نتایج جستجو برای: ensemble classifiers

تعداد نتایج: 65315  

Journal: :International Journal of Modern Education and Computer Science 2013

2001
Alexey Tsymbal Seppo Puuronen Iryna Skrypnyk

Recent research has proved the benefits of the use of ensembles of classifiers for classification problems. Ensembles of classifiers can be constructed by a number of methods manipulating the training set with the purpose of creating a set of diverse and accurate base classifiers. One way to manipulate the training set for construction of the base classifiers is to apply feature selection. In t...

2011
Frederic T. Stahl Max Bramer

Ensemble learning techniques generate multiple classifiers, so called base classifiers, whose combined classification results are used in order to increase the overall classification accuracy. In most ensemble classifiers the base classifiers are based on the Top Down Induction of Decision Trees (TDIDT) approach. However, an alternative approach for the induction of rule based classifiers is th...

Journal: :journal of advances in computer research 0
mohammad mohammadi department of computer engineering, nourabad mamasani branch, islamic azad university, nourabad mamasani, iran hamid parvin department of computer engineering, nourabad mamasani branch, islamic azad university, nourabad mamasani, iran eshagh faraji department of computer engineering, nourabad mamasani branch, islamic azad university, nourabad mamasani, iran sajad parvin department of computer engineering, nourabad mamasani branch, islamic azad university, nourabad mamasani, iran

the article suggests an algorithm for regular classifier ensemble methodology. the proposed methodology is based on possibilistic aggregation to classify samples. the argued method optimizes an objective function that combines environment recognition, multi-criteria aggregation term and a learning term. the optimization aims at learning backgrounds as solid clusters in subspaces of the high-dim...

Journal: :Pattern Recognition 2007
Qinghua Hu Daren Yu Zongxia Xie Xiaodong Li

Ensemble learning is attracting much attention from pattern recognition and machine learning domains for good generalization. Both theoretical and experimental researches show that combining a set of accurate and diverse classifiers will lead to a powerful classification system. An algorithm, called FS-PP-EROS, for selective ensemble of rough subspaces is proposed in this paper. Rough set-based...

2010
Víctor Soto Gonzalo Martínez-Muñoz Daniel Hernández-Lobato Alberto Suárez

This article introduces a double pruning algorithm that can be used to reduce the storage requirements, speed-up the classification process and improve the performance of parallel ensembles. A key element in the design of the algorithm is the estimation of the class label that the ensemble assigns to a given test instance by polling only a fraction of its classifiers. Instead of applying this f...

2001
Adele Cutler Guohua Zhao

Ensemble classifiers originated in the machine learning community. They work by fitting many individual classifiers and combining them by weighted or unweighted voting. The ensemble classifier is often much more accurate than the individual classifiers from which it is built. In fact, ensemble classifiers are among the most accurate general-purpose classifiers available. We introduce a new ense...

Journal: :IEEE Transactions on Information Forensics and Security 2012

Journal: :Advances in Data Analysis and Classification 2016

Journal: :IEEE Transactions on Neural Networks 2011

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