论文标题
在黑盒外学习:追求可解释的模型
Learning outside the Black-Box: The pursuit of interpretable models
论文作者
论文摘要
机器学习证明了其生产准确模型的能力,但是这些模型在机器学习社区之外的部署受到解释这些模型的困难的阻碍。本文提出了一种算法,该算法对任何给定的连续黑盒函数产生连续的全局解释。我们的算法采用了一种投影追求的变化,其中选择了脊功能为Meijer G功能,而不是通常的多项式花纹。由于Meijer G函数在其参数上是可区分的,因此我们可以通过梯度下降来调整表示的参数。结果,我们的算法是有效的。使用来自UCI存储库中的五个熟悉的数据集和两种熟悉的机器学习算法,我们证明我们的算法产生了高度准确和简约的全球解释(涉及少数术语)。我们的解释可以轻松理解特征和特征互动的相对重要性。我们的解释算法代表了从先前的艺术状态前进。
Machine Learning has proved its ability to produce accurate models but the deployment of these models outside the machine learning community has been hindered by the difficulties of interpreting these models. This paper proposes an algorithm that produces a continuous global interpretation of any given continuous black-box function. Our algorithm employs a variation of projection pursuit in which the ridge functions are chosen to be Meijer G-functions, rather than the usual polynomial splines. Because Meijer G-functions are differentiable in their parameters, we can tune the parameters of the representation by gradient descent; as a consequence, our algorithm is efficient. Using five familiar data sets from the UCI repository and two familiar machine learning algorithms, we demonstrate that our algorithm produces global interpretations that are both highly accurate and parsimonious (involve a small number of terms). Our interpretations permit easy understanding of the relative importance of features and feature interactions. Our interpretation algorithm represents a leap forward from the previous state of the art.