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Abstract
Information security is facing increasingly severe challenges, and
traditional protection means are difficult to cope with complex and changing
threats. In recent years, as an emerging intelligent technology, large language
models (LLMs) have shown a broad application prospect in the field of
information security. In this paper, we focus on the key role of LLM in
information security, systematically review its application progress in
malicious behavior prediction, network threat analysis, system vulnerability
detection, malicious code identification, and cryptographic algorithm
optimization, and explore its potential in enhancing security protection
performance. Based on neural networks and Transformer architecture, this paper
analyzes the technical basis of large language models and their advantages in
natural language processing tasks. It is shown that the introduction of large
language modeling helps to improve the detection accuracy and reduce the false
alarm rate of security systems. Finally, this paper summarizes the current
application results and points out that it still faces challenges in model
transparency, interpretability, and scene adaptability, among other issues. It
is necessary to explore further the optimization of the model structure and the
improvement of the generalization ability to realize a more intelligent and
accurate information security protection system.