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How to use the J(θ0,θ1)=2m1i=1∑m(y^i−yi)2=2m1i=1∑m(hθ(xi)−yi)2 formula in machine learning?
J(θ0,θ1)=2m1i=1∑m(y^i−yi)2=2m1i=1∑m(hθ(xi)−yi)2 How to use this fornula in linear regression ??m
1 Réponse
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The formula is not readable. but usually cost function is used to modify weights to give more accurate results. It represents the difference between the current predicted output h(x_i) and original true result(from data set) y_i.
i represent data example such as 1,2,3.....
if h(x_i) - y_i is high it means error is high so weights will be manipulated more dramatically . for example true result is 5 but we predicted 8, result will be 8-5 = 3.
But when true result is 8 and we predict 5 result will be -3
to avoid this we have to take square of result (h(x_i) - y_i)^2
or another approach is using absolute value such as abs(h(x_i) - y_i)