Online Supervised Learning with Distributed Features over Multiagent System

Complexity 2020:1-10 (2020)
  Copy   BIBTEX

Abstract

Most current online distributed machine learning algorithms have been studied in a data-parallel architecture among agents in networks. We study online distributed machine learning from a different perspective, where the features about the same samples are observed by multiple agents that wish to collaborate but do not exchange the raw data with each other. We propose a distributed feature online gradient descent algorithm and prove that local solution converges to the global minimizer with a sublinear rate O 2 T. Our algorithm does not require exchange of the primal data or even the model parameters between agents. Firstly, we design an auxiliary variable, which implies the information of the global features, and estimate at each agent by dynamic consensus method. Then, local parameters are updated by online gradient descent method based on local data stream. Simulations illustrate the performance of the proposed algorithm.

Links

PhilArchive



    Upload a copy of this work     Papers currently archived: 92,150

External links

Setup an account with your affiliations in order to access resources via your University's proxy server

Through your library

Similar books and articles

Model theory and machine learning.Hunter Chase & James Freitag - 2019 - Bulletin of Symbolic Logic 25 (3):319-332.
Human Semi-Supervised Learning.Bryan R. Gibson, Timothy T. Rogers & Xiaojin Zhu - 2013 - Topics in Cognitive Science 5 (1):132-172.
Online design education: Searching for a middle ground.Katja Fleischmann - 2020 - Arts and Humanities in Higher Education 19 (1):36-57.
Where Do Features Come From?Geoffrey Hinton - 2014 - Cognitive Science 38 (6):1078-1101.
An Over-view of Online Recruitment: The Case of Public and.Nuran Ally Mwasha - 2013 - European Journal of Business and Management 5 (32):11-21.

Analytics

Added to PP
2020-12-22

Downloads
71 (#231,757)

6 months
66 (#72,790)

Historical graph of downloads
How can I increase my downloads?

Author's Profile

Bing He
Fudan University

Citations of this work

No citations found.

Add more citations

References found in this work

No references found.

Add more references