Sorting big data by revealed preference with application to college ranking

Abstract When ranking big data observations such as colleges in the United States, diverse consumers reveal heterogeneous preferences. The objective of this paper is to sort out a linear ordering for these observations and to recommend strategies to improve their relative positions in the ranking. A...

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Main Author: Xingwei Hu
Format: Article
Language:English
Published: SpringerOpen 2020-04-01
Series:Journal of Big Data
Subjects:
Online Access:http://link.springer.com/article/10.1186/s40537-020-00300-1
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spelling doaj-53a76455abba4b91a9c4fb7bb0036dd42020-11-25T02:10:01ZengSpringerOpenJournal of Big Data2196-11152020-04-017112610.1186/s40537-020-00300-1Sorting big data by revealed preference with application to college rankingXingwei Hu0International Monetary FundAbstract When ranking big data observations such as colleges in the United States, diverse consumers reveal heterogeneous preferences. The objective of this paper is to sort out a linear ordering for these observations and to recommend strategies to improve their relative positions in the ranking. A properly sorted solution could help consumers make the right choices, and governments make wise policy decisions. Previous researchers have applied exogenous weighting or multivariate regression approaches to sort big data objects, ignoring their variety and variability. By recognizing the diversity and heterogeneity among both the observations and the consumers, we instead apply endogenous weighting to these contradictory revealed preferences. The outcome is a consistent steady-state solution to the counterbalance equilibrium within these contradictions. The solution takes into consideration the spillover effects of multiple-step interactions among the observations. When information from data is efficiently revealed in preferences, the revealed preferences greatly reduce the volume of the required data in the sorting process. The employed approach can be applied in many other areas, such as sports team ranking, academic journal ranking, voting, and real effective exchange rates.http://link.springer.com/article/10.1186/s40537-020-00300-1Revealed preferenceAuthority distributionEndogenous weightingCollege rankingBig dataMatching game
collection DOAJ
language English
format Article
sources DOAJ
author Xingwei Hu
spellingShingle Xingwei Hu
Sorting big data by revealed preference with application to college ranking
Journal of Big Data
Revealed preference
Authority distribution
Endogenous weighting
College ranking
Big data
Matching game
author_facet Xingwei Hu
author_sort Xingwei Hu
title Sorting big data by revealed preference with application to college ranking
title_short Sorting big data by revealed preference with application to college ranking
title_full Sorting big data by revealed preference with application to college ranking
title_fullStr Sorting big data by revealed preference with application to college ranking
title_full_unstemmed Sorting big data by revealed preference with application to college ranking
title_sort sorting big data by revealed preference with application to college ranking
publisher SpringerOpen
series Journal of Big Data
issn 2196-1115
publishDate 2020-04-01
description Abstract When ranking big data observations such as colleges in the United States, diverse consumers reveal heterogeneous preferences. The objective of this paper is to sort out a linear ordering for these observations and to recommend strategies to improve their relative positions in the ranking. A properly sorted solution could help consumers make the right choices, and governments make wise policy decisions. Previous researchers have applied exogenous weighting or multivariate regression approaches to sort big data objects, ignoring their variety and variability. By recognizing the diversity and heterogeneity among both the observations and the consumers, we instead apply endogenous weighting to these contradictory revealed preferences. The outcome is a consistent steady-state solution to the counterbalance equilibrium within these contradictions. The solution takes into consideration the spillover effects of multiple-step interactions among the observations. When information from data is efficiently revealed in preferences, the revealed preferences greatly reduce the volume of the required data in the sorting process. The employed approach can be applied in many other areas, such as sports team ranking, academic journal ranking, voting, and real effective exchange rates.
topic Revealed preference
Authority distribution
Endogenous weighting
College ranking
Big data
Matching game
url http://link.springer.com/article/10.1186/s40537-020-00300-1
work_keys_str_mv AT xingweihu sortingbigdatabyrevealedpreferencewithapplicationtocollegeranking
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