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research
Identify error-sensitive patterns by decision tree
Authors
E Alpaydin
IA Gheyas
+13 more
IH Witten
J Han
JR Quinlan
L Breiman
L Breiman
L Breiman
LI Kuncheva
M Hall
P Yang
RE Schapire
S Tabakhi
W Wu
Y Saeys
Publication date
1 January 2015
Publisher
'Springer Science and Business Media LLC'
Doi
Cite
Abstract
© Springer International Publishing Switzerland 2015. When errors are inevitable during data classification, finding a particular part of the classification model which may be more susceptible to error than others, when compared to finding an Achilles’ heel of the model in a casual way, may help uncover specific error-sensitive value patterns and lead to additional error reduction measures. As an initial phase of the investigation, this study narrows the scope of problem by focusing on decision trees as a pilot model, develops a simple and effective tagging method to digitize individual nodes of a binary decision tree for node-level analysis, to link and track classification statistics for each node in a transparent way, to facilitate the identification and examination of the potentially “weakest” nodes and error-sensitive value patterns in decision trees, to assist cause analysis and enhancement development. This digitization method is not an attempt to re-develop or transform the existing decision tree model, but rather, a pragmatic node ID formulation that crafts numeric values to reflect the tree structure and decision making paths, to expand post-classification analysis to detailed node-level. Initial experiments have shown successful results in locating potentially high-risk attribute and value patterns; this is an encouraging sign to believe this study worth further exploration
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OPUS - University of Technology Sydney
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oai:opus.lib.uts.edu.au:10453/...
Last time updated on 13/02/2017
Crossref
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info:doi/10.1007%2F978-3-319-2...
Last time updated on 01/04/2019