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Explaining Black Boxes on Sequential Data using Weighted Automata

机译:使用加权自动机解释顺序数据上的黑匣子

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Understanding how a learned black box works is of crucial interest for the future of Machine Learning. In this paper, we pioneer the question of the global interpretability of learned black box models that assign numerical values to symbolic sequential data. To tackle that task, we propose a spectral algorithm for the extraction of weighted automata (WA) from such black boxes. This algorithm does not require the access to a dataset or to the inner representation of the black box: the inferred model can be obtained solely by querying the black box, feeding it with inputs and analyzing its outputs. Experiments using Recurrent Neural Networks (RNN) trained on a wide collection of 48 synthetic datasets and 2 real datasets show that the obtained approximation is of great quality.
机译:了解机器学习的黑匣子的工作方式对机器学习的未来至关重要。在本文中,我们开创了将符号值分配给数值的学习型黑盒模型的全局可解释性问题。为了解决该任务,我们提出了一种频谱算法,用于从此类黑盒中提取加权自动机(WA)。此算法不需要访问数据集或黑匣子的内部表示:可以仅通过查询黑匣子,向其提供输入并分析其输出来获得推断的模型。使用递归神经网络(RNN)对48个合成数据集和2个真实数据集进行广泛训练的实验表明,所获得的近似值具有很高的质量。

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