Active learning for regression in engineering populations: A risk-informed approach
Daniel R. Clarkson, Lawrence A. Bull, Chandula T. Wickramarachchi,, Elizabeth J. Cross, Timothy J. Rogers, Keith Worden, Nikolaos Dervilis, Aidan, J. Hughes

TL;DR
This paper introduces a risk-informed active learning method combined with hierarchical Bayesian modeling to efficiently improve regression predictions in engineering applications with limited data, demonstrated on machining tools.
Contribution
It presents a novel integration of active learning with hierarchical Bayesian models for regression in engineering, leveraging contextual information to reduce data needs and improve predictive accuracy.
Findings
Outperforms uninformed approaches in reducing inspection costs
Enhances predictive performance through information sharing across tasks
Demonstrates effectiveness on machining tool surface roughness prediction
Abstract
Regression is a fundamental prediction task common in data-centric engineering applications that involves learning mappings between continuous variables. In many engineering applications (e.g.\ structural health monitoring), feature-label pairs used to learn such mappings are of limited availability which hinders the effectiveness of traditional supervised machine learning approaches. The current paper proposes a methodology for overcoming the issue of data scarcity by combining active learning with hierarchical Bayesian modelling. Active learning is an approach for preferentially acquiring feature-label pairs in a resource-efficient manner. In particular, the current work adopts a risk-informed approach that leverages contextual information associated with regression-based engineering decision-making tasks (e.g.\ inspection and maintenance). Hierarchical Bayesian modelling allow…
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Taxonomy
TopicsAdvanced Statistical Process Monitoring
