Abstract

In recent years, the rapid development of computer and network technology has produced various positive and negative effects on the mental health of college students. This also brings challenges to mental health education in colleges. In order to strengthen the research on the mental health education model under the network environment, this paper proposes the architecture of the college student mental health education system based on the privacy and security of the Internet of Things. First of all, this article combines the 3DES-RC4 hybrid security encryption algorithm based on the Internet of Things. This article uses the C/S architecture, MQTT protocol and SIP protocol based on the Internet of Things structure to design and implement instant messaging IoT security for mental health education Architecture. The extreme learning machine method combined with the differential privacy method is used in this article. By adding noise to the query results and adding an appropriate amount of noise to the analysis results, the protection of private data can be achieved. Finally, the data set experiment proves that compared with the existing algorithms, the algorithm and model proposed in this paper can better balance the level of privacy protection and classification accuracy.

Highlights

  • With the rapid development of communication technology, a singlecommunication method has been unable to meet the application requirements of actual scenarios

  • This article uses the C/S architecture, MQTT protocol and SIP protocol based on the Internet of Things structure to design and implement instant messaging IoT security for mental health education Architecture

  • The massive increase in the number of Internet users and computer networks have had a huge impact on the mental health of college students

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Summary

Introduction

With the rapid development of communication technology, a singlecommunication method has been unable to meet the application requirements of actual scenarios. INDEX TERMS Internet of Things, privacy security, mental health, differential privacy, college student education, extreme learning machine. This article combines the privacy and security methods of the Internet of Things to develop a health education system architecture.

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