Unsupervised Learning of Physical Models: Uses and Limitations of Principal Component Analysis
Summary
In the bulk of this Thesis, we apply an Unsupervised learning algorithm, namely
Principal Component Analysis (PCA) to five models: the Ising ferromagnet, the Ising
antiferromagnet, the Ising antiferromagnet on a Triangular and Kagome lattice and
finally for the XY model. For this, we feed the algorithm with configurations generated
through Monte Carlo algorithms. We show that the PCA is able to detect meaningful
features of the models for all but the Kagome lattice model. We give a description of
the mechanism through which PCA is able to find these features and conclude that
PCA finds the Fourier modes of the system. Lastly, we repeat this analysis using a
Neural Network in a Confusion Learning Scheme.