Section 1. Chapitre 27
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Challenge: Fitting a Line with Gradient Descent
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Tâche
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A student wants to use gradient descent to fit a straight line to a dataset showing years of experience versus salary (in thousands). The goal is to find the best-fitting line by adjusting the slope (m) and intercept (b) using iterative updates.
You need to minimize the loss function:
n1i=1∑n(yi−(mxi+b))2The gradient descent update rules are:
m←m−α∂m∂Jb←b−α∂b∂JWhere:
- α is the learning rate (step size);
- ∂m∂J is the partial derivative of the loss function with respect to m;
- ∂b∂J is the partial derivative of the loss function with respect to b.
Your task:
- Complete the Python code below to implement the gradient descent steps.
- Fill in missing expressions using basic Python operations.
- Track how
mandbchange as the algorithm runs.
Solution
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Section 1. Chapitre 27
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