计算机自适应测试中的人工智能

Dena F. Mujtaba, N. Mahapatra
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引用次数: 3

摘要

人工智能(AI)越来越多地用于为学生和工人提供定制和高效的电子学习、求职和职业发展援助。在整个职业生涯和求职过程中,学生和求职者都会多次遇到评估。组织现在采用计算机自适应测试(CAT),这是一种基于考生能力的计算机管理评估。CAT旨在为考生提供个性化的评估,以准确估计他们对一种无法直接观察到的潜在特征(如一般智力和人格特征)的熟练程度。在CAT中存在一些挑战,例如估计个体的潜在特征,生成问题和问题选择。此外,当被测量的潜在特质维度数量增加,或者如果项目反应是分类的而不是二元的(例如,使用1到5的量表与真或假),这些挑战变得更加复杂。传统的方法采用心理测量和统计模型来进行估计。然而,许多使用机器学习、深度学习和其他人工智能技术的方法已经出现,以提供更好的性能。在本文中,我们以技术为导向,回顾了人工智能在CAT中的应用,并强调了该问题领域的优势、局限性和未来的挑战。我们还协调了心理测量学和人工智能中使用的不同术语和符号,以协助未来的研究和发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence in Computerized Adaptive Testing
Artificial intelligence (AI) is increasingly used to provide customized and efficient e-learning, job search, and career development assistance to students and workers. Both students and jobseekers encounter assessments several times throughout their career and during job searches. Organizations now employ computerized adaptive testing (CAT), a computer-administered assessment that serves questions based upon the ability of a test taker. CAT aims to provide personalized assessments to test takers to accurately estimate their proficiency with respect to a latent trait (e.g., general intelligence and personality characteristic) that is not directly observable. There are several challenges in CAT, such as estimating the latent traits of an individual, generating questions, and question selection. Furthermore, these challenges become more complex as the number of latent trait dimensions being measured increases or if item responses are categorical rather than binary (e.g., using a 1 to 5 scale versus true or false). Traditional approaches employ psychometric and statistical models to make estimations. However, many approaches using machine learning, deep learning, and other AI techniques have emerged to provide better performance. In this paper, we provide a technique-oriented review of AI applications in CAT, and highlight the advantages, limitations, and future challenges in this problem area. We also reconcile different terms and notations used across psychometrics and AI to assist future research and development.
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