Prediction of Question Tags Based on LDA and Deep Neural Network

A. Mathew
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Abstract

Students are being evaluated based on the examinations conducted by various institutions or organizations, which test the knowledge of that person. Exams like Computerized Adaptive Testing (CAT), offers a computer based test that adapts the examinee's ability level. Some of the CAT exams include tags which help students to understand the questions. Tags are metadata used to identify or describe an item. There are three types of tags: Manual Tagging, Semi-Automatic tagging and Fully Automatic tagging. Earlier manual tagging was used to construct question banks. However it is time consuming and leads to many other consistency issues. A Semi-Automatic tagging facilitates human intervention to increase the accuracy of tagging. Fully automatic tagging gives a more promising result as compared with manual and semi-automatic tagging. This paper proposes a fully automated tagging system which uses Deep Neural Network and Natural Language Processing to generate tags from the derived knowledge unit. This paper also discusses LDA (Latent Dirichlet Allocation) which gives the relevance of each tag.
基于LDA和深度神经网络的问题标签预测
学生是根据各种机构或组织进行的考试来评估的,这些考试是为了测试那个人的知识。计算机适应测试(CAT)等考试提供了一种基于计算机的测试,以适应考生的能力水平。一些CAT考试包括帮助学生理解问题的标签。标签是用来标识或描述一个项目的元数据。有三种类型的标签:手动标签,半自动标签和全自动标签。早期的人工标注用于构建题库。然而,它是耗时的,并导致许多其他一致性问题。半自动标注方便人工干预,提高标注的准确性。与人工和半自动标注相比,全自动标注的效果更好。本文提出了一种基于深度神经网络和自然语言处理的全自动化标注系统。本文还讨论了LDA (Latent Dirichlet Allocation),它给出了每个标签的相关性。
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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