Personalized Teaching Strategy of University Ideology Course Based on Lagrange Neural Network and Big Data Technology

Author:

Zuo Jiqian1,Zhou Fang2,Liang Yajuan1ORCID

Affiliation:

1. College of Humanities and Marxism, Hebei Oriental University, Langfang 065001, China

2. College of Artificial Intelligence, Hebei Oriental University, Langfang 065001, China

Abstract

Individualized instruction is a type of educational principle. On the one hand, it necessitates the creation of individualized teaching resources, courses, and methods. Students, on the other hand, require a high level of autonomy and the ability to make personalized plans based on their own cognitive characteristics and needs. The big data (BD) era opens up new possibilities for IE (ideological education) work in universities, but it also poses some challenges. IE development will be greatly aided by recognizing opportunities to meet challenges and optimizing and integrating PL (political lesson) resources. The LNN (Lagrange neural network) model has been established. The simulation results show that the LNN network can converge to the optimal solution quickly and effectively and then reconstruct sparse signals. Individualized college PL instruction using LNN and BD technology helps students communicate more effectively and improves the pertinence, immediacy, and positivity of IE.

Publisher

Hindawi Limited

Subject

General Mathematics,General Medicine,General Neuroscience,General Computer Science

Reference24 articles.

1. Analysis on the innovation path of ideological and political theory courses in colleges and universities in the big data era;W. Wang;Ideological Education Research,2017

2. Synergy: the coupling development of big data and ideological and political theory courses in colleges and universities;Q. Lu;School Party Building and Ideological Education,2021

3. PFVAE: A Planar Flow-Based Variational Auto-Encoder Prediction Model for Time Series Data

4. Multimodal Data Guided Spatial Feature Fusion and Grouping Strategy for E-Commerce Commodity Demand Forecasting

5. A Variational Bayesian Deep Network with Data Self-Screening Layer for Massive Time-Series Data Forecasting

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