Memristive Crossbar Array‐Based Probabilistic Graph Modeling

Author:

Jang Yoon Ho1ORCID,Lee Soo Hyung1ORCID,Han Janguk1ORCID,Cheong Sunwoo1ORCID,Shim Sung Keun1,Han Joon‐Kyu2ORCID,Ryoo Seung Kyu1,Hwang Cheol Seong1ORCID

Affiliation:

1. Department of Materials Science and Engineering and Inter‐university Semiconductor Research Center College of Engineering Seoul National University Seoul 08826 Republic of Korea

2. System Semiconductor Engineering and Department of Electronic Engineering Sogang University 35 Baekbeom‐ro, Mapo‐gu Seoul 04107 Republic of Korea

Abstract

AbstractModern graph datasets with structural complexity and uncertainties due to incomplete information or data variability require advanced modeling techniques beyond conventional graph models. This study introduces a memristive crossbar array (CBA)‐based probabilistic graph model (C‐PGM) utilizing Cu0.3Te0.7/HfO2/Pt memristors, which exhibit probabilistic switching, self‐rectifying, and memory characteristics. C‐PGM addresses the complexities and uncertainties inherent in structural graph data across various domains, leveraging the probabilistic nature of memristors. C‐PGM relies on the device‐to‐device variation across multiple memristive CBAs, overcoming the limitations of previous approaches that rely on sequential operations, which are slower and have a reliability concern due to repeated switching. This new approach enables the fast processing and massive implementation of probabilistic units at the expense of chip area. In this study, the hardware‐based C‐PGM feasibly expresses small‐scale probabilistic graphs and shows minimal error in aggregate probability calculations. The probability calculation capabilities of C‐PGM are applied to steady‐state estimation and the PageRank algorithm, which is implemented on a simulated large‐scale C‐PGM. The C‐PGM‐based steady‐state estimation and PageRank algorithm demonstrate comparable accuracy to conventional methods while significantly reducing computational costs.

Funder

National Research Foundation of Korea

Publisher

Wiley

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