Measuring Computational Psychometrics Analysis Motivational Level in Learner’s using Different Parameters through Deep Learning Algorithm

A. B. Bhatia, Kavita Mittal
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Abstract

Learning is an ongoing process irrespective of age, gender and geographical location of acquiring new understanding, knowledge, behaviours, skills, values, attitudes, and preferences. Formative assessment methods have emerged and evolved to integrate learning, evaluation and education models. Not only is it critical to understand a learner's skills and how to improve and enhance them, but we also need to consider what the learner is doing; we need to consider navigational patterns. The extended learning and assessment system, a paradigm for doing research, captures this entire view of learning and evaluation systems. The function of computational psychometrics is to facilitating the translation from raw data to meaningful concepts. In this research study, several factors are considered for psychometric analysis of different kinds of learners, and based on a motivational level, many interesting conclusions have been drawn and presented in the result section at the end of the paper. Deep learning model Ludwig Classifier used to calculate, motivational Level is obtained for 100 number of epochs and it is found that the loss is decreasing and in other words, the accuracy of the machine goes on increasing. Each of the categories discussed here has new capabilities, or at the very least expansions of current ones.
利用深度学习算法测量不同参数下学习者的计算心理测量分析动机水平
学习是一个持续的过程,无论年龄、性别和地理位置如何,都可以获得新的理解、知识、行为、技能、价值观、态度和偏好。形成性评估方法已经出现并发展为整合学习、评估和教育模式。了解学习者的技能以及如何改进和提高这些技能不仅至关重要,而且我们还需要考虑学习者在做什么;我们需要考虑导航模式。扩展学习和评估系统是研究的一个范例,它涵盖了学习和评估系统的整个观点。计算心理测量的功能是促进从原始数据到有意义的概念的转换。在本研究中,考虑了几个因素对不同类型学习者进行心理测量分析,并基于动机层面,得出了许多有趣的结论,并在论文最后的结果部分提出。使用深度学习模型Ludwig Classifier进行计算,得到了100个epoch的motivation Level,发现loss在减小,也就是说机器的准确率在不断提高。这里讨论的每个类别都有新的功能,或者至少是对当前功能的扩展。
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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