Object

Title: A survey of distributed data classification withboosting

Abstract:

Distributed data classification is becoming more and more actual nowadays. The growing data and it’s decentralized nature forces to analyze data in distributed fashion. Many conventional algorithms tackle this problem well in case of centralized data, which differs from the case of distributed data. In distributed case may arise the problem of data privacy. We survey the distributed learning frameworks for classification and modifications of boosting algorithms.

Degree name:

PhD candidate

Publisher:

ITHEA

Date of publication:

2019

Identifier:

oai:noad.sci.am:135910

ISSN:

1310-0513

Language:

English

Journal or Publication Title:

Information Theories and Applications

Volume:

26

Number:

2

URL:


Additional Information:

mkrthcyan.karlen@icloud.com

Affiliation:

Institute for Informatics and Automation Problems

Country:

Armenia

Object collections:

Last modified:

Mar 3, 2021

In our library since:

Jul 27, 2020

Number of object content hits:

60

All available object's versions:

https://noad.sci.am/publication/149503

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