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TAAS 2024

Self-adapting Machine Learning-based Systems via a Probabilistic Model Checking Framework

Journal Article journal-article Artificial Intelligence · Autonomous and Adaptive Systems

Abstract

This article focuses on the problem of optimizing the system utility of Machine Learning (ML)-based systems in the presence of ML mispredictions. This is achieved via the use of self-adaptive systems and through the execution of adaptation tactics, such as model retraining, which operate at the level of individual ML components. To address this problem, we propose a probabilistic modeling framework that reasons about the cost/benefit tradeoffs associated with adapting ML components. The key idea of the proposed approach is to decouple the problems of estimating (1) the expected performance improvement after adaptation and (2) the impact of ML adaptation on overall system utility. We apply the proposed framework to engineer a self-adaptive ML-based fraud detection system, which we evaluate using a publicly available, real fraud detection dataset. We initially consider a scenario in which information on the model’s quality is immediately available. Next, we relax this assumption by integrating (and extending) state-of-the-art techniques for estimating the model’s quality in the proposed framework. We show that by predicting the system utility stemming from retraining an ML component, the probabilistic model checker can generate adaptation strategies that are significantly closer to the optimal, as compared against baselines such as periodic or reactive retraining.

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Context

Venue
ACM Transactions on Autonomous and Adaptive Systems
Archive span
2006-2026
Indexed papers
484
Paper id
235558965554246313