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Attacking a Machine Learning Model
The problem is I have a classifier and you can attack it by feeding it an input, which is imperceptibly different from any normal input. So the way you train a machine learning model is with gradient descent. Only instead of taking the gradients with respect to the weights of the classifier, you take theGradientDepressions (GDD) The GDD method works like this: For every input in the image, let's imagine we have pixels on an image for every pixel on this image, which way should I change this particular pixel to make the model do less well? Any given pixel change is not going to do very much, but a high resolution image is going