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Impact of variability in data on accuracy and diversity of neural network based ensemble classifiers

conference contribution
posted on 2017-12-06, 00:00 authored by CY Chiu, Brijesh Verma, Minmei LiMinmei Li
Ensemble classifiers are very useful tools which can be applied for classification and prediction tasks in many real-world applications. There are many popular ensemble classifier generation techniques including neural network based techniques. However, there are many problems with ensemble classifiers when we apply them to real-world data of different size. This paper presents and investigates an approach for finding the impact of various parameters such as attributes, instances, classes on clusters, accuracy and diversity. The primary aim of this research is to see whether there is any link between these parameters and accuracy and diversity. The secondary aim is to see whether we can find any relationship between number of clusters in ensemble classifier and data variables. A series of experiments has been conducted by using different size of UCI machine learning benchmark datasets and neural network ensemble classifiers.

History

Start Page

1999

End Page

2003

Number of Pages

5

Start Date

2013-01-01

Finish Date

2013-01-01

ISBN-13

9781467361286

Location

Dallas, Texas, USA

Publisher

IEEE

Place of Publication

Piscataway, NJ

Peer Reviewed

  • Yes

Open Access

  • No

External Author Affiliations

Centre for Intelligent and Networked Systems (CINS); Institute for Resource Industries and Sustainability (IRIS);

Era Eligible

  • Yes

Name of Conference

IEEE International Joint Conference on Neural Networks