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Automatic Construction of Pattern Classifiers Capable of Continuous Incremental Learning and Unlearning Tasks Based on Compact-Sized Probabilistic Neural Network

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This paper proposes a novel approach to pattern classification using a probabilistic neural network model. The strategy is based on a compact-sized probabilistic neural network capable of continuous incremental learning and unlearning tasks. The network is constructed/reconstructed using a simple, one-pass network-growing algorithm with no hyperparameter tuning. Then, given the training dataset, its structure and parameters are automatically determined and can be dynamically varied in continual incremental and decremental learning situations. The algorithm proposed in this work involves no iterative or arduous matrix-based parameter approximations but a simple data-driven updating scheme. Simulation results using nine publicly available databases demonstrate the effectiveness of this approach, showing that compact-sized probabilistic neural networks constructed have a much smaller number of hidden units compared to the original probabilistic neural network model and yet can achieve a similar classification performance to that of multilayer perceptron neural networks in standard classification tasks, while also exhibiting sufficient capability in continuous class incremental learning and unlearning tasks.

Tetsuya Hoya, Shunpei Morita• 2025

Related benchmarks

TaskDatasetResultRank
ClassificationMNIST
Accuracy94.9
61
Classificationpendigits
Accuracy95.05
53
ClassificationLETTER (test)
Accuracy89
45
ClassificationIsolet
Accuracy87.94
11
ClassificationLetter--
6
Multiclass ClassificationOptdigits
Accuracy95.05
5
Classificationionosphere
Accuracy90.07
3
ClassificationAbalone
Accuracy52.78
3
ClassificationSAT
Accuracy80.3
3
ClassificationPENDIGITS (test)
Accuracy92.5
2
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