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- Bo Li
- JD Technology, China and Tsinghua University, Beijing, China
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- Peng Qi
- Amazon AWS AI Labs, Seatle, WA, USA
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- Bo Liu
- Walmart Inc., Mountain View, CA, USA
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- Shuai Di
- JD Technology, Beijing, China
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- Jingen Liu
- JD Technology, Mountain View, CA, USA
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- Jiquan Pei
- JD Technology, Beijing, China
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- Jinfeng Yi
- Frontis.AI, Beijing, China
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- Bowen Zhou
- Tsinghua University, Beijing, China and Frontis.AI, Beijing, China
説明
<jats:p>The rapid development of Artificial Intelligence (AI) technology has enabled the deployment of various systems based on it. However, many current AI systems are found vulnerable to imperceptible attacks, biased against underrepresented groups, lacking in user privacy protection. These shortcomings degrade user experience and erode people’s trust in all AI systems. In this review, we provide AI practitioners with a comprehensive guide for building trustworthy AI systems. We first introduce the theoretical framework of important aspects of AI trustworthiness, including robustness, generalization, explainability, transparency, reproducibility, fairness, privacy preservation, and accountability. To unify currently available but fragmented approaches toward trustworthy AI, we organize them in a systematic approach that considers the entire lifecycle of AI systems, ranging from data acquisition to model development, to system development and deployment, finally to continuous monitoring and governance. In this framework, we offer concrete action items for practitioners and societal stakeholders (e.g., researchers, engineers, and regulators) to improve AI trustworthiness. Finally, we identify key opportunities and challenges for the future development of trustworthy AI systems, where we identify the need for a paradigm shift toward comprehensively trustworthy AI systems.</jats:p>
収録刊行物
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- ACM Computing Surveys
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ACM Computing Surveys 55 (9), 1-46, 2023-01-16
Association for Computing Machinery (ACM)
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詳細情報 詳細情報について
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- CRID
- 1360298761827462784
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- DOI
- 10.1145/3555803
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- ISSN
- 15577341
- 03600300
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- データソース種別
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- Crossref