imehranasgari/ML-Classification-SVR-01
This project explores the application of **Support Vector Regression (SVR)** using different kernel functions (linear, polynomial, and RBF) on synthetic and real-world datasets. The main objective is to **understand how various SVR kernels perform** in modeling complex, non-linear data, rather than just optimizing accuracy.
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Aug 17, 2025
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