BRIDGING DEEP LEARNING AND ADAPTIVE SYSTEMS: A PERFORMANCE STUDY ON CIFAR-10 IMAGE CLASSIFICATION
Abstract
Image classification is a fundamental task in computer vision, with applications spanning from medical diagnostics to autonomous driving. This study presents a comparative analysis of Convolutional Neural Networks (CNNs) and a representative adaptive system approach, specifically K-Nearest Neighbors (KNN), for image classification on the CIFAR-10 dataset. CNNs, known for their hierarchical feature learning capabilities, have revolutionized the field, while adaptive systems like KNN represent a class of algorithms that dynamically adjust their decision boundaries based on data relationships. The CIFAR-10 dataset, comprising 60,000 32x32 color images across 10 classes, serves as the benchmark [1]. Our methodology involves training a custom CNN architecture and applying KNN, with careful consideration of preprocessing and hyperparameter tuning for both models. Performance is evaluated using accuracy, precision, recall, and F1-score. Experimental results indicate that CNNs significantly outperform the KNN approach on this dataset, demonstrating their superior ability to extract and learn complex, invariant features from raw image data. This research highlights the inherent strengths of deep learning architectures in handling the intricacies of visual data while also providing insights into the characteristics where simpler adaptive systems might fall short or excel.
Keywords
References
Similar Articles
- Kartik Tandon, Dr. Priya Menon, LEVERAGING MACHINE LEARNING TO IDENTIFY MATERNAL RISK FACTORS FOR CONGENITAL HEART DISEASE IN OFFSPRING , International Journal of Intelligent Data and Machine Learning: Vol. 2 No. 05 (2025): Volume 02 Issue 05
- Prof. Jiao L. Shen, Kwa Kai Ming, A Hybrid Sentiment-Aware Machine Learning Framework for Real-Time Dynamic Pricing in E-Commerce. , International Journal of Intelligent Data and Machine Learning: Vol. 2 No. 11 (2025): Volume 02 Issue 11
- Alexander V. Korovin, Optimizing Zero-Downtime Microservice Deployments: Integrating DevOps Principles in .NET Core Environments , International Journal of Intelligent Data and Machine Learning: Vol. 3 No. 01 (2026): Volume 03 Issue 01
- Vaibhav Tummalapalli, Cohort-Based Segmentation Framework for Machine Learning: Structuring Temporal Data for Enhanced Feature Engineering , International Journal of Intelligent Data and Machine Learning: Vol. 3 No. 03 (2026): Volume 03 Issue 03
- Vaibhav Tummalapalli, A Framework for Adjusting Oversampling Bias in Machine Learning Models , International Journal of Intelligent Data and Machine Learning: Vol. 3 No. 04 (2026): Volume 03 Issue 04
- Elias J. Vance, Clara M. Soto, High-Frequency Data Driven Network Learning for Systemic Risk Analysis in Financial Markets , International Journal of Intelligent Data and Machine Learning: Vol. 2 No. 09 (2025): Volume 02 Issue 09
- Prof. JΓΌrgen Hoffmann, Optimizing Cloud Data Warehouses for Enterprise Analytics: A Comprehensive Examination of Amazon Redshift Architectures and PRACTICES , International Journal of Intelligent Data and Machine Learning: Vol. 2 No. 12 (2025): Volume 02 Issue 12
- Dr. Aisha Binti Zainal, Prof. Chen Ming Tao, ARCHITECTURAL AND SECURITY ASPECTS OF WIRELESS SENSOR NETWORKS: A COMPREHENSIVE REVIEW , International Journal of Intelligent Data and Machine Learning: Vol. 1 No. 01 (2024): Volume 01 Issue 01
- Agus Santoso, Siti Nurhayati, ALGORITHMIC GUARANTEES FOR HIERARCHICAL DATA GROUPING: INSIGHTS FROM AVERAGE LINKAGE, BISECTING K-MEANS, AND LOCAL SEARCH HEURISTICS , International Journal of Intelligent Data and Machine Learning: Vol. 2 No. 02 (2025): Volume 02 Issue 02
- Liang Wu, Anita Sari, PYCD-LINGAM: A PYTHON FRAMEWORK FOR CAUSAL INFERENCE WITH NON-GAUSSIAN LINEAR MODELS , International Journal of Intelligent Data and Machine Learning: Vol. 2 No. 07 (2025): Volume 02 Issue 07
You may also start an advanced similarity search for this article.