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Add Ridge Regression with L2 Regularization using Gradient Descent #12844

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@Nitin-Prata Nitin-Prata commented Jul 12, 2025

This PR adds an implementation of Ridge Regression using gradient descent. Ridge Regression is a linear model that includes L2 regularization to reduce overfitting.

Key additions:

  • Ridge cost function with L2 penalty
  • Gradient descent with regularization
  • Data collection from public CSGO dataset
  • Doctests for core functions
  • Result display of optimized weights

This contribution helps enhance the ML module with regularized regression techniques.

  • Add an algorithm?
  • Fix a bug or typo in an existing algorithm?
  • Add or change doctests? -- Note: Please avoid changing both code and tests in a single pull request.
  • Documentation change?

Checklist:

  • I have read CONTRIBUTING.md.
  • This pull request is all my own work -- I have not plagiarized.
  • I know that pull requests will not be merged if they fail the automated tests.
  • This PR only changes one algorithm file. To ease review, please open separate PRs for separate algorithms.
  • All new Python files are placed inside an existing directory.
  • All filenames are in all lowercase characters with no spaces or dashes.
  • All functions and variable names follow Python naming conventions.
  • All function parameters and return values are annotated with Python type hints.
  • All functions have doctests that pass the automated testing.
  • All new algorithms include at least one URL that points to Wikipedia or another similar explanation.
  • If this pull request resolves one or more open issues then the description above includes the issue number(s) with a closing keyword: "Fixes #ISSUE-NUMBER".

@algorithms-keeper algorithms-keeper bot added the tests are failing Do not merge until tests pass label Jul 12, 2025
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