Task-Driven Transferred Vertical Federated Deep Learning for Multivariate Internet of Things Time-Series Analysis

Author:

Oh Soyeon1ORCID,Lee Minsoo1

Affiliation:

1. Department of Computer Science and Engineering, Ewha Womans University, Seoul 03760, Republic of Korea

Abstract

As big data technologies for IoT services develop, cross-service distributed learning techniques of multivariate deep learning models on IoT time-series data collected from various sources are becoming important. Vertical federated deep learning (VFDL) is used for cross-service distributed learning for multivariate IoT time-series deep learning models. Existing VFDL methods with reasonable performance require a large communication amount. On the other hand, existing communication-efficient VFDL methods have relatively low performance. We propose TT-VFDL-SIM, which can achieve improved performance over centralized training or existing VFDL methods in a communication-efficient manner. TT-VFDL-SIM derives partial tasks from the target task and applies transfer learning to them. In our task-driven transfer approach for the design of TT-VFDL-SIM, the SIM Partial Training mechanism contributes to performance improvement by introducing similar feature spaces in various ways. TT-VFDL-SIM was more communication-efficient than existing VFDL methods and achieved an average of 0.00153 improved MSE and 7.98% improved accuracy than centralized training or existing VFDL methods.

Funder

National Research Foundation of Korea

Publisher

MDPI AG

Reference46 articles.

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