LGAIMLJun 8, 2022

Learning Interpretable Decision Rule Sets: A Submodular Optimization Approach

arXiv:2206.03718v130 citationsh-index: 60
Originality Incremental advance
AI Analysis

This work addresses the need for interpretable machine learning models, particularly for domains requiring transparent decision-making, though it is incremental as it builds on existing submodular optimization techniques.

The paper tackles the problem of learning interpretable decision rule sets by framing it as a subset selection task using submodular optimization, and experiments on real datasets demonstrate its effectiveness.

Rule sets are highly interpretable logical models in which the predicates for decision are expressed in disjunctive normal form (DNF, OR-of-ANDs), or, equivalently, the overall model comprises an unordered collection of if-then decision rules. In this paper, we consider a submodular optimization based approach for learning rule sets. The learning problem is framed as a subset selection task in which a subset of all possible rules needs to be selected to form an accurate and interpretable rule set. We employ an objective function that exhibits submodularity and thus is amenable to submodular optimization techniques. To overcome the difficulty arose from dealing with the exponential-sized ground set of rules, the subproblem of searching a rule is casted as another subset selection task that asks for a subset of features. We show it is possible to write the induced objective function for the subproblem as a difference of two submodular (DS) functions to make it approximately solvable by DS optimization algorithms. Overall, the proposed approach is simple, scalable, and likely to be benefited from further research on submodular optimization. Experiments on real datasets demonstrate the effectiveness of our method.

Foundations

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