In this work, we propose a simple but eective method to interpret black-box machine learning models globally. at is, we use a compact binary tree, the interpretation tree, to explicitly represent the most important decision rules that are implicitly contained in the black-box machine learning models. is tree is learned from the contribution matrix which consists of the contributions of input...