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Hyperdimensional computing: a fast, robust and interpretable paradigm for biological data

Authors :
Stock, Michiel
Boeckaerts, Dimitri
Dewulf, Pieter
Taelman, Steff
Van Haeverbeke, Maxime
Van Criekinge, Wim
De Baets, Bernard
Publication Year :
2024

Abstract

Advances in bioinformatics are primarily due to new algorithms for processing diverse biological data sources. While sophisticated alignment algorithms have been pivotal in analyzing biological sequences, deep learning has substantially transformed bioinformatics, addressing sequence, structure, and functional analyses. However, these methods are incredibly data-hungry, compute-intensive and hard to interpret. Hyperdimensional computing (HDC) has recently emerged as an intriguing alternative. The key idea is that random vectors of high dimensionality can represent concepts such as sequence identity or phylogeny. These vectors can then be combined using simple operators for learning, reasoning or querying by exploiting the peculiar properties of high-dimensional spaces. Our work reviews and explores the potential of HDC for bioinformatics, emphasizing its efficiency, interpretability, and adeptness in handling multimodal and structured data. HDC holds a lot of potential for various omics data searching, biosignal analysis and health applications.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2402.17572
Document Type :
Working Paper