The fuzzy interpretation of the statistical test for irregular data
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Publication date: 19.12.2016
Technical Transactions, 2016, Mechanics Issue 4-M 2016, pp. 119 - 125
https://doi.org/10.4467/2353737XCT.16.242.5991Authors
The fuzzy interpretation of the statistical test for irregular data
The well-known statistical tests have been developed on the basis of many additional assumptions, among which the normality of a data source distribution is one of the most important. The outcome of a test is a p-value which may is interpreted as an estimation of a risk for a false negative decision i.e. it is an answer to the question “how much do I risk if I deny?”. This risk estimation is a base for a decision (after comparing with a significance level α): reject or not. This sharp trigger – p-level greater than α or not – ignores the fact that a context is rather smooth and evolves from “may be” through “rather not” to “certainly not”. An alternative option for such assessments is proposed by a fuzzy statistics, particularly by Buckley’s approach. The fuzzy approach introduces a better scale for expressing decision uncertainty. This paper compares three approaches: a classic one based on a normality assumption, Buckley’s theoretical one and a bootstrap-based one
Information: Technical Transactions, 2016, Mechanics Issue 4-M 2016, pp. 119 - 125
Article type: Original article
Titles:
The fuzzy interpretation of the statistical test for irregular data
The fuzzy interpretation of the statistical test for irregular data
Institute of Applied Informatics, Faculty of Mechanical Engineering, Cracow University of Technology
Institute of Machine Design, Faculty of Mechanical Engineering, Cracow University of Technology
Chair and Department of Pharmaceutical Botany, Jagiellonian University Collegium Medicum
Institute of Applied Informatics, Faculty of Mechanical Engineering, Cracow University of Technology
Published at: 19.12.2016
Article status: Open
Licence: None
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