F. Manzella, G. Pagliarini, G. Sciavicco, Eduard Ionel Stan
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引用次数: 5
Interval Temporal Random Forests with an Application to COVID-19 Diagnosis
Symbolic learning is the logic-based approach to machine learning. The mission of symbolic learning is to provide algorithms and methodologies to extract logical information from data and express it in an interpretable way. In the context of temporal data, interval temporal logic has been recently proposed as a suitable tool for symbolic learning, specifically via the design of an interval temporal logic decision tree extraction algorithm. Building on it, we study here its natural generalization to interval temporal random forests, mimicking the corresponding schema at the propositional level. Interval temporal random forests turn out to be a very performing multivariate time series classification method, which, despite the introduction of a functional component, are still logically interpretable to some extent. We apply this method to the problem of diagnosing COVID-19 based on the time series that emerge from cough and breath recording of positive versus negative subjects. Our experiment show that our models achieve very high accuracies and sensitivities, often superior to those achieved by classical methods on the same data. Although other recent approaches to the same problem (based on different and more numerous data) show even better statistical results, our solution is the first logic-based, interpretable, and explainable one. © Federico Manzella, Giovanni Pagliarini, Guido Sciavicco, and Ionel Eduard Stan;licensed under Creative Commons License CC-BY 4.0 28th International Symposium on Temporal Representation and Reasoning (TIME 2021).