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Classification of wine quality using a two different parzen_window models: hard_parzen and a soft_parzen with gaussian kernel.

This was done as a homework in my IFT3395 class.

Philippe Schoeb

October 12th 2023

The data is generated from a file named winequality.txt (data for this problem can be found online). I separate the data in three sets: training, validation and test set.

Then, I optimise the two hyperparameters h for hard_parzen and sigma for the gaussian kernel by using the validation set. After that, I test the best two parameters with the test set. This program does not output anything. The best hyperparameters are printed with their respective error rate.

Details about hard_parzen as i do not find any information about it besides the class I am taking: It is a parzen_window model with kernel k: k(x_i, x) = IndicatorFunction_[0, h] (distance(x_i, x) where x is the point we want to classify. So basically, k(x_i, x) = 1 if distance(x_i, x) <= h and k(x_i, x) = 0 if distance(x_i, x) > h.