Analysis of Data Mining Mode of Art History Course Based onFNN

Iialin Li
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Abstract

With the continuous development of information technology, the teaching of art history courses is also changing quietly. In recent years, the museum field teaching method that emphasizes “original works” in the teaching of art history courses has great room for improvement. This paper firstly analyzes the teaching design, teaching content and other issues by sorting out the development background of the art history MOOC course, and puts forward some research and educational view-points on the MOOC course. Teaching workers should focus on the reform of information application teaching in art history teaching, and advocate making full use of modern information technology to establish an art history teaching environment that is convenient for teachers and students to to communicate and interact. Finally, based on the fuzzy neural network technology, the data mining of the art history course is carried out, and it is concluded that FNN, as a nonlinear adaptive dynamic system, has the advantage of extracting the internal characteristics of information through self-learning, and can approximate any real situation on any closed subset with arbitrary precision. Continuous function. Through the learning of the neural network system, the knowledge contained in a large amount of data is compressed into the weights between nodes. On the basis of theoretical and image research, teachers and students should contact a large number of original works, conduct field inspections, and deeply understand the essence of Western art. and the cultural drivers behind it.
基于fnn的艺术史课程数据挖掘模式分析
随着信息技术的不断发展,艺术史课程的教学也在悄然发生着变化。近年来,在艺术史课程教学中强调“原创作品”的博物馆现场教学方法有很大的改进空间。本文首先通过梳理艺术史MOOC课程的发展背景,对其教学设计、教学内容等问题进行了分析,并提出了对艺术史MOOC课程的一些研究和教育观点。教学工作者应注重改革艺术史教学中的信息应用教学,倡导充分利用现代信息技术,建立便于师生交流互动的艺术史教学环境。最后,基于模糊神经网络技术对艺术史课程进行了数据挖掘,结果表明,FNN作为一种非线性自适应动态系统,具有通过自学习提取信息内部特征的优点,可以在任意封闭子集上以任意精度逼近任意真实情况。连续函数。通过神经网络系统的学习,将大量数据中包含的知识压缩成节点间的权值。在理论研究和形象研究的基础上,师生要接触大量的原创作品,进行实地考察,深入了解西方艺术的精髓。以及背后的文化驱动因素。
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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