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Machine Learning
linear regression
machine learning
supervised learning
hypothesis function
slope
intercept
residuals
cost function
gradient descent

Linear Regression in Machine Learning

Linear Regression ek supervised learning algorithm hai jo independent aur dependent variables ke beech straight-line relationship identify karta hai. Is article me Linear Regression ke concepts, working steps, hypothesis function, slope & intercept, residuals, aur applications explain kiye gaye hain.

Gracy TyagiJul 5, 2026 5 min padhne ka time 15 views
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