可解释的人工智能框架:驾驭当前挑战,揭示创新应用

Algorithms Pub Date : 2024-05-24 DOI:10.3390/a17060227
Neeraj Anand Sharma, Rishal Ravikesh Chand, Zain Buksh, A. B. M. S. Ali, Ambreen Hanif, A. Beheshti
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引用次数: 0

摘要

本研究深入探讨了可解释人工智能(XAI)框架,旨在让研究人员和从业人员更深入地了解这些工具。我们根据解释类型、模型依赖性和用例等关键属性对著名的 XAI 解决方案进行分类和分析,从而建立了一个全面的知识库。这一资源使用户能够在多样化的 XAI 领域中游刃有余,并根据自己的具体需求选择最合适的框架。此外,该研究还提出了一个名为 XAIE(eXplainable AI Evaluator)的新框架,用于在采用 XAI 时做出明智决策。该框架使用户能够根据其应用背景客观地评估不同的 XAI 选项。这将通过提高透明度和信任度,促进更负责任的人工智能发展。最后,研究确定了与现有 XAI 框架相关的局限性和挑战,为未来的进步铺平了道路。通过强调这些领域,本研究将指导研究人员和开发人员提高可解释人工智能的能力。
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Explainable AI Frameworks: Navigating the Present Challenges and Unveiling Innovative Applications
This study delves into the realm of Explainable Artificial Intelligence (XAI) frameworks, aiming to empower researchers and practitioners with a deeper understanding of these tools. We establish a comprehensive knowledge base by classifying and analyzing prominent XAI solutions based on key attributes like explanation type, model dependence, and use cases. This resource equips users to navigate the diverse XAI landscape and select the most suitable framework for their specific needs. Furthermore, the study proposes a novel framework called XAIE (eXplainable AI Evaluator) for informed decision-making in XAI adoption. This framework empowers users to assess different XAI options based on their application context objectively. This will lead to more responsible AI development by fostering transparency and trust. Finally, the research identifies the limitations and challenges associated with the existing XAI frameworks, paving the way for future advancements. By highlighting these areas, the study guides researchers and developers in enhancing the capabilities of Explainable AI.
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