Maya-Smriti: Episodic Memory as a Biological Prior for Class-Incremental Learning in Affective Spiking Neural Networks
Birla Institute of Technology and Science, Pilani
Abstract
We present Maya-Smriti, extending the Maya affective SNN architecture to Class-Incremental Learning (CIL) on Split-CIFAR-10 through a minimal class-wise ring buffer with interleaved replay. We introduce Buddhi — discriminative intellect — as a fifth affective dimension governing Vairagya consolidation rate, and identify Ahamkara — ego-driven task attachment — as the failure mode responsible for affective mechanism collapse under CIL without replay. A five-condition ablation study establishes that Maya mechanisms alone at CIL (AA=17.77%) produce performance indistinguishable from the SGD baseline (AA=17.98%), while full Maya-Smriti with replay achieves AA=31.84%, BWT=−68.36%, outperforming replay-only by +0.77%…
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1Topics & keywords
- Episodic memory
- Discriminative model
- Task (project management)
- Margin (machine learning)
- Memory consolidation
- Bridging (networking)
- Artificial neural network
- Sequence learning
- Reduced inequalities