I want to generate a predictive linear regression model. In the dataset, there are 18 subjects and 9 features per subject. Since there are only 2^9=512 possible subsets for 9 features, I've tested all possible combinations using leave-one-out cross-validation and selected the feature subset with the lowest mean squared error, and the results look pretty good. Since I'm new to machine learning, I'm not sure if this is a valid approach considering there are only 18 subjects and 512 feature subsets. Is this a reasonable approach to select a feature subset, or do the numbers (features vs subjects) look likely to result in overfitting? If so, any advice on more appropriate approaches?
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