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Formal Verification of Input-Output Mappings of Tree Ensembles

Abstract

Recent advances in machine learning and artificial intelligence are now beingconsidered in safety-critical autonomous systems where software defects maycause severe harm to humans and the environment. Design organizations in thesedomains are currently unable to provide convincing arguments that their systemsare safe to operate when machine learning algorithms are used to implement theirsoftware. In this paper, we present an efficient method to extract equivalence classes from decision trees and tree ensembles, and to formally verify that their input-output mappings comply with requirements. The idea is that, given that safety requirements can be traced to desirable properties on system input-output patterns, we can use positive verification outcomes in safety arguments. This paper presents the implementation of the method in the tool VoTE (Verifier of Tree Ensembles), and evaluates its scalability on two case studies presented in current literature. We demonstrate that our method is practical for tree ensembles trained on low-dimensional data with up to 25 decision trees and tree depths of up to 20.Our work also studies the limitations of the method with high-dimensionaldata and preliminarily investigates the trade-off between large number of trees and time taken for verification.Funding agencies: Wallenberg AI, Autonomous Systems and Software Program (WASP) - Knut and Alice Wallenberg Foundation</p

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Last time updated on 03/08/2022

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