Know Your Model (KYM): Increasing Trust in AI and Machine Learning
- URL: http://arxiv.org/abs/2106.11036v1
- Date: Mon, 31 May 2021 14:08:22 GMT
- Title: Know Your Model (KYM): Increasing Trust in AI and Machine Learning
- Authors: Mary Roszel, Robert Norvill, Jean Hilger, Radu State
- Abstract summary: We analyze each element of trustworthiness and provide a set of 20 guidelines that can be leveraged to ensure optimal AI functionality.
The guidelines help ensure that trustworthiness is provable and can be demonstrated, they are implementation agnostic, and they can be applied to any AI system in any sector.
- Score: 4.93786553432578
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The widespread utilization of AI systems has drawn attention to the potential
impacts of such systems on society. Of particular concern are the consequences
that prediction errors may have on real-world scenarios, and the trust humanity
places in AI systems. It is necessary to understand how we can evaluate
trustworthiness in AI and how individuals and entities alike can develop
trustworthy AI systems. In this paper, we analyze each element of
trustworthiness and provide a set of 20 guidelines that can be leveraged to
ensure optimal AI functionality while taking into account the greater ethical,
technical, and practical impacts to humanity. Moreover, the guidelines help
ensure that trustworthiness is provable and can be demonstrated, they are
implementation agnostic, and they can be applied to any AI system in any
sector.
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