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Fardin Akhlaghian Tab

Fardin Akhlaghian Tab

Academic rank: Associate Professor
ORCID:
Education: PhD.
ScopusId: 9635715500
HIndex:
Faculty: Faculty of Engineering
Address:
Phone:

Research

Title
Self-supervised semi-supervised nonnegative matrix factorization for data clustering
Type
JournalPaper
Keywords
Nonnegative matrix factorization, Semi-supervised learning, Self-supervised learning, Ensemble clustering
Year
2023
Journal PATTERN RECOGNITION
DOI
Researchers Jovan Chavoshinejad ، Seyed Amjad Seyedi ، Fardin Akhlaghian Tab ، Navid Salahian

Abstract

Semi-supervised nonnegative matrix factorization exploits the strengths of matrix factorization in suc- cessfully learning part-based representation and is also able to achieve high learning performance when facing a scarcity of labeled data and a large amount of unlabeled data. Its major challenge lies in how to learn more discriminative representations from limited labeled data. Furthermore, self-supervised learn- ing has been proven very effective at learning representations from unlabeled data in various learning tasks. Recent research works focus on utilizing the capacity of self-supervised learning to enhance semi- supervised learning. In this paper, we design an effective Self-Supervised Semi-Supervised Nonnegative Matrix Factorization (S 4 NMF) in a semi-supervised clustering setting. The S 4 NMF directly extracts a con- sensus result from ensembled NMFs with similarity and dissimilarity regularizations. In an iterative pro- cess, this self-supervisory information will be fed back to the proposed model to boost semi-supervised learning and form more distinct clusters. The proposed iterative algorithm is used to solve the given problem, which is defined as an optimization problem with a well-formulated objective function. In ad- dition, the theoretical and empirical analyses investigate the convergence of the proposed optimization algorithm. To demonstrate the effectiveness of the proposed model in semi-supervised clustering, we con- duct extensive experiments on standard benchmark datasets. The source code for reproducing our results can be found at https://github.com/ChavoshiNejad/S4NMF.