Thanks to the tiny storage and efficient execution, hyperdimensional Computing (HDC) is emerging as a lightweight learning framework on resource-constrained hardware. Nonetheless, the existing HDC training relies on various heuristic methods, significantly limiting their inference accuracy. In this paper, we propose a new HDC framework, called LeHDC, which leverages a principled learning approach to improve the model accuracy. Concretely, LeHDC maps the existing HDC framework into an equivalent Binary Neural Network architecture, and employs a corresponding training strategy to minimize the training loss. Experimental validation shows that LeHDC outperforms previous HDC training strategies and can improve on average the inference accuracy over 15% compared to the baseline HDC.
CITATION STYLE
Duan, S., Liu, Y., Ren, S., & Xu, X. (2022). LeHDC: Learning-Based Hyperdimensional Computing Classifier. In Proceedings - Design Automation Conference (pp. 1111–1116). Institute of Electrical and Electronics Engineers Inc. https://doi.org/10.1145/3489517.3530593
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