Communication-efficient Quantum Algorithm for Distributed Machine Learning
Abstract
The growing demands of remote detection and increasing amount of training data make distributed machine learning under communication constraints a critical issue. This work provides a communication-efficient quantum algorithm that tackles two traditional machine learning problems, the least-square fitting and softmax regression problem, in the scenario where the data set is distributed across two parties. Our quantum algorithm finds the model parameters with a communication complexity of , where is the number of data points and is the bound on parameter errors. Compared to classical algorithms and other quantum algorithms that achieve the same output task, our algorithm provides a communication advantage in the scaling with the data volume. The building block of our algorithm, the quantum-accelerated estimation of distributed inner product and Hamming distance, could be further applied to various tasks in distributed machine learning to accelerate communication.
Cite
@article{arxiv.2209.04888,
title = {Communication-efficient Quantum Algorithm for Distributed Machine Learning},
author = {Hao Tang and Boning Li and Guoqing Wang and Haowei Xu and Changhao Li and Ariel Barr and Paola Cappellaro and Ju Li},
journal= {arXiv preprint arXiv:2209.04888},
year = {2023}
}