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Explanations of Black-Box Model Predictions by Contextual Importance and Utility

机译:通过语境重要性和实用性对黑匣子模型预测的解释

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The significant advances in autonomous systems together with an immensely wider application domain have increased the need for trustable intelligent systems. Explainable artificial intelligence is gaining considerable attention among researchers and developers to address this requirement. Although there is an increasing number of works on interpretable and transparent machine learning algorithms, they are mostly intended for the technical users. Explanations for the end-user have been neglected in many usable and practical applications. In this work, we present the Contextual Importance (CI) and Contextual Utility (CU) concepts to extract explanations that are easily understandable by experts as well as novice users. This method explains the prediction results without transforming the model into an interpretable one. We present an example of providing explanations for linear and non-linear models to demonstrate the generalizability of the method. CI and CU are numerical values that can be represented to the user in visuals and natural language form to justify actions and explain reasoning for individual instances, situations, and contexts. We show the utility of explanations in car selection example and Iris flower classification by presenting complete (i.e. the causes of an individual prediction) and contrastive explanation (i.e. contrasting instance against the instance of interest). The experimental results show the feasibility and validity of the provided explanation methods.
机译:自主系统与一个完美更广泛的应用领域的重大进步增加了对可信智能系统的需求。解释的人工智能在研究人员和开发人员之间取得了相当大的关注来解决这一要求。虽然有越来越多的可解释和透明的机器学习算法,但它们主要用于技术用户。在许多可用和实际应用中,最终用户的解释已被忽略。在这项工作中,我们介绍了上下文重要性(CI)和上下文效用(CU)概念,以提取专家和新手用户容易理解的解释。该方法解释了预测结果而不将模型转换为可解释的结果。我们介绍了提供线性和非线性模型的解释的示例,以证明方法的概括性。 CI和Cu是可以以视觉效果和自然语言形式表示的数值,以证明行动和解释个人实例,情况和上下文的推理。我们通过呈现完整(即个体预测的原因)和对比解释(即令人兴趣的实例)来展示汽车选择示例和虹膜花卉分类中的解释的效用。实验结果表明提供了解释方法的可行性和有效性。

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