Henry, Akhila and Nagaraj, Nithin
(2025)
Hyperparameter-Free Neurochaos Learning Algorithm for Classification.
arXiv:2508.01478 [cs.LG].
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| Abstract: |
Neurochaos Learning (NL) is a brain-inspired classification framework that employs chaotic dynamics to extract features from input data and yields state-of-the-art performance on classification
tasks. However, NL requires the tuning of multiple hyperparameters and computing of four chaotic
features per input sample. In this paper, we propose AutochaosNet – a novel, hyperparameter-free
variant of the NL algorithm that eliminates the need for both training and parameter optimization.
AutochaosNet leverages a universal chaotic sequence derived from the Champernowne constant
and uses the input stimulus to define firing time bounds for feature extraction. Two simplified
variants—TM AutochaosNet and TM-FR AutochaosNet—are evaluated against existing NL architecture - ChaosNet. Our results demonstrate that AutochaosNet achieves competitive or superior
classification performance while significantly reducing training time due to reduced computational
effort. In addition to eliminating training and hyperparameter tuning, AutochaosNet exhibits excellent
generalisation capabilities, making it a scalable and efficient choice for real-world classification tasks.
Future work will focus on identifying universal orbits under various chaotic maps and incorporating
them into the NL framework to further enhance performance. |
| Item Type: |
Journal Paper
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| Subjects: |
School of Natural and Engineering Sciences > Nonlinear Dynamics |
| Divisions: |
Schools > Natural Sciences and Engineering |
| Date Deposited: |
27 Apr 2026 13:42 |
| Last Modified: |
27 Apr 2026 13:42 |
| Official URL: |
https://arxiv.org/abs/2508.01478 |
| Related URLs: |
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| Funders: |
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| Projects: |
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| DOI: |
https://doi.org/10.48550/arXiv.2508.01478 |
| URI: |
http://eprints.nias.res.in/id/eprint/3322 |
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