EN
Comprehensive Benchmarking Analysis for Evaluating Effectiveness of Transfer Learning-based Feature Engineering in AutoML
Abstract
This study conducts a comprehensive benchmarking analysis to evaluate the effectiveness of transfer learning-based feature engineering in Automated Machine Learning (AutoML) systems. The research compares traditional manual feature engineering, standard AutoML approaches, and transfer learning-enhanced AutoML across diverse data modalities, including images, text, and tabular data. Experimental evaluations were carried out using CIFAR-10, IMDB Reviews, and Adult Census Income datasets, focusing on assessing each approach in terms of model performance, training time, and resource utilization. The findings reveal that transfer learning-enhanced AutoML significantly reduces training time by up to 45% while improving model accuracy by up to 20%, particularly for image and text datasets. Furthermore, scenarios with high feature reuse rates demonstrated memory utilization improvements of up to 30%. These results underscore the substantial advantages of integrating transfer learning into AutoML systems for optimizing feature engineering processes.
Keywords
References
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Details
Primary Language
English
Subjects
Machine Learning (Other), Artificial Intelligence (Other)
Journal Section
Research Article
Publication Date
February 1, 2025
Submission Date
December 20, 2024
Acceptance Date
December 23, 2024
Published in Issue
Year 2024 Volume: 9 Number: 2
APA
Sırt, M., & Eyüpoğlu, C. (2025). Comprehensive Benchmarking Analysis for Evaluating Effectiveness of Transfer Learning-based Feature Engineering in AutoML. The Journal of Cognitive Systems, 9(2), 30-37. https://doi.org/10.52876/jcs.1604889
AMA
1.Sırt M, Eyüpoğlu C. Comprehensive Benchmarking Analysis for Evaluating Effectiveness of Transfer Learning-based Feature Engineering in AutoML. JCS. 2025;9(2):30-37. doi:10.52876/jcs.1604889
Chicago
Sırt, Merve, and Can Eyüpoğlu. 2025. “Comprehensive Benchmarking Analysis for Evaluating Effectiveness of Transfer Learning-Based Feature Engineering in AutoML”. The Journal of Cognitive Systems 9 (2): 30-37. https://doi.org/10.52876/jcs.1604889.
EndNote
Sırt M, Eyüpoğlu C (February 1, 2025) Comprehensive Benchmarking Analysis for Evaluating Effectiveness of Transfer Learning-based Feature Engineering in AutoML. The Journal of Cognitive Systems 9 2 30–37.
IEEE
[1]M. Sırt and C. Eyüpoğlu, “Comprehensive Benchmarking Analysis for Evaluating Effectiveness of Transfer Learning-based Feature Engineering in AutoML”, JCS, vol. 9, no. 2, pp. 30–37, Feb. 2025, doi: 10.52876/jcs.1604889.
ISNAD
Sırt, Merve - Eyüpoğlu, Can. “Comprehensive Benchmarking Analysis for Evaluating Effectiveness of Transfer Learning-Based Feature Engineering in AutoML”. The Journal of Cognitive Systems 9/2 (February 1, 2025): 30-37. https://doi.org/10.52876/jcs.1604889.
JAMA
1.Sırt M, Eyüpoğlu C. Comprehensive Benchmarking Analysis for Evaluating Effectiveness of Transfer Learning-based Feature Engineering in AutoML. JCS. 2025;9:30–37.
MLA
Sırt, Merve, and Can Eyüpoğlu. “Comprehensive Benchmarking Analysis for Evaluating Effectiveness of Transfer Learning-Based Feature Engineering in AutoML”. The Journal of Cognitive Systems, vol. 9, no. 2, Feb. 2025, pp. 30-37, doi:10.52876/jcs.1604889.
Vancouver
1.Merve Sırt, Can Eyüpoğlu. Comprehensive Benchmarking Analysis for Evaluating Effectiveness of Transfer Learning-based Feature Engineering in AutoML. JCS. 2025 Feb. 1;9(2):30-7. doi:10.52876/jcs.1604889