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Fuzzy Regression Model Using Trapezoidal Fuzzy Numbers for Re-auction Data
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 Title & Authors
Fuzzy Regression Model Using Trapezoidal Fuzzy Numbers for Re-auction Data
Kim, Il Kyu; Lee, Woo-Joo; Yoon, Jin Hee; Choi, Seung Hoe;
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 Abstract
Re-auction happens when a bid winner defaults on the payment without making second in-line purchase declaration even after determining sales permission. This is a process of selling under the court's authority. Re-auctioning contract price of real estate is largely influenced by the real estate business, real estate value, and the number of bidders. This paper is designed to establish a statistical model that deals with the number of bidders participating especially in apartment re-auctioning. For these, diverse factors are taken into consideration, including ratio of minimum sales value from the point of selling to re-auctioning, number of bidders at the time of selling, investment value of the real estate, and so forth. As an attempt to consider ambiguous and vague factors, this paper presents a comparatively vague concept of real estate and bidders as trapezoid fuzzy number. Two different methods based on the least squares estimation are applied to fuzzy regression model in this paper. The first method is the estimating method applying substitution after obtaining the estimators of regression coefficients, and the other method is to estimate directly from the estimating procedure without substitution. These methods are provided in application for re-auction data, and appropriate performance measure is also provided to compare the accuracies.
 Keywords
Re-auction;Trapezoidal fuzzy number;Fuzzy regression model;Least squares estimation;
 Language
English
 Cited by
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Logistic Regression for Fuzzy Covariates: Modeling, Inference, and Applications, International Journal of Fuzzy Systems, 2016  crossref(new windwow)
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