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A nonparametric framework for inferring orders of categorical data from category-real pairs
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Metadata
Document Title
A nonparametric framework for inferring orders of categorical data from category-real pairs
Author
Amornbunchornvej C, Surasvadi N, Plangprasopchok A, Thajchayapong S
Name from Authors Collection
Scopus Author ID
15056794700
Affiliations
National Science & Technology Development Agency - Thailand; National Electronics & Computer Technology Center (NECTEC)
Type
Article
Source Title
HELIYON
Year
2020
Volume
6
Open Access
Green Submitted, gold, Green Published
Publisher
ELSEVIER SCI LTD
DOI
10.1016/j.heliyon.2020.e05435
Format
Abstract
Given a dataset of careers and incomes, how large a difference of incomes between any pair of careers would be? Given a dataset of travel time records, how long do we need to spend more when choosing a public transportation mode A instead of B to travel? In this paper, we propose a framework that is able to infer orders of categories as well as magnitudes of difference of real numbers between each pair of categories using an estimation statistics framework. Our framework not only reports whether an order of categories exists, but it also reports magnitudes of difference of each consecutive pair of categories in the order. In a large dataset, our framework is scalable well compared with existing frameworks. The proposed framework has been applied to two real-world case studies: 1) ordering careers by incomes from 350,000 households living in Khon Kaen province, Thailand, and 2) ordering sectors by closing prices from 1,060 companies in NASDAQ stock market between years 2000 and 2016. The results of careers ordering demonstrate income inequality among different careers. The stock market results illustrate dynamics of sector domination that can change over time. Our approach is able to be applied in any research area that has category-real pairs. Our proposed Dominant-Distribution Networkprovides a novel approach to gain new insight of analyzing category orders. A software of this framework is available for researchers or practitioners in an R CRAN package: EDOIF.
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Funding Sponsor
office of National Economic and Social Development Council (NESDC) under the National Science and Technology Development Agency (NSTDA), Thailand [P1852296]; National Electronics and Computer Technology Center(NECTEC) under the National Science and Technology Development Agency (NSTDA), Thailand [P1852296]
License
CC BY
Rights
Authors
Publication Source
WOS