Research on Course Personalized Evaluation Model Based on Recurrent Neural Network Algorithm

Wu Jing
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Abstract

Recurrent Neural Network (RNN) is a kind of neural network with short-term memory ability. In the recurrent neural network, neurons can not only receive information from other neurons, but also receive information from themselves, forming a network structure with loops. This paper uses recurrent neural network to study the course personalized evaluation model based on intelligent optimization algorithm, and creates a set of effective evaluation modules in the course, which is conducive to the effective monitoring and quality management of the course, so as to improve the teaching quality. And it describes in detail the CNN (convolutional neural network) structure and (recurrent neural network) structure commonly used in current mainstream sentiment analysis algorithms. In the algorithm, the Bi-LSTM (long short-term memory network) structure is selected as the basic network. After innovation and improvement, it is tested for the specific data set in this paper. The construction of the Bi-LSTMA-CNNA algorithm model and the analysis of the course evaluation results provide a reference for subsequent related research.
基于递归神经网络算法的课程个性化评价模型研究
递归神经网络(RNN)是一种具有短时记忆能力的神经网络。在递归神经网络中,神经元不仅可以接收来自其他神经元的信息,还可以接收来自自身的信息,形成具有环路的网络结构。本文利用递归神经网络研究了基于智能优化算法的课程个性化评价模型,并在课程中创建了一套有效的评价模块,有利于对课程进行有效的监控和质量管理,从而提高教学质量。详细描述了当前主流情感分析算法中常用的CNN(卷积神经网络)结构和(递归神经网络)结构。在算法中,选择Bi-LSTM(长短期记忆网络)结构作为基本网络。经过创新和改进,本文针对具体的数据集进行了测试。Bi-LSTMA-CNNA算法模型的构建和课程评价结果的分析为后续的相关研究提供了参考。
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