Federated learning method based on hierarchical tensor decomposition in edge calculation

A tensor decomposition and edge computing technology, which is applied in the field of federated learning based on hierarchical tensor decomposition in edge computing, and can solve problems such as reducing communication bandwidth, low precision values, and data leakage.

Active Publication Date: 2020-03-24
FUZHOU UNIV
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AI Technical Summary

Problems solved by technology

However, training deep learning models on edge devices has the following major disadvantages: On the one hand, due to the growing awareness of data security and user privacy, uploading local datasets on e

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  • Federated learning method based on hierarchical tensor decomposition in edge calculation
  • Federated learning method based on hierarchical tensor decomposition in edge calculation
  • Federated learning method based on hierarchical tensor decomposition in edge calculation

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Embodiment Construction

[0070] The technical solution of the present invention will be specifically described below in conjunction with the accompanying drawings.

[0071] The present invention provides a federated learning method based on layered tensor decomposition in edge computing, comprising the following steps:

[0072] Step S1, designing a deep neural network sharing model in the cloud;

[0073] Step S2, compress the deep neural network shared model designed in step S1 according to the layered tensor decomposition method to obtain a layered shared model;

[0074] Step S3, designing a forward propagation algorithm and a back propagation algorithm corresponding to the layered sharing model;

[0075] Step S4, initialize the layered sharing model on the cloud and send it to the edge nodes participating in the training;

[0076] Step S5, the edge nodes participating in the training use the local data set, and learn the layered sharing model obtained in step S2 according to the forward propagatio...

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Abstract

The invention relates to a federated learning method based on hierarchical tensor decomposition in edge calculation. The federated learning method comprises the steps: S1, designing an effective deepneural network sharing model at a cloud end; S2, compressing the designed sharing model according to a hierarchical tensor decomposition method to obtain a hierarchical sharing model; S3, designing aforward propagation algorithm and a reverse propagation algorithm corresponding to the hierarchical sharing model; S4, initializing the hierarchical sharing model at the cloud and issuing the hierarchical sharing model to edge nodes participating in training; S5, learning the hierarchical sharing model obtained in the step S2 by the edge nodes participating in training according to the algorithm designed in the step S3 by using the local data set; and S6, aggregating the edge models at the cloud in an average aggregation mode. According to the federated learning method, distributed training ofthe shared model is realized on the premise of protecting user privacy, and the demand for network bandwidth during distributed training is reduced, and the communication energy consumption of edge nodes is reduced.

Description

technical field [0001] The invention relates to a federated learning method based on hierarchical tensor decomposition in edge computing Background technique [0002] With the rapid development of Internet of Things technology and its wide application in industrial fields such as smart factories, industrial automation, and intelligent manufacturing, Industrial Internet of Things technology has attracted extensive attention from academia and industry. In the Industrial Internet of Things, there is an explosion of data generated by various connected devices. However, it is impractical to directly transmit large amounts of data to remote cloud platforms for further processing and analysis, which may cause severe network congestion and unbearable transmission delays. In recent years, with the rise of edge computing technology, edge devices (nodes) such as sensors and factory gateways have the ability to store, process and analyze local data. In addition, edge devices can colla...

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Application Information

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IPC IPC(8): G06N3/04G06N3/08G06N20/00G06F9/50
CPCG06N3/084G06N20/00G06F9/5072G06N3/048G06N3/045Y02D10/00
Inventor 郑海峰高敏马金凤冯心欣
Owner FUZHOU UNIV
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