On Symbolically Encoding the Behavior of Random Forests

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Authors Arthur Choi, Andy Shih, Anchal Goyanka, Adnan Darwiche arXiv ID 2007.01493 Category cs.AI: Artificial Intelligence Cross-listed cs.LG Citations 33 Venue arXiv.org Last Checked 4 months ago
Abstract
Recent work has shown that the input-output behavior of some machine learning systems can be captured symbolically using Boolean expressions or tractable Boolean circuits, which facilitates reasoning about the behavior of these systems. While most of the focus has been on systems with Boolean inputs and outputs, we address systems with discrete inputs and outputs, including ones with discretized continuous variables as in systems based on decision trees. We also focus on the suitability of encodings for computing prime implicants, which have recently played a central role in explaining the decisions of machine learning systems. We show some key distinctions with encodings for satisfiability, and propose an encoding that is sound and complete for the given task.
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