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Explainable AI: A Brief Survey on History, Research Areas, Approaches and Challenges

机译:可解释的AI:关于历史,研究领域,方法和挑战的简短调查

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Deep learning has made significant contribution to the recent progress in artificial intelligence. In comparison to traditional machine learning methods such as decision trees and support vector machines, deep learning methods have achieved substantial improvement in various prediction tasks. However, deep neural networks (DNNs) are comparably weak in explaining their inference processes and final results, and they are typically treated as a black-box by both developers and users. Some people even consider DNNs (deep neural networks) in the current stage rather as alchemy, than as real science. In many real-world applications such as business decision, process optimization, medical diagnosis and investment recommendation, explainability and transparency of our AI systems become particularly essential for their users, for the people who are affected by AI decisions, and furthermore, for the researchers and developers who create the AI solutions. In recent years, the explainability and explainable AI have received increasing attention by both research community and industry. This paper first introduces the history of Explainable AI, starting from expert systems and traditional machine learning approaches to the latest progress in the context of modern deep learning, and then describes the major research areas and the state-of-art approaches in recent years. The paper ends with a discussion on the challenges and future directions.
机译:深度学习为人工智能的最新进展做出了重大贡献。与传统的机器学习方法(例如决策树和支持向量机)相比,深度学习方法在各种预测任务上已取得了实质性的进步。但是,深度神经网络(DNN)在解释其推理过程和最终结果方面相对较弱,并且开发人员和用户通常都将它们视为黑匣子。有些人甚至在现阶段将DNN(深度神经网络)视为炼金术,而不是真正的科学。在许多实际应用中,例如业务决策,流程优化,医疗诊断和投资建议,我们的AI系统的可解释性和透明度对于他们的用户,受AI决策影响的人们以及研究人员尤其重要以及创建AI解决方案的开发人员。近年来,可解释性和可解释性AI受到研究界和行业的越来越多的关注。本文首先介绍了可解释AI的历史,从专家系统和传统机器学习方法到现代深度学习背景下的最新进展,然后介绍了近年来的主要研究领域和最新方法。本文最后讨论了挑战和未来方向。

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