HEAL: Brain-inspired Hyperdimensional Efficient Active Learning
Yang Ni, Zhuowen Zou, Wenjun Huang, Hanning Chen, William Youngwoo, Chung, Samuel Cho, Ranganath Krishnan, Pietro Mercati, Mohsen Imani

TL;DR
HEAL introduces a brain-inspired active learning framework for hyperdimensional computing that enhances data efficiency and reduces annotation costs without relying on neural network gradients.
Contribution
It proposes a novel uncertainty estimation method for HDC classifiers and a diversity-guided sample selection approach, enabling efficient active learning for HDC models.
Findings
HEAL outperforms baseline active learning methods in quality.
Achieves up to 40,000 times faster acquisition runtime.
Operates without gradient or probabilistic computations.
Abstract
Drawing inspiration from the outstanding learning capability of our human brains, Hyperdimensional Computing (HDC) emerges as a novel computing paradigm, and it leverages high-dimensional vector presentation and operations for brain-like lightweight Machine Learning (ML). Practical deployments of HDC have significantly enhanced the learning efficiency compared to current deep ML methods on a broad spectrum of applications. However, boosting the data efficiency of HDC classifiers in supervised learning remains an open question. In this paper, we introduce Hyperdimensional Efficient Active Learning (HEAL), a novel Active Learning (AL) framework tailored for HDC classification. HEAL proactively annotates unlabeled data points via uncertainty and diversity-guided acquisition, leading to a more efficient dataset annotation and lowering labor costs. Unlike conventional AL methods that only…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Ferroelectric and Negative Capacitance Devices
MethodsSparse Evolutionary Training
