LGJan 5

hdlib 2.0: Extending Machine Learning Capabilities of Vector-Symbolic Architectures

arXiv:2601.02509v1Has Code
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This work provides incremental improvements to a domain-specific library for researchers and practitioners in hyperdimensional computing, enabling more advanced data-driven modeling.

The authors extended the hdlib Python library to enhance machine learning capabilities for Vector-Symbolic Architectures, adding supervised classification with feature selection, regression, clustering, graph-based learning, and the first implementation of Quantum Hyperdimensional Computing.

Following the initial publication of hdlib, a Python library for designing Vector-Symbolic Architectures (VSA), we introduce a major extension that significantly enhances its machine learning capabilities. VSA, also known as Hyperdimensional Computing, is a computing paradigm that represents and processes information using high-dimensional vectors. While the first version of hdlib established a robust foundation for creating and manipulating these vectors, this update addresses the growing need for more advanced, data-driven modeling within the VSA framework. Here, we present four extensions: significant enhancements to the existing supervised classification model also enabling feature selection, and a new regression model for predicting continuous variables, a clustering model for unsupervised learning, and a graph-based learning model. Furthermore, we propose the first implementation ever of Quantum Hyperdimensional Computing with quantum-powered arithmetic operations and a new Quantum Machine Learning model for supervised learning. hdlib remains open-source and available on GitHub at https://github.com/cumbof/hdlib under the MIT license, and distributed through the Python Package Index (pip install hdlib) and Conda (conda install -c conda-forge hdlib). Documentation and examples of these new features are available on the official Wiki at https://github.com/cumbof/hdlib/wiki.

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