The Impact of Responsible AI Research on Innovation and Development
Ali Akbar Septiandri, Marios Constantinides, Daniele Quercia

TL;DR
This study analyzes the real-world impact of Responsible AI research by identifying relevant papers through semantic similarity, revealing patterns in citations, translational timelines, and international contributions across a large dataset.
Contribution
Introduces a deep learning framework to identify RAI papers in a vast dataset and analyzes their translational impact through patents and repositories.
Findings
Highly cited RAI papers often lead to patents or repositories
Translational impact varies from 1 to 8 years
Significant contributions from European and Asian institutions
Abstract
Translational research, especially in the fast-evolving field of Artificial Intelligence (AI), is key to converting scientific findings into practical innovations. In Responsible AI (RAI) research, translational impact is often viewed through various pathways, including research papers, blogs, news articles, and the drafting of forthcoming AI legislation (e.g., the EU AI Act). However, the real-world impact of RAI research remains an underexplored area. Our study aims to capture it through two pathways: \emph{patents} and \emph{code repositories}, both of which provide a rich and structured source of data. Using a dataset of 200,000 papers from 1980 to 2022 in AI and related fields, including Computer Vision, Natural Language Processing, and Human-Computer Interaction, we developed a Sentence-Transformers Deep Learning framework to identify RAI papers. This framework calculates the…
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Taxonomy
TopicsEthics and Social Impacts of AI
