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'Why Did You Do That?' Explaining Black Box Models with Inductive Synthesis

机译:'你为什么这么做?'用归纳法解释黑匣子模型

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By their nature, the composition of black box models is opaque. This makes the ability to generate explanations for the response to stimuli challenging. The importance of explaining black box models has become increasingly important given the prevalence of AI and ML systems and the need to build legal and regulatory frameworks around them. Such explanations can also increase trust in these uncertain systems. In our paper we present RICE, a method for generating explanations of the behaviour of black box models by (1) probing a model to extract model output examples using sensitivity analysis; (2) applying CNPInduce, a method for inductive logic program synthesis, to generate logic programs based on critical input-output pairs; and (3) interpreting the target program as a human-readable explanation. We demonstrate the application of our method by generating explanations of an artificial neural network trained to follow simple traffic rules in a hypothetical self-driving car simulation. We conclude with a discussion on the scalability and usability of our approach and its potential applications to explanation-critical scenarios.
机译:从本质上讲,黑匣子模型的组成是不透明的。这使得产生对刺激的反应的解释具有挑战性。鉴于AI和ML系统的普及以及围绕它们建立法律和法规框架的必要性,解释黑匣子模型的重要性变得越来越重要。这样的解释也可以增加对这些不确定系统的信任。在我们的论文中,我们提出了一种RICE,一种通过以下方式生成对黑匣子模型行为的解释的方法:(1)探测模型以使用灵敏度分析提取模型输出示例; (2)应用归纳逻辑程序合成方法CNPInduce基于关键输入输出对生成逻辑程序; (3)将目标程序解释为易于理解的解释。我们通过生成一个人工神经网络的解释来证明我们的方法的应用,该人工神经网络被训练为在假设的自动驾驶汽车仿真中遵循简单的交通规则。最后,我们讨论了我们的方法的可扩展性和可用性,以及它在解释关键场景中的潜在应用。

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