A Study on the Framework for Evaluating the Ethics and Trustworthiness of Generative AI
Cheonsu Jeong, Seunghyun Lee, Seonhee Jeong, Sungsu Kim

TL;DR
This paper develops a comprehensive framework for evaluating the ethics and trustworthiness of generative AI, addressing social impact issues beyond traditional performance metrics.
Contribution
It introduces a detailed, multidisciplinary evaluation framework covering key ethical dimensions and compares global AI ethics policies.
Findings
Identifies key dimensions for ethical evaluation of generative AI.
Develops assessment methodologies for fairness, transparency, and safety.
Analyzes policies in South Korea, US, EU, and China.
Abstract
This study provides an in_depth analysis of the ethical and trustworthiness challenges emerging alongside the rapid advancement of generative artificial intelligence (AI) technologies and proposes a comprehensive framework for their systematic evaluation. While generative AI, such as ChatGPT, demonstrates remarkable innovative potential, it simultaneously raises ethical and social concerns, including bias, harmfulness, copyright infringement, privacy violations, and hallucination. Current AI evaluation methodologies, which mainly focus on performance and accuracy, are insufficient to address these multifaceted issues. Thus, this study emphasizes the need for new human_centered criteria that also reflect social impact. To this end, it identifies key dimensions for evaluating the ethics and trustworthiness of generative AI_fairness, transparency, accountability, safety, privacy, accuracy,…
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