An active learning framework with a class balancing strategy for time series classification

dc.contributor.authorDas, Shemonto
dc.date.issued2024-02
dc.description.abstractTraining machine learning models for classification tasks often requires labeling numerous samples, which is costly and time-consuming, especially in time series analysis. This research investigates Active Learning (AL) strategies to reduce the amount of labeled data needed for e↵ective time series classification. Traditional AL techniques cannot control the selection of instances per class for labeling, leading to potential bias in classification performance and instance selection, particularly in imbalanced time series datasets. To address this, we propose a novel class-balancing instance selection algorithm integrated with standard AL strategies. Our approach aims to select more instances from classes with fewer labeled examples, thereby addressing imbalance in time series datasets. We demonstrate the e↵ectiveness of our AL framework in selecting informative data samples for two distinct domains of tactile texture recognition and industrial fault detection. In robotics, our method achieves high-performance texture categorization while significantly reducing labeled training data requirements to 70%. We also evaluate the impact of di↵erent sliding window time intervals on robotic texture classification using AL strategies. In synthetic fiber manufacturing, we adapt AL techniques to address the challenge of fault classification, aiming to minimize data annotation cost and time for industries. We also address real-life class imbalances in the multiclass industrial anomalous dataset using our class-balancing instance algorithm integrated with AL strategies. Overall, this thesis highlights the potential of our AL framework across these two distinct domains.
dc.description.noteIncludes bibliographical references (pages 96-115)
dc.format.extentix, 115 pages : illustrations (chiefly color)
dc.format.mediumText
dc.identifier.doihttps://doi.org/10.48336/FZR5-RH89
dc.identifier.urihttps://hdl.handle.net/20.500.14783/14778
dc.language.isoen
dc.publisherMemorial University of Newfoundland
dc.rights.licenseThe author retains copyright ownership and moral rights in this thesis. Neither the thesis nor substantial extracts from it may be printed or otherwise reproduced without the author's permission.
dc.subjecttime series classification
dc.subjectactive learning
dc.subjectdata imbalancement
dc.subjecttactile sensing
dc.subject.lcshActive learning
dc.subject.lcshTime-series analysis
dc.subject.lcshClassification
dc.subject.lcshTactile sensors
dc.subject.lcshMachine learning
dc.titleAn active learning framework with a class balancing strategy for time series classification
dc.typeMaster thesis
mem.campusSt. John's Campus
mem.convocationDate2024-05
mem.departmentComputer Science
mem.divisionsCompSci
mem.facultyFaculty of Science
mem.fullTextStatuspublic
mem.institutionMemorial University of Newfoundland
mem.isPublishedunpub
mem.thesisAuthorizedNameDas, Shemonto
thesis.degree.disciplineComputer Science
thesis.degree.grantorMemorial University of Newfoundland
thesis.degree.levelmasters
thesis.degree.nameM. Sc.

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
Thesis.pdf
Size:
3.57 MB
Format:
Adobe Portable Document Format

Collections