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Few-shot class-incremental learning (FSCIL) aims to continually learn novel data with limited samples. One of the major challenges is the catastrophic forgetting problem of old knowledge while training the model on new data. To alleviate this problem, recent state-of-the-art methods adopt a well-trained static network with fixed parameters at incremental learning stages to maintain old knowledge. These methods suffer from the poor adaptation of the old model with new knowledge. In this work, a dynamic clustering and recovering network (DyCR) is proposed to tackle the adaptation problem and effectively mitigate the forgetting phenomena on FSCIL tasks. Unlike static FSCIL methods, the proposed DyCR network is dynamic and trainable during the incremental learning stages, which makes the network capable of learning new features and better adapting to novel data. To address the forgetting problem and improve the model performance, a novel orthogonal decomposition mechanism is developed to split the feature embeddings into context and category information. The context part is preserved and utilized to recover old class features in future incremental learning stages, which can mitigate the forgetting problem with a much smaller size of data than saving the raw exemplars. The category part is used to optimize the feature embedding space by moving different classes of samples far apart and squeezing the sample distances within the same classes during the training stage. Experiments show that the DyCR network outperforms existing methods on four benchmark datasets. The code is available at: https://github.com/zichengpan/DyCR.
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http://dx.doi.org/10.1109/TNNLS.2024.3394844 | DOI Listing |
Neural Netw
August 2025
Department of Statistical Sciences, University of Toronto, Ontario, Canada; Department of Computer Science, University of Toronto, Ontario, Canada; Department of Statistics and Data Science, MBZUAI, Abu Dhabi, UAE. Electronic address:
Mitigating catastrophic forgetting remains a fundamental challenge in incremental learning. This paper identifies a key limitation of the widely used softmax cross-entropy loss: the non-identifiability inherent in the standard softmax cross-entropy distillation loss. To address this issue, we propose two complementary strategies: (1) adopting an imbalance-invariant distillation loss to mitigate the adverse effect of imbalanced weights during distillation, and (2) regularizing the original prediction/distillation loss with shift-sensitive alternatives, which render the optimization problem identifiable and proactively prevent imbalance from arising.
View Article and Find Full Text PDFSensors (Basel)
August 2025
School of Mechanical Engineering and Automation, Northeastern University, Shenyang 110819, China.
The extensive deployment of quadrotors in complex environmental missions has revealed a critical challenge: degradation of trajectory tracking accuracy due to time-varying wind disturbances. Conventional model-based controllers struggle to adapt to nonlinear wind field dynamics, while data-driven approaches often suffer from catastrophic forgetting that compromises environmental adaptability. This paper proposes a reinforcement learning framework with continual adaptation capabilities to enhance robust tracking performance for quadrotors operating in dynamic wind fields.
View Article and Find Full Text PDFHealthcare (Basel)
August 2025
Department of Sociology and Anthropology, Ohio University, Athens, OH 45701, USA.
Background/objectives: Tick-borne diseases (TBDs) are a significant public health problem and are expanding to formerly naive areas of the United States, such as the lower Midwest. To counter TBDs, many researchers apply the Knowledge, Attitudes, Practices (KAP) model to identify human-level factors that can be activated in campaigns to prevent tick-bites. These studies are, however, almost exclusively conducted in Lyme disease endemic areas of the US.
View Article and Find Full Text PDFEpigenomics
August 2025
School of Public Health, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
Background: Previous studies reported that altered mitochondrial methylation in Alzheimer's disease (AD), however, whether epigenetic modifications in mitochondrial genomes contribute to preclinical AD remains unclear. This study aimed to investigate mitochondrial methylation changes in individuals with cognitive decline.
Research Design And Methods: We examined whole mitochondrial genome methylation in 50 individuals with mild cognitive impairment (MCI) and 50 individuals without MCI, using bisulfite amplicon sequencing, assessing methylation at 366 Cytosine-guanine oligodeoxynucleotide (CpG) sites.
Z Rheumatol
August 2025
Research Department, Reha Rheinfelden, Salinenstr. 98, 4310, Rheinfelden, Schweiz.
A 46-year-old female patient had been suffering from multiple symptoms such as arthralgia, myalgia, general fatigue, exhaustion, concentration problems, forgetfulness, difficulty falling asleep and sleeping through the night and depression since the age of 27 years old. Rheumatological preliminary findings revealed rheumatoid arthritis with a lack of response to basic treatment as well as secondary fibromyalgia. Supplementary metabolic examinations were carried out in the case of laboratory tests for hypouricemia, which showed massively increased xanthine levels in the urine.
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