Mamdani fuzzy rule-based models for psychological research

被引:0
|
作者
Deepak Chandra Pandey
Govind Singh Kushwaha
Sanjay Kumar
机构
[1] G.B Pant University of Agriculture and Technology,Department of Mathematics, Statistics and Computer Science, College of Basic Sciences and Humanities
[2] G.B Pant University of Agriculture and Technology,Department of Social Sciences and Humanities, College of Basic Sciences and Humanities
来源
SN Applied Sciences | 2020年 / 2卷
关键词
Fuzzy model; Extraversion; Neuroticism; Anxiety; Uncertainty;
D O I
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学科分类号
摘要
The biasness of the participants in psychological research cannot be ignored during answering various psychological questioners or inventory. Hence, the prediction of psychological parameters can be deemed an ambiguous endeavor and fuzzy modeling provides a mean to account for this ambiguity and uncertainty. In the present study, two fuzzy rule-based models that use single input and generate single output are developed to convert the raw scores of neuroticism and extraversion to standard scores. Maudsley personality inventory (MPI) and Sinha’s comprehensive anxiety test (SCAT) were used to collect raw data of neuroticism, extraversion and anxiety from participants. Using the standard scores for neuroticism and extroversion, third fuzzy rule-based model is also developed to predict the anxiety level of the participants. Each model is a collection of fuzzy rules that express the relationship of each input to the output. The performance of all developed models is tested by estimating mean absolute percentage error (MAPE) and paired two-tailed t test.
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