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A framework for fostering transparency in shared artificial intelligencemodels by increasing visibility of contributions

机译:通过提高贡献的可见度,促进共享人工智能态度透明度的框架

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摘要

Increased adoption of artificial intelligence (AI) systems into scientific workflows will result in an increasing technical debt as the distance between the data scientists and engineers who develop AI system components and scientists, researchers and other users grows. This could quickly become problematic, particularly where guidance or regulations change and once-acceptable best practice becomes outdated, or where data sources are later discredited as biased or inaccurate. This paper presents a novel method for deriving a quantifiable metric capable of ranking the overall transparency of the process pipelines used to generate AI systems, such that users, auditors and other stakeholders can gain confidence that they will be able to validate and trust the data sources and contributors in the AI systems that they rely on. The methodology for calculating the metric, and the type of criteria that could be used to make judgements on the visibility of contributions to systems are evaluated through models published at ModelHub and PyTorch Hub, popular archives for sharing science resources, and is found to be helpful in driving consideration of the contributions made to generating AI systems and approaches toward effective documentation and improving transparency in machine learning assets shared within scientific communities.
机译:将人工智能(AI)系统的采用增加到科学工作流程将导致技术债务增加,作为开发AI系统组成部分和科学家,研究人员和其他用户的数据科学家和工程师之间的距离。这可能很快成为问题,特别是在指导或法规的变化和一次可接受的最佳实践变得过时的情况下,或者稍后被誉为偏见或不准确的地方。本文提出了推导了能够排名用于生成AI系统的过程管道的整体透明度的可量化度量的新方法,使得用户,审计员和其他利益相关者可以获得信心,以便他们能够验证和信任数据来源他们依赖的AI系统中的贡献者。通过在ModelHub和Pytorch Hub,流行档案中发布的ModelHub和Pytorch Hub,用于共享科学资源的流行档案,评估了用于对系统贡献的可见性进行判断的方法的方法,以及用于对系统的贡献的可见性进行评估,发现有用在推动对生成AI系统的贡献以及对科学社区内分享的机器学习资产中的有效文档和改善机器学习资产透明度的贡献。

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