Automatic Question Generation system

P. Pabitha, M. Mohana, S. Suganthi, B. Sivanandhini
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引用次数: 21

Abstract

The process of automating the question generation consists of many tasks. Selecting the target content (what to ask), question type (who, why, how) and actual question generation are the major issue of Automatic Question Generation. Certain definitions retrieved is available in Wikipedia either directly or is the outcome of executing set of sub queries for each key phrase categories The problem in the existing system is that some of the definition sentences which are taken out from Wikipedia were implicit. The proposed system overcomes the problems by using Supervised Learning Approach, Naïve Bayes method. It also extends its work to use Summarization, Noun Filtering and Question Generation in the aim of generating semantically correct questions.
自动问题生成系统
自动生成问题的过程包含许多任务。选择目标内容(问什么)、问题类型(谁、为什么、如何)和实际问题生成是自动问题生成的主要问题。检索到的某些定义可以直接在维基百科中获得,或者是对每个关键短语类别执行一组子查询的结果。现有系统的问题是,从维基百科中取出的一些定义句是隐含的。该系统通过使用监督学习方法Naïve贝叶斯方法克服了这些问题。它还扩展了它的工作,使用摘要、名词过滤和问题生成,目的是生成语义正确的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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