scholarly journals A Novel Approach to Design Classifiers Using Genetic Programming

2004 ◽  
Vol 8 (2) ◽  
pp. 183-196 ◽  
Author(s):  
D.P. Muni ◽  
N.R. Pal ◽  
J. Das
2012 ◽  
Vol 14 (S1) ◽  
Author(s):  
F Canavan ◽  
S Harding ◽  
L Gustard ◽  
AM Murphy ◽  
JF Miller ◽  
...  

Calphad ◽  
2015 ◽  
Vol 51 ◽  
pp. 35-41 ◽  
Author(s):  
Akbar Asadi Tashvigh ◽  
Farzin Zokaee Ashtiani ◽  
Mohammad Karimi ◽  
Ahmad Okhovat

2014 ◽  
Vol 66 ◽  
pp. 68-81 ◽  
Author(s):  
Somayeh Mousavi ◽  
Akbar Esfahanipour ◽  
Mohammad Hossein Fazel Zarandi

Author(s):  
NIUSVEL ACOSTA-MENDOZA ◽  
ALICIA MORALES-REYES ◽  
HUGO JAIR ESCALANTE ◽  
ANDRÉS GAGO-ALONSO

This paper introduces a novel approach for building heterogeneous ensembles based on genetic programming (GP). Ensemble learning is a paradigm that aims at combining individual classifier's outputs to improve their performance. Commonly, classifiers outputs are combined by a weighted sum or a voting strategy. However, linear fusion functions may not effectively exploit individual models' redundancy and diversity. In this research, a GP-based approach to learn fusion functions that combine classifiers outputs is proposed. Heterogeneous ensembles are aimed in this study, these models use individual classifiers which are based on different principles (e.g. decision trees and similarity-based techniques). A detailed empirical assessment is carried out to validate the effectiveness of the proposed approach. Results show that the proposed method is successful at building very effective classification models, outperforming alternative ensemble methodologies. The proposed ensemble technique is also applied to fuse homogeneous models' outputs with results also showing its effectiveness. Therefore, an in-depth analysis from different perspectives of the proposed strategy to build ensembles is presented with a strong experimental support.


2020 ◽  
Author(s):  
M Iqbal ◽  
Bing Xue ◽  
Harith Al-Sahaf ◽  
Mengjie Zhang

© 2017 IEEE. Genetic programming (GP) is a well-known evolutionary computation technique, which has been successfully used to solve various problems, such as optimization, image analysis, and classification. Transfer learning is a type of machine learning approach that can be used to solve complex tasks. Transfer learning has been introduced to GP to solve complex Boolean and symbolic regression problems with some promise. However, the use of transfer learning with GP has not been investigated to address complex image classification tasks with noise and rotations, where GP cannot achieve satisfactory performance, but GP with transfer learning may improve the performance. In this paper, we propose a novel approach based on transfer learning and GP to solve complex image classification problems by extracting and reusing blocks of knowledge/information, which are automatically discovered from similar as well as different image classification tasks during the evolutionary process. The proposed approach is evaluated on three texture data sets and three office data sets of image classification benchmarks, and achieves better classification performance than the state-of-the-art image classification algorithm. Further analysis on the evolved solutions/trees shows that the proposed approach with transfer learning can successfully discover and reuse knowledge/information extracted from similar or different problems to improve its performance on complex image classification problems.


2019 ◽  
Vol 11 (2) ◽  
pp. 156 ◽  
Author(s):  
Cesar Puente ◽  
Gustavo Olague ◽  
Mattia Trabucchi ◽  
P. Arjona-Villicaña ◽  
Carlos Soubervielle-Montalvo

Vegetation Indices (VIs) represent a useful method for extracting vegetation information from satellite images. Erosion models like the Revised Universal Soil Loss Equation (RUSLE), employ VIs as an input to determine the RUSLE soil Cover factor (C). From the standpoint of soil conservation planning, the C factor is one of the most important RUSLE parameters because it measures the combined effect of all interrelated cover and management variables. Despite its importance, the results are generally incomplete because most indices recognize healthy or green vegetation, but not senescent, dry or dead vegetation, which can also be an important contributor to C. The aim of this research is to propose a novel approach for calculating new VIs that are better correlated with C, using field and satellite information. The approach followed by this research is to state the generation of new VIs in terms of a computer optimization problem and then applying a machine learning technique, named Genetic Programming (GP), which builds new indices by iteratively recombining a set of numerical operators and spectral channels until the best composite operator is found. Experimental results illustrate the efficiency and reliability of this approach to estimate the C factor and the erosion rates for two watersheds in Baja California, Mexico, and Zaragoza, Spain. The synthetic indices calculated using this methodology produce better approximation to the C factor from field data, when compared with state-of-the-art indices, like NDVI and EVI.


Sign in / Sign up

Export Citation Format

Share Document