The goal of this project is to reproduce the methods and experiments of
the following paper:
C. Cortes, X. Gonzalvo, V. Kuznetsov, M. Mohri, S. Yang AdaNet:
Adaptive Structural Learning of Artificial Neural
Networks. We will try to
reproduce their method that consists in building neural networks whose
structure is learned and optimized at the same time as it’s weights.This
method will be applied to a binary classification task on images from
the CIFAR-10 dataset.
This is Part 3 of my decision trees series. This time around we are going to code a decision tree in Python. So I’m going to try to make this code as understandable as possible, but if you are not familiar with Object Oriented Programming (OOP) or recursion you might have a tougher time.