行分类和排名。
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Framework for Designing Questionnaire Using Machine Learning
For a long time, people have been trying to find a way to retrieve information from a large text database. Convert data into information we need. In current search engines, when we search about something rather than giving the precise answer it takes out keywords from our search and gives us documents or web pages related to those words but what we want is the exact answer, why does the user have to search for it. That is, search engines deal more with whole document retrieval. However, a user often wants an exact or specific answer to the question. For instance, given the question "When is Holi festival this year?", what he wants is the answer "March 9, 2022", rather than to read through lots of web pages that contain the words "Holi", "festival", "year", etc. to find the date of the festival. That is, what a user needs is information retrieval, rather than current document retrieval. We handle the task of answering questions, where the answers are in documents in an extensive text database. We take on a machine learning technique to answer questions. In particular, answer candidates are classified and ranked by a classifier trainee donaset of question-answerpairs.
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