Support Vector Regression Explained: How to Predict Continuous Values with SVMs
Автор: Arson
Загружено: 2026-01-25
Просмотров: 9
Support Vector Regression (SVR) is one of the most powerful yet underrated machine learning algorithms—and in this video, we break it down step by step in a beginner-friendly way.
In this video, you’ll learn:
What Support Vector Regression (SVR) actually is
How SVR is different from Linear Regression
Why SVR performs better when your dataset has outliers
The role of the epsilon (ε) tube in SVR
How changing epsilon impacts model behavior and error tolerance
A clear visual comparison between Linear Regression and SVR
We start by creating a dataset and visually identifying outliers, then compare how Linear Regression and SVR react to those outliers. You’ll see how SVR ignores small errors within the epsilon margin, making it more robust and reliable for real-world data.
This video is perfect for:
Machine Learning beginners
Students learning regression algorithms
Anyone preparing for ML interviews or exams
Developers who want intuition, not just formulas
No heavy math, no confusion—just clear concepts + practical understanding.
📌 Topics Covered:
Support Vector Regression
Epsilon-insensitive loss
Outlier handling in regression
Linear Regression vs SVR
Model comparison and conclusion
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