Research on Computer Network Information Security and Protection Strategies

Research on Computer Network Information Security and Protection Strategies

Authors

  • Zhiyi Hu Longdong University Qingyang, Gansu 745000, China

DOI:

https://doi.org/10.53469/wjimt.2025.08(04).16

Keywords:

Computer Network Information, Security, Protection Strategies

Abstract

With the rapid and ongoing development of computer technology in the current stage, computers have found wide application in people's lives. In the practical use of computer networks, both administrators and users pay particular attention to this issue. It is essential to recognize the shortcomings in this area and implement appropriate measures to address these issues. Only through such actions can we enhance the security of computer network information, provide necessary support for computer network applications, and fully leverage the advantages of computer networks. This article primarily focuses on the analysis and discussion of computer network information security and proposes relevant protective measures, with the hope that it can serve as a reference for all.

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Published

2025-04-23

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