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AuthorAl-Maliki, Shawqi
AuthorBouanani, Faissal El
AuthorAbdallah, Mohamed
AuthorQadir, Junaid
AuthorAl-Fuqaha, Ala
Available date2025-07-08T03:58:09Z
Publication Date2024
Publication NameIEEE Internet of Things Magazine
ResourceScopus
Identifierhttp://dx.doi.org/10.1109/IOTM.001.2300135
ISSN25763180
URIhttp://hdl.handle.net/10576/66067
AbstractData distribution shift is a common problem in machine learning-powered smart city applications where the test data differs from the training data. Augmenting smart city applications with online machine learning models can handle this issue at test time, albeit with high cost and unreliable performance. To overcome this limitation, we propose to endow test-time adaptation (TTA) with a systematic active fine-tuning (SAF) layer that is characterized by three key aspects: a continuity aspect that adapts to ever-present data distribution shifts; intelligence aspect that recognizes the importance of fine-tuning as a distribution-shift-aware process that occurs at the appropriate time to address the recently detected data distribution shifts; and cost-effectiveness aspect that involves budgeted human-machine collaboration to make relabeling cost-effective and practical for diverse smart city applications. Our empirical results show that our proposed approach reduces the misclassification rate of the typical TTA from 0.280 to 0.139, demonstrating its superior performance. Notably, our approach outperforms TTA by a factor of two.
SponsorResearch reported in this publication was supported by the Qatar Research Development and Innovation Council grant # [ARG01-0525- 230348]. The content is solely the responsibility of the authors and does not necessarily represent the official views of Qatar Research Development and Innovation Council.
Languageen
PublisherIEEE
SubjectBudget control
Cost effectiveness
E-learning
Machine learning
Data distribution
Fine tuning
High costs
Machine learning models
Machine-learning
Online machines
Performance
Test data
Test time
Training data
Smart city
TitleAddressing Data Distribution Shifts in Online Machine Learning Powered Smart City Applications Using Augmented Test-Time Adaptation
TypeArticle
Pagination116-124
Issue Number4
Volume Number7
dc.accessType Full Text


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