Search Strategies for Ensemble Feature Selection in Medical Diagnostics
Citation:
Tsymbal, Alexey; Cunningham, Padraig. 'Search Strategies for Ensemble Feature Selection in Medical Diagnostics'. - Dublin, Trinity College Dublin, Department of Computer Science, TCD-CS-2003-22, 2003, pp6Download Item:
Abstract:
The goal of this paper is to propose, evaluate, and compare four search strategies for
ensemble feature selection, and to consider their application to medical diagnostics, with a
focus on the problem of the classification of acute abdominal pain. Ensembles of learnt models
constitute one of the main current directions in machine learning and data mining. Ensembles
allow us to get higher accuracy, sensitivity, and specificity, which are often not achievable
with single models. One technique, which proved to be effective for ensemble construction, is
feature selection. Lately, several strategies for ensemble feature selection were proposed,
including random subspacing, hill-climbing-based search, and genetic search. In this paper,
we propose two new sequential-search-based strategies for ensemble feature selection, and
evaluate them, constructing ensembles of simple Bayesian classifiers for the problem of acute
abdominal pain classification. We compare the search strategies with regard to achieved
accuracy, sensitivity, specificity, and the average number of features they select.
Sponsor
Grant Number
Science Foundation Ireland
Author: Tsymbal, Alexey; Cunningham, Padraig
Publisher:
Trinity College Dublin, Department of Computer ScienceType of material:
Technical ReportCollections
Series/Report no:
Computer Science Technical ReportTCD-CS-2003-22
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