4.4 Article

Mathematical programming approach to formulate intuitionistic fuzzy regression model based on least absolute deviations

Related references

Note: Only part of the references are listed.
Article Computer Science, Artificial Intelligence

Interval Type-2 A-Intuitionistic Fuzzy Logic for Regression Problems

Imo Eyoh et al.

IEEE TRANSACTIONS ON FUZZY SYSTEMS (2018)

Article Management

Approach based on fuzzy goal programing and quality function deployment for new product planning

Liang-Hsuan Chen et al.

EUROPEAN JOURNAL OF OPERATIONAL RESEARCH (2017)

Article Computer Science, Artificial Intelligence

Semi-parametric partially logistic regression model with exact inputsand intuitionistic fuzzy outputs

G. Hesamian et al.

APPLIED SOFT COMPUTING (2017)

Article Computer Science, Artificial Intelligence

Intuitionistic fuzzy C-regression by using least squares support vector regression

Kuo-Ping Lin et al.

EXPERT SYSTEMS WITH APPLICATIONS (2016)

Article Computer Science, Artificial Intelligence

Least-Squares Regression Based on Atanassov's Intuitionistic Fuzzy Inputs-Outputs and Atanassov's Intuitionistic Fuzzy Parameters

Mohsen Arefi et al.

IEEE TRANSACTIONS ON FUZZY SYSTEMS (2015)

Article Operations Research & Management Science

Arithmetic operations on generalized intuitionistic fuzzy number and its applications to transportation problem

Dipankar Chakraborty et al.

OPSEARCH (2015)

Article Computer Science, Artificial Intelligence

Intuitionistic fuzzy linear regression analysis

R. Parvathi et al.

FUZZY OPTIMIZATION AND DECISION MAKING (2013)

Article Computer Science, Information Systems

Fuzzy least-absolutes regression using shape preserving operations

M. Kelkinnama et al.

INFORMATION SCIENCES (2012)

Article Computer Science, Artificial Intelligence

Fuzzy Regression Models Using the Least-Squares Method Based on the Concept of Distance

Liang-Hsuan Chen et al.

IEEE TRANSACTIONS ON FUZZY SYSTEMS (2009)

Article Computer Science, Theory & Methods

Goodness of fit and variable selection in the fuzzy multiple linear regression

Pierpaolo D'Urso et al.

FUZZY SETS AND SYSTEMS (2006)