Issue 23, 2024

Hyperplane tree-based data mining with a multi-functional memristive crossbar array

Abstract

This study explores the stochastic and binary switching behaviors of a Ta/HfO2/RuO2 memristor to implement a combined data mining approach for outlier detection and data clustering algorithms in a multi-functional memristive crossbar array. The memristor switches stochastically with high state dispersion in the stochastic mode and deterministically between two states with low dispersion in the binary mode, while they can be controlled by varying operating voltages. The stochastic mode facilitates the parallel generation of random hyperplanes in a tree structure, used to compress spatial information of the dataset in the Euclidian space into binary format, still retaining sufficient spatial features. The ensemble effect from multiple trees improved the classification performance. The binary mode facilitates parallel Hamming distance calculation of the binary codes containing spatial information, which measures similarity. These two modes enable efficient implementation of the newly proposed minority-based outlier detection method and modified K-means method on the same hardware. Array measurements and hardware simulations investigate various hyperparameters’ impact and validate the proposed methods with practical datasets. The proposed methods show linear O(n) time complexity and high energy efficiency, consuming <1% of the energy compared to digital computing with conventional algorithms while demonstrating software-comparable performance in both tasks.

Graphical abstract: Hyperplane tree-based data mining with a multi-functional memristive crossbar array

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Article information

Article type
Communication
Submitted
19 Jul 2024
Accepted
25 Sep 2024
First published
02 Oct 2024

Mater. Horiz., 2024,11, 5946-5959

Hyperplane tree-based data mining with a multi-functional memristive crossbar array

S. Cheong, D. H. Shin, S. H. Lee, Y. H. Jang, J. Han, S. K. Shim, J. Han, N. Ghenzi and C. S. Hwang, Mater. Horiz., 2024, 11, 5946 DOI: 10.1039/D4MH00942H

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