Published date: Thursday, December 19, 2024Type: ConferencePDF: CDC 2024BibTex: CDC 2024Abstract This paper presents a novel framework for inferring timed temporal logic properties from data. The dataset comprises pairs of finite-time system traces and corresponding labels, denoting whether the traces demonstrate specific desired behaviors, e.g. whether the ship follows a safe route or not. Our proposed approach leverages decision-tree-based methods to infer Signal Temporal Logic classifiers using primitive formulae. We formulate the inference process as a mixed integer linear programming optimization problem, recursively generating constraints to determine both data classification, i.e., decision criteria and the tree structure. Applying a max-flow algorithm on the resultant tree transforms the problem into a global optimization challenge, leading to improved classification rates compared to prior methodologies. Moreover, we introduce a technique to reduce the number of constraints by exploiting the symmetry inherent in STL primitives, which enhances the algorithm's time performance and interpretability. We conduct three case studies involving two-class, multi-class, and complex formula classification scenarios to assess our algorithm's effectiveness and classification performance. Tags: Temporal Logic InferenceDecision TreesSignal Temporal LogicMixed Integer Linear ProgrammingMachine Learning