SVM Kernels In-Depth Intuition - Polynomial Kernels Part 3 - Machine Learning Data Science
Krish Naik via YouTube
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Dive deep into the intuition behind Support Vector Machine (SVM) kernels, focusing specifically on polynomial kernels in this third installment of a machine learning tutorial series. Explore the use cases for polynomial kernels, understand their mathematical foundations, and learn how to effectively tune hyperparameters for optimal performance. Gain valuable insights into this powerful technique for non-linear classification and regression tasks in data science and machine learning applications.
Syllabus
Introduction
SVM Kernels
Use Case
Polynomials
Hyperparameter Tuning
Taught by
Krish Naik