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Open AccessDissertation10.31274/etd-180810-2809

Instance selection for model-based classifiers

Walter Bennette-2014-01-01

TL;DRAbstract

Aspects of a classifier's training dataset can often make building a helpful and high accuracy classifier difficult. Instance selection addresses some of the issues in a dataset by selecting a subset of the data in such a way that learning from the reduced dataset leads to a better classifier. This work introduces an integer programming formulation of instance selection that relies on column generation techniques to obtain a good solution to the problem. Experimental results show that instance selection improves the usefulness of some classifiers by optimizing the training data so that that the training dataset has easier to learn boundaries between class values. Also included in this paper are two case studies from the Surveillance, Epidemiology, and End Results (SEER) database that further confirm the benefit of instance selection. Overall, results indicate that performing instance selection for a classifier is a competitive classification approach. However, it should be noted that i

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Aspects of a classifier's training dataset can often make building a helpful and high accuracy classifier difficult. Instance selection addresses some of the issues in a dataset by selecting a subset of the data in such a way that learning from the reduced dataset leads to a better classifier. This work introduces an integer programming formulation of instance selection that relies on column generation techniques to obtain a good solution to the problem. Experimental results show that instance selection improves the usefulness of some classifiers by optimizing the training data so that that the training dataset has easier to learn boundaries between class values. Also included in this paper are two case studies from the Surveillance, Epidemiology, and End Results (SEER) database that further confirm the benefit of instance selection. Overall, results indicate that performing instance selection for a classifier is a competitive classification approach. However, it should be noted that i

Keywords

OverfittingClassifier (UML)Computer scienceMachine learningArtificial intelligenceRandom subspace methodSelection (genetic algorithm)Training set

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