How to deal with a situation that the number of features in training dataset is larger than the number of...












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I am playing a Kaggle competition, Don't Overfit Ⅱ

And I am dealing with a situation that the number of features in training dataset is larger than the number of training examples, which has 250 training samples and 300 features.

But I never dealt with similar situations before.

So if not mind, could anyone give me some advice on how to avoid overfitting in such extreme situations?

Thanks sincerely.









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    $begingroup$


    I am playing a Kaggle competition, Don't Overfit Ⅱ

    And I am dealing with a situation that the number of features in training dataset is larger than the number of training examples, which has 250 training samples and 300 features.

    But I never dealt with similar situations before.

    So if not mind, could anyone give me some advice on how to avoid overfitting in such extreme situations?

    Thanks sincerely.









    share









    $endgroup$















      0












      0








      0





      $begingroup$


      I am playing a Kaggle competition, Don't Overfit Ⅱ

      And I am dealing with a situation that the number of features in training dataset is larger than the number of training examples, which has 250 training samples and 300 features.

      But I never dealt with similar situations before.

      So if not mind, could anyone give me some advice on how to avoid overfitting in such extreme situations?

      Thanks sincerely.









      share









      $endgroup$




      I am playing a Kaggle competition, Don't Overfit Ⅱ

      And I am dealing with a situation that the number of features in training dataset is larger than the number of training examples, which has 250 training samples and 300 features.

      But I never dealt with similar situations before.

      So if not mind, could anyone give me some advice on how to avoid overfitting in such extreme situations?

      Thanks sincerely.







      machine-learning overfitting





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