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This project develops a recommender system by solving the matrix completion problem and provides a comparison of different Optimization algorithms, such as the classical Frank Wolfe -and the pairwise variant-, and the Projected Gradient Descent. All three algorithms were trained and tested on three datasets with different levels of sparsity to obtain a richer outcome of the algorithms' performance.

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Project developed during the course of 'Optimization for Data Science' in the University of Padua. The project provides an Implementation of Frank-Wolfe Methods for Recommender Systems in Python.

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