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Main Authors: Książek, Kamil, Jastrzębski, Hubert, Trojan, Bartosz, Pniaczek, Krzysztof, Karp, Michał, Tabor, Jacek
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.14301
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author Książek, Kamil
Jastrzębski, Hubert
Trojan, Bartosz
Pniaczek, Krzysztof
Karp, Michał
Tabor, Jacek
author_facet Książek, Kamil
Jastrzębski, Hubert
Trojan, Bartosz
Pniaczek, Krzysztof
Karp, Michał
Tabor, Jacek
contents The ability of deep learning models to learn continuously is essential for adapting to new data categories and evolving data distributions. In recent years, approaches leveraging frozen feature extractors after an initial learning phase have been extensively studied. Many of these methods estimate per-class covariance matrices and prototypes based on backbone-derived feature representations. Within this paradigm, we introduce FeNeC (Feature Neighborhood Classifier) and FeNeC-Log, its variant based on the log-likelihood function. Our approach generalizes the existing concept by incorporating data clustering to capture greater intra-class variability. Utilizing the Mahalanobis distance, our models classify samples either through a nearest neighbor approach or trainable logit values assigned to consecutive classes. Our proposition may be reduced to the existing approaches in a special case while extending them with the ability of more flexible adaptation to data. We demonstrate that two FeNeC variants achieve competitive performance in scenarios where task identities are unknown and establish state-of-the-art results on several benchmarks.
format Preprint
id arxiv_https___arxiv_org_abs_2503_14301
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle FeNeC: Enhancing Continual Learning via Feature Clustering with Neighbor- or Logit-Based Classification
Książek, Kamil
Jastrzębski, Hubert
Trojan, Bartosz
Pniaczek, Krzysztof
Karp, Michał
Tabor, Jacek
Machine Learning
68T07
I.2.6
The ability of deep learning models to learn continuously is essential for adapting to new data categories and evolving data distributions. In recent years, approaches leveraging frozen feature extractors after an initial learning phase have been extensively studied. Many of these methods estimate per-class covariance matrices and prototypes based on backbone-derived feature representations. Within this paradigm, we introduce FeNeC (Feature Neighborhood Classifier) and FeNeC-Log, its variant based on the log-likelihood function. Our approach generalizes the existing concept by incorporating data clustering to capture greater intra-class variability. Utilizing the Mahalanobis distance, our models classify samples either through a nearest neighbor approach or trainable logit values assigned to consecutive classes. Our proposition may be reduced to the existing approaches in a special case while extending them with the ability of more flexible adaptation to data. We demonstrate that two FeNeC variants achieve competitive performance in scenarios where task identities are unknown and establish state-of-the-art results on several benchmarks.
title FeNeC: Enhancing Continual Learning via Feature Clustering with Neighbor- or Logit-Based Classification
topic Machine Learning
68T07
I.2.6
url https://arxiv.org/abs/2503.14301