Trustworthy AI-Generative Content for Intelligent Network Service: Robustness, Security, and Fairness
Siyuan Li, Xi Lin, Yaju Liu, Xiang Chen, Jianhua Li

TL;DR
This paper introduces TrustGAIN, a framework for trustworthy AI-generated content in network services, focusing on robustness, security, and fairness, with a case study on detecting unsafe content using sentiment analysis.
Contribution
The paper proposes TrustGAIN, a comprehensive framework addressing robustness, security, and fairness in AIGC network services, including a novel detection method for unsafe content.
Findings
TrustGAIN effectively detects unsafe content in network services.
Experiments show high accuracy in fake news, malicious code, and unsafe reviews.
Framework supports trustworthy and secure AIGC in future networks.
Abstract
AI-generated content (AIGC) models, represented by large language models (LLM), have revolutionized content creation. High-speed next-generation communication technology is an ideal platform for providing powerful AIGC network services. At the same time, advanced AIGC techniques can also make future network services more intelligent, especially various online content generation services. However, the significant untrustworthiness concerns of current AIGC models, such as robustness, security, and fairness, greatly affect the credibility of intelligent network services, especially in ensuring secure AIGC services. This paper proposes TrustGAIN, a trustworthy AIGC framework that incorporates robust, secure, and fair network services. We first discuss the robustness to adversarial attacks faced by AIGC models in network systems and the corresponding protection issues. Subsequently, we…
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Taxonomy
TopicsDigital Transformation in Law
