The emergence and need for explainable AI

Harmon Lee Bruce Chia
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Abstract

Artificial Intelligence (AI) systems, particularly deep learning models, have revolutionized numerous sectors with their unprecedented performance capabilities. However, the intricate structures of these models often result in a "black-box" characterization, making their decisions difficult to understand and trust. Explainable AI (XAI) emerges as a solution, aiming to unveil the inner workings of complex AI systems. This paper embarks on a comprehensive exploration of prominent XAI techniques, evaluating their effectiveness, comprehensibility, and robustness across diverse datasets. Our findings highlight that while certain techniques excel in offering transparent explanations, others provide a cohesive understanding across varied models. The study accentuates the importance of crafting AI systems that seamlessly marry performance with interpretability, fostering trust and facilitating broader AI adoption in decision-critical domains.
可解释人工智能的出现和需求
人工智能(AI)系统,特别是深度学习模型,以其前所未有的性能能力彻底改变了许多行业。然而,这些模型的复杂结构经常导致“黑盒”特征,使他们的决定难以理解和信任。可解释人工智能(XAI)作为一种解决方案出现,旨在揭示复杂人工智能系统的内部工作原理。本文对突出的XAI技术进行了全面的探索,评估了它们在不同数据集上的有效性、可理解性和鲁棒性。我们的研究结果强调,虽然某些技术在提供透明的解释方面表现出色,但其他技术在不同模型之间提供了连贯的理解。该研究强调了打造人工智能系统的重要性,该系统将性能与可解释性无缝结合,促进信任,并促进在关键决策领域更广泛地采用人工智能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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