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Machine Learning
cost function
error metrics
regression models
machine learning
mse
mae
rmse
r2 score
adjusted r2

Cost Function and Error Metrics in Regression Models in Machine Learning

Regression models ko evaluate karne ke liye cost functions aur error metrics use hote hain. Is article me MSE, MAE, RMSE, R² aur Adjusted R² ko formulas, examples, advantages, limitations aur summary table ke saath explain kiya gaya hai.

Gracy TyagiJul 7, 2026 6 min padhne ka time 18 views
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