TAZ-TFG-2018-517


Machine Learning: Binary Non-negative Matrix Factorization

Yus López, Diego
Lücke, Jörg (dir.)

Universidad de Zaragoza, CIEN, 2015

Graduado en Física

Resumen: This bachelor thesis theoretically derives and implements an unsupervised probabilistic generative model called Binary Non-Negative Matrix Factorization. It is a simplification of the standard Non-Negative Matrix Factorization where the factorization into two matrices is restricted to one of them having only binary components instead of continuous components. This simplifies the computation making it exactly solvable while keeping most of the learning capabilities and connects the algorithm to a modified version of Binary Sparse Coding. The learning phase of the model is performed using the EM algorithm, an iterative method that maximizes the likelihood function with respect to the parameters to be learned in a two-step process. The model is tested on artificial data and it is shown to learn the hidden parameters on these simple data although it fails to work properly when applied to real data.

Tipo de Trabajo Académico: Trabajo Fin de Grado

Creative Commons License



El registro pertenece a las siguientes colecciones:
Trabajos académicos > Trabajos Académicos por Centro > Facultad de Ciencias
Trabajos académicos > Trabajos fin de grado



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