Article ID Journal Published Year Pages File Type
397068 International Journal of Approximate Reasoning 2013 26 Pages PDF
Abstract

In this paper, parametric regression analyses including both linear and nonlinear regressions are investigated in the case of imprecise and uncertain data, represented by a fuzzy belief function. The parameters in both the linear and nonlinear regression models are estimated using the fuzzy evidential EM algorithm, a straightforward fuzzy version of the evidential EM algorithm. The nonlinear regression model is derived by introducing a kernel function into the proposed linear regression model. An unreliable sensor experiment is designed to evaluate the performance of the proposed linear and nonlinear parametric regression methods, called parametric evidential regression (PEVREG) models. The experimental results demonstrate the high prediction accuracy of the PEVREG models in regressions with crisp inputs and a fuzzy belief function as output.

► The likelihood function is generalized in the framework of fuzzy belief function. ► A fuzzy version of evidential EM (FE2M) algorithm is proposed. ► With FE2M, a parametric evidential regression model is proposed to deal with uncertain data. ► The parametric evidential regression method has high prediction accuracy.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
Authors
, , ,