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arxiv: 2308.00685 · v1 · pith:O65HNHR7 · submitted 2023-08-01 · cs.LG · cs.ET

Learning from Hypervectors: A Survey on Hypervector Encoding

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classification cs.LG cs.ET
keywords encodinghypervectorhypervectorsgenerationsurveycomputinglearningliterature
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Hyperdimensional computing (HDC) is an emerging computing paradigm that imitates the brain's structure to offer a powerful and efficient processing and learning model. In HDC, the data are encoded with long vectors, called hypervectors, typically with a length of 1K to 10K. The literature provides several encoding techniques to generate orthogonal or correlated hypervectors, depending on the intended application. The existing surveys in the literature often focus on the overall aspects of HDC systems, including system inputs, primary computations, and final outputs. However, this study takes a more specific approach. It zeroes in on the HDC system input and the generation of hypervectors, directly influencing the hypervector encoding process. This survey brings together various methods for hypervector generation from different studies and explores the limitations, challenges, and potential benefits they entail. Through a comprehensive exploration of this survey, readers will acquire a profound understanding of various encoding types in HDC and gain insights into the intricate process of hypervector generation for diverse applications.

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  1. XL-HD: Extended Learning in Hyperdimensional Computing via Deterministic Projections for In-Memory Accelerators

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    XL-HD uses fixed Sobol projections and real-to-binary prototype optimization to deliver competitive accuracy on MNIST, UCIHAR, and ISOLET with a 0.395 mm² IMC engine at 0.40 μJ per inference.