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Adaptive boosting for ordinal target variables using neural networks

Authors
Um, InsungLee, GeonseokLee, Kichun
Issue Date
Jun-2023
Publisher
WILEY
Keywords
adaptive boosting; neural networks; ordinal classification
Citation
STATISTICAL ANALYSIS AND DATA MINING, v.16, no.3, pp.257 - 271
Indexed
SCIE
SCOPUS
Journal Title
STATISTICAL ANALYSIS AND DATA MINING
Volume
16
Number
3
Start Page
257
End Page
271
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/191071
DOI
10.1002/sam.11613
ISSN
1932-1864
Abstract
Boosting has proven its superiority by increasing the diversity of base classifiers, mainly in various classification problems. In reality, target variables in classification often are formed by numerical variables, in possession of ordinal information. However, existing boosting algorithms for classification are unable to reflect such ordinal target variables, resulting in non-optimal solutions. In this paper, we propose a novel algorithm of ordinal encoding adaptive boosting (AdaBoost) using a multi-dimensional encoding scheme for ordinal target variables. Extending an original binary-class AdaBoost, the proposed algorithm is equipped with a multi-class exponential loss function. We show that it achieves the Bayes classifier and establishes forward stagewise additive modeling. We demonstrate the performance of the proposed algorithm with a base learner as a neural network. Our experiments show that it outperforms existing boosting algorithms in various ordinal datasets.
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