Parameters and Structure of Neural Network Databases for Assessment of Learning Outcomes

E. Smirnov, S. Dvoryatkina, S. Shcherbatykh
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引用次数: 3

Abstract

The purpose of this study is to determine the methodology, develop a theory of construction, put into practice algorithmization and implement the functionality of a hybrid intelligent system for assessment of educational outcomes of trainees on the basis of the identified keyword parameters and structure of the artificial neural network using expert systems and fuzzy simulation; to develop a methodology for the construction of structural-logic, hierarchical, functional and fractal schemes for structuring databases of the didactic field of learning elements; to determine the content, structure of parameters and database components, selection criteria and the content of complexes of educational standards. The methodology of introducing intelligent systems into mathematical education is on the basis of the Hegelian triad: thesis (implementation of the coherence principle) – antithesis (implementation of principles of the fractality and historiogenesis) – synthesis (implementation of the principles of self-organization and reflection of the complex system inversion integrity). Requirements for the organization and construction of the artificial neural network for assessment of personal achievements on the basis of fuzzy simulation have been developed. In the direction of using elements of fractal geometry, the technological structures of clusters that constitute the basis of generalized structures have been developed. In particular, it is revealed that the didactic field of learning elements is equipped with a system of multi-level hierarchical databases of exercises, motivational-applied, research, practice-oriented tasks using expert systems and integration of mathematical, information, natural-science and humanities knowledge and procedures.
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学习成果评估的神经网络数据库参数与结构
本研究的目的是在确定关键字参数和人工神经网络结构的基础上,利用专家系统和模糊仿真技术,确定方法、构建理论、实施算法并实现学员教育成果评估混合智能系统的功能;为构建学习要素教学领域数据库的结构-逻辑、层次、功能和分形方案开发一种方法;确定教育标准的内容、参数和数据库组成的结构、选择标准和复合体的内容。将智能系统引入数学教育的方法论是基于黑格尔的三位一体:正题(实施连贯原则)-反题(实施分形和历史发生原则)-综合(实施自组织原则和反映复杂系统的反转完整性)。提出了基于模糊仿真的个人成就评价人工神经网络的组织和构建要求。在利用分形几何元素的方向上,发展了构成广义结构基础的团簇技术结构。特别是,它揭示了学习要素的教学领域配备了一个多层次的分层数据库系统,该系统使用专家系统和数学,信息,自然科学和人文科学知识和程序的集成,包括练习,动机应用,研究,面向实践的任务。
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来源期刊
International Journal of Criminology and Sociology
International Journal of Criminology and Sociology Social Sciences-Cultural Studies
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发文量
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