Knowledge Testing System Base on Machine Learning and Fuzzy Systems

R. Ponomarenko, Yana Bondarenko
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引用次数: 0

Abstract

The paper discusses a method for constructing systems for assessing the quality of knowledge, in particular testing systems, based on neural networks and fuzzy inference systems in order to improve the accuracy and objectivity of the assessment. A corresponding three-layer architecture of the estimation model has been developed. An evaluation system is proposed based on two-criteria evaluation of (correct and incorrect) answers with further processing of the obtained data by fuzzy inference methods to obtain the final result. A two-stage approach was developed to improve the quality of knowledge control, the use of a neural network allows you to find relationships between a set of answers and the found degrees of correct and incorrect answers. The system allows you to comprehensively consider the test, linking knowledge on the topics studied, thereby assessing the overall level of the student.
基于机器学习和模糊系统的知识测试系统
本文讨论了一种基于神经网络和模糊推理系统的知识质量评价系统,特别是测试系统的构建方法,以提高评价的准确性和客观性。开发了相应的三层估计模型体系结构。提出了一种基于两准则(正确和错误)评价的评价体系,并通过模糊推理方法对得到的数据进行进一步处理,从而得到最终结果。为了提高知识控制的质量,开发了一种两阶段的方法,使用神经网络可以找到一组答案之间的关系以及发现的正确和错误答案的程度。该系统允许您综合考虑考试,将所学主题的知识联系起来,从而评估学生的整体水平。
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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