Title of article :
Detecting fuzzy relationships in regression models: The case of insurer solvency surveillance in Germany
Author/Authors :
Berry-Stِlzle، نويسنده , , Thomas R. and Koissi، نويسنده , , Marie-Claire and Shapiro، نويسنده , , Arnold F.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
We develop a test for the fuzziness of regression coefficients based on the Tanaka et al. (1982) and He et al. (2007) possibilistic fuzzy regression models. We interpret the spread of the regression coefficients as a statistic measuring the fuzziness of the relationship between the corresponding independent variable and the dependent variable. We derive test distributions based on the null hypothesis that such spreads could have been obtained by estimating a possibilistic regression with data generated by a classical regression model with random errors. As an example, we show how our test detects a fuzzy regression coefficient in a solvency prediction model for German property–liability insurance companies.
Keywords :
Insurance regulation , Test for fuzziness , Financial statement data , Possibilistic fuzzy regression
Journal title :
Insurance Mathematics and Economics
Journal title :
Insurance Mathematics and Economics