arXiv (Cornell University)
Resource-Efficient Federated Hyperdimensional Computing
June 2023 • Nikita Zeulin, Olga Galinina, Nageen Himayat, Sergey Andreev
In conventional federated hyperdimensional computing (HDC), training larger models usually results in higher predictive performance but also requires more computational, communication, and energy resources. If the system resources are limited, one may have to sacrifice the predictive performance by reducing the size of the HDC model. The proposed resource-efficient federated hyperdimensional computing (RE-FHDC) framework alleviates such constraints by training multiple smaller independent HDC sub-models and refini…