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What is Boosting

Innovations, Algorithms, and Applications in Cognitive Informatics and Natural Intelligence
Is a machine learning ensemble which combines many relatively weak and inaccurate algorithms to construct an accurate dynamic one.
Published in Chapter:
Ensemble Learning via Extreme Learning Machines for Imbalanced Data
Adnan Omer Abuassba (Arab Open University, Palestine), Dezheng O. Zhang (School of Computer and Communication Engineering, University of Science and Technology Beijing, China), and Xiong Luo (School of Computer and Communication Engineering, University of Science and Technology Beijing, China)
DOI: 10.4018/978-1-7998-3038-2.ch004
Abstract
Ensembles are known to reduce the risk of selecting the wrong model by aggregating all candidate models. Ensembles are known to be more accurate than single models. Accuracy has been identified as an important factor in explaining the success of ensembles. Several techniques have been proposed to improve ensemble accuracy. But, until now, no perfect one has been proposed. The focus of this research is on how to create accurate ensemble learning machine (ELM) in the context of classification to deal with supervised data, noisy data, imbalanced data, and semi-supervised data. To deal with mentioned issues, the authors propose a heterogeneous ELM ensemble. The proposed heterogeneous ensemble of ELMs (AELME) for classification has different ELM algorithms, including regularized ELM (RELM) and kernel ELM (KELM). The authors propose new diverse AdaBoost ensemble-based ELM (AELME) for binary and multiclass data classification to deal with the imbalanced data issue.
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More Results
Improving Techniques for Naïve Bayes Text Classifiers
A machine learning meta-learning algorithm for performing supervised learning that creates a single strong learner with a set of weak learner.
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Increasing the Accuracy of Predictive Algorithms: A Review of Ensembles of Classifiers
It is similar in overall structure to bagging, except that it keeps track of the performance of the learning algorithm and concentrates on instances that have not been correctly learned.
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Neural Networks for Automobile Insurance Pricing
Generates multiple models or classifiers (for prediction or classification), and to derive weights to combine the predictions from those models into a single prediction or predicted classification.
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