An Evolutionary Approach for Creating of Diverse Classifier Ensembles

08/23/2022
by   Alvaro R. Ferreira Jr, et al.
0

Classification is one of the most studied tasks in data mining and machine learning areas and many works in the literature have been presented to solve classification problems for multiple fields of knowledge such as medicine, biology, security, and remote sensing. Since there is no single classifier that achieves the best results for all kinds of applications, a good alternative is to adopt classifier fusion strategies. A key point in the success of classifier fusion approaches is the combination of diversity and accuracy among classifiers belonging to an ensemble. With a large amount of classification models available in the literature, one challenge is the choice of the most suitable classifiers to compose the final classification system, which generates the need of classifier selection strategies. We address this point by proposing a framework for classifier selection and fusion based on a four-step protocol called CIF-E (Classifiers, Initialization, Fitness function, and Evolutionary algorithm). We implement and evaluate 24 varied ensemble approaches following the proposed CIF-E protocol and we are able to find the most accurate approach. A comparative analysis has also been performed among the best approaches and many other baselines from the literature. The experiments show that the proposed evolutionary approach based on Univariate Marginal Distribution Algorithm (UMDA) can outperform the state-of-the-art literature approaches in many well-known UCI datasets.

READ FULL TEXT
research
08/13/2014

A Classifier-free Ensemble Selection Method based on Data Diversity in Random Subspaces

The Ensemble of Classifiers (EoC) has been shown to be effective in impr...
research
06/04/2014

Learning to Diversify via Weighted Kernels for Classifier Ensemble

Classifier ensemble generally should combine diverse component classifie...
research
08/10/2023

A Comparative Assessment of Multi-view fusion learning for Crop Classification

With a rapidly increasing amount and diversity of remote sensing (RS) da...
research
08/20/2013

Influences Combination of Multi-Sensor Images on Classification Accuracy

This paper focuses on two main issues; first one is the impact of combin...
research
03/11/2018

Multiple Instance Choquet Integral Classifier Fusion and Regression for Remote Sensing Applications

In classifier (or regression) fusion the aim is to combine the outputs o...
research
01/30/2020

A tutorial on ensembles and deep learning fusion with MNIST as guiding thread: A complex heterogeneous fusion scheme reaching 10 digits error

Ensemble methods have been widely used for improving the results of the ...

Please sign up or login with your details

Forgot password? Click here to reset