Consensus-based Distributed Quantum Kernel Learning for Speech Recognition
- URL: http://arxiv.org/abs/2409.05770v1
- Date: Mon, 9 Sep 2024 16:33:00 GMT
- Title: Consensus-based Distributed Quantum Kernel Learning for Speech Recognition
- Authors: Kuan-Cheng Chen, Wenxuan Ma, Xiaotian Xu,
- Abstract summary: CDQKL addresses the challenges of scalability and data privacy in centralized quantum kernel learning.
It does this by distributing computational tasks across quantum terminals, which are connected through classical channels.
The distributed nature of CDQKL offers advantages in privacy preservation and computational efficiency, making it suitable for data-sensitive fields.
- Score: 4.1852104039346605
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper presents a Consensus-based Distributed Quantum Kernel Learning (CDQKL) framework aimed at improving speech recognition through distributed quantum computing.CDQKL addresses the challenges of scalability and data privacy in centralized quantum kernel learning. It does this by distributing computational tasks across quantum terminals, which are connected through classical channels. This approach enables the exchange of model parameters without sharing local training data, thereby maintaining data privacy and enhancing computational efficiency. Experimental evaluations on benchmark speech emotion recognition datasets demonstrate that CDQKL achieves competitive classification accuracy and scalability compared to centralized and local quantum kernel learning models. The distributed nature of CDQKL offers advantages in privacy preservation and computational efficiency, making it suitable for data-sensitive fields such as telecommunications, automotive, and finance. The findings suggest that CDQKL can effectively leverage distributed quantum computing for large-scale machine-learning tasks.
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