English

Securing Large Language Models: Addressing Bias, Misinformation, and Prompt Attacks

Cryptography and Security 2025-11-26 v3

Abstract

Large Language Models (LLMs) demonstrate impressive capabilities across various fields, yet their increasing use raises critical security concerns. This article reviews recent literature addressing key issues in LLM security, with a focus on accuracy, bias, content detection, and vulnerability to attacks. Issues related to inaccurate or misleading outputs from LLMs is discussed, with emphasis on the implementation from fact-checking methodologies to enhance response reliability. Inherent biases within LLMs are critically examined through diverse evaluation techniques, including controlled input studies and red teaming exercises. A comprehensive analysis of bias mitigation strategies is presented, including approaches from pre-processing interventions to in-training adjustments and post-processing refinements. The article also probes the complexity of distinguishing LLM-generated content from human-produced text, introducing detection mechanisms like DetectGPT and watermarking techniques while noting the limitations of machine learning enabled classifiers under intricate circumstances. Moreover, LLM vulnerabilities, including jailbreak attacks and prompt injection exploits, are analyzed by looking into different case studies and large-scale competitions like HackAPrompt. This review is concluded by retrospecting defense mechanisms to safeguard LLMs, accentuating the need for more extensive research into the LLM security field.

Keywords

Cite

@article{arxiv.2409.08087,
  title  = {Securing Large Language Models: Addressing Bias, Misinformation, and Prompt Attacks},
  author = {Benji Peng and Keyu Chen and Ming Li and Pohsun Feng and Ziqian Bi and Junyu Liu and Xinyuan Song and Qian Niu},
  journal= {arXiv preprint arXiv:2409.08087},
  year   = {2025}
}

Comments

17 pages, 1 figure

R2 v1 2026-06-28T18:42:34.209Z