Publication: Multinomial logit model building via treenet and association rules analysis: An application via a thyroid dataset
Issued Date
2021-02-01
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ISSN
20738994
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2-s2.0-85100813744
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Mahidol University
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SCOPUS
Bibliographic Citation
Symmetry. Vol.13, No.2 (2021), 1-18
Suggested Citation
Pannapa Changpetch Multinomial logit model building via treenet and association rules analysis: An application via a thyroid dataset. Symmetry. Vol.13, No.2 (2021), 1-18. doi:10.3390/sym13020287 Retrieved from: https://repository.li.mahidol.ac.th/handle/123456789/76622
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Title
Multinomial logit model building via treenet and association rules analysis: An application via a thyroid dataset
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Abstract
A model-building framework is proposed that combines two data mining techniques, TreeNet and association rules analysis (ASA) with multinomial logit model building. TreeNet provides plots that play a key role in transforming quantitative variables into better forms for the model fit, whereas ASA is important in finding interactions (low-and high-order) among variables. With the implementation of TreeNet and ASA, new variables and interactions are generated, which serve as candidate predictors in building an optimal multinomial logit model. A real-life example in the context of health care is used to illustrate the major role of these newly generated variables and interactions in advancing multinomial logit modeling to a new level of performance. This method has an explanatory and predictive ability that cannot be achieved using existing methods.