Litcius/Paper detail

Stream-based active learning with linear models

Davide Cacciarelli, Murat Külahçı, John Tyssedal

2022Knowledge-Based Systems25 citationsDOIOpen Access PDF

Abstract

The proliferation of automated data collection schemes and the advances in sensorics are increasing the amount of data we are able to monitor in real-time. However, given the high annotation costs and the time required by quality inspections, data is often available in an unlabeled form. This is fostering the use of active learning for the development of soft sensors and predictive models. In production, instead of performing random inspections to obtain product information, labels are collected by evaluating the information content of the unlabeled data. Several query strategy frameworks for regression have been proposed in the literature but most of the focus has been dedicated to the static pool-based scenario. In this work, we propose a new strategy for the stream-based scenario, where instances are sequentially offered to the learner, which must instantaneously decide whether to perform the quality check to obtain the label or discard the instance. The approach is inspired by the optimal experimental design theory and the iterative aspect of the decision-making process is tackled by setting a threshold on the informativeness of the unlabeled data points. The proposed approach is evaluated using numerical simulations and the Tennessee Eastman Process simulator. The results confirm that selecting the examples suggested by the proposed algorithm allows for a faster reduction in the prediction error.

Topics & Concepts

Computer scienceProcess (computing)AnnotationData miningFocus (optics)Machine learningQuality (philosophy)Data streamArtificial intelligenceOpticsPhysicsTelecommunicationsEpistemologyPhilosophyOperating systemMachine Learning and AlgorithmsFault Detection and Control SystemsMachine Learning and Data Classification