Responsible AI: Portraits with Intelligent Bibliometrics
Yi Zhang, Mengjia Wu, Guangquan Zhang, Jie Lu

TL;DR
This paper explores responsible AI by analyzing its core principles and applying bibliometric methods to over 17,000 research articles, providing macro-level insights into its development, key players, and technological trends to support regulation and governance.
Contribution
It introduces a bibliometric approach to studying responsible AI, integrating AI capabilities into knowledge discovery and cross-validating models with domain insights.
Findings
Identified key technological players and their relationships.
Mapped the topical landscape and evolution of responsible AI.
Analyzed recent advancements in a multidisciplinary core cohort.
Abstract
Shifting the focus from principles to practical implementation, responsible artificial intelligence (AI) has garnered considerable attention across academia, industry, and society at large. Despite being in its nascent stages, this emerging field grapples with nebulous concepts and intricate knowledge frameworks. By analyzing three prevailing concepts - explainable AI, trustworthy AI, and ethical AI, this study defined responsible AI and identified its core principles. Methodologically, this study successfully demonstrated the implementation of leveraging AI's capabilities into bibliometrics for enhanced knowledge discovery and the cross-validation of experimentally examined models with domain insights. Empirically, this study investigated 17,799 research articles contributed by the AI community since 2015. This involves recognizing key technological players and their relationships,…
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Taxonomy
TopicsBig Data and Business Intelligence
MethodsFocus
