Adaptive Nonnegative Matrix Factorization and Measure Comparisons for Recommender Systems
Gianna M. Del Corso, Francesco Romani

TL;DR
This paper introduces adaptive and prior-enforced nonnegative matrix factorization algorithms for recommender systems, demonstrating their effectiveness through comprehensive comparisons on multiple datasets and evaluation metrics.
Contribution
It proposes novel adaptive and prior-based NMF algorithms and combines strategies to improve missing rating reconstruction in recommender systems.
Findings
Adaptive NMF outperforms classical methods on several datasets.
Mixed strategies enhance accuracy and efficiency.
Regularization schemes improve reconstruction quality.
Abstract
The Nonnegative Matrix Factorization (NMF) of the rating matrix has shown to be an effective method to tackle the recommendation problem. In this paper we propose new methods based on the NMF of the rating matrix and we compare them with some classical algorithms such as the SVD and the regularized and unregularized non-negative matrix factorization approach. In particular a new algorithm is obtained changing adaptively the function to be minimized at each step, realizing a sort of dynamic prior strategy. Another algorithm is obtained modifying the function to be minimized in the NMF formulation by enforcing the reconstruction of the unknown ratings toward a prior term. We then combine different methods obtaining two mixed strategies which turn out to be very effective in the reconstruction of missing observations. We perform a thoughtful comparison of different methods on the basis of…
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