Daily Arxiv

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Bridging Ethical Principles and Algorithmic Methods: An Alternative Approach for Assessing Trustworthiness in AI Systems

Created by
  • Haebom

Author

Michael Papademas, Xenia Ziouvelou, Antonis Troumpoukis, Vangelis Karkaletsis

Outline

Artificial intelligence (AI) technology is widely integrated into society, highlighting the complexities of human-created artifacts with significant impact, highlighting both potential benefits and potential negative consequences. The complexity and exceptional capabilities of AI systems can lead to reliance on technologies beyond direct human oversight or understanding. This paper aims to introduce an evaluation method that combines the ethical components of trustworthy AI with the algorithmic processes of PageRank and TrustRank. To minimize the subjectivity of self-evaluation techniques, we introduce algorithmic criteria and establish a framework for assessing the trustworthiness of AI systems.

Takeaways, Limitations

We present an evaluation framework that reduces subjectivity by combining the ethical aspects of trustworthy AI with algorithmic processes.
Provides quantitative insights to enable a holistic assessment of the reliability of AI systems.
Enabling technical evaluation while considering AI's ethical guidelines.
Lack of further explanation of the practical application and results of the evaluation methodology.
Lack of details about the specific implementation or performance of the algorithm.
The generalizability of the proposed framework and its applicability to other AI systems may be limited.
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