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Traceability for Trustworthy AI: A Review of Models and Tools

机译:可靠的AI可追溯性:审查模型和工具

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Traceability is considered a key requirement for trustworthy artificial intelligence (AI), related to the need to maintain a complete account of the provenance of data, processes, and artifacts involved in the production of an AI model. Traceability in AI shares part of its scope with general purpose recommendations for provenance as W3C PROV, and it is also supported to different extents by specific tools used by practitioners as part of their efforts in making data analytic processes reproducible or repeatable. Here, we review relevant tools, practices, and data models for traceability in their connection to building AI models and systems. We also propose some minimal requirements to consider a model traceable according to the assessment list of the High-Level Expert Group on AI. Our review shows how, although a good number of reproducibility tools are available, a common approach is currently lacking, together with the need for shared semantics. Besides, we have detected that some tools have either not achieved full maturity, or are already falling into obsolescence or in a state of near abandonment by its developers, which might compromise the reproducibility of the research trusted to them.
机译:可追溯性被认为是值得信赖的人工智能(AI)的关键要求,符合维持涉及AI模型的数据,流程和文物的出处的完整叙述的必要性。 AI中的可追溯性分享其范围的一部分,具有作为W3C证据的出处的通用建议,并且还通过从业者使用的特定工具支持不同的范围,作为他们制作数据分析过程可重复或可重复的努力的一部分。在这里,我们审查了在其连接到构建AI模型和系统的可追溯性的相关工具,实践和数据模型。我们还提出了一些最小的要求,以考虑根据AI的高级专家组评估列表可追溯的模型。我们的评论显示,虽然有很多数量的可重复性工具,目前缺乏共同的方法,以及对共享语义的需求。此外,我们检测到一些工具未能实现完全成熟,或者已经落入过时或以其开发商近乎放弃的状态,这可能会损害对他们所信任的研究的再现性。

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