DS1 spectrogram: Robust Reasoning and Learning with Brain-Inspired Representations under Hardware-Induced Nonlinearities

Robust Reasoning and Learning with Brain-Inspired Representations under Hardware-Induced Nonlinearities

April 13, 20262604.12079

Authors

Tamoghno Das,Mohsen Imani,William Youngwoo Chung,Hamza Errahmouni Barkam

Abstract

Traditional machine learning depends on high-precision arithmetic and near-ideal hardware assumptions, which is increasingly challenged by variability in aggressively scaled semiconductor devices. Compute-in-memory (CIM) architectures alleviate data-movement bottlenecks and improve energy efficiency yet introduce nonlinear distortions and reliability concerns.

We address these issues with a hardware-aware optimization framework based on Hyperdimensional Computing (HDC), systematically compensating for non-ideal similarity computations in CIM. Our approach formulates encoding as an optimization problem, minimizing the Frobenius norm between an ideal kernel and its hardware-constrained counterpart, and employs a joint optimization strategy for end-to-end calibration of hypervector representations.

Experimental results demonstrate that our method when applied to QuantHD achieves 84% accuracy under severe hardware-induced perturbations, a 48% increase over naive QuantHD under the same conditions. Additionally, our optimization is vital for graph-based HDC reliant on precise variable-binding for interpretable reasoning.

Our framework preserves the accuracy of RelHD on the Cora dataset, achieving a 5.4$\times$ accuracy improvement over naive RelHD under nonlinear environments. By preserving HDC's robustness and symbolic properties, our solution enables scalable, energy-efficient intelligent systems capable of classification and reasoning on emerging CIM hardware.

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