A combinatorial method of small sample identification
https://doi.org/10.21683/1729-2646-2024-24-2-3-7
Abstract
Aim. For the purpose of improving the reliability of decisions regarding the uniformity of distributions over samples of limited size, a combinatorial method has been developed for defining a criterion based on simple combinations of sample values. Methods. The paper uses methods of the probability theory, mathematical statistics, and combinatorics. Results. The proposed criterion is highly efficient for distinguishing small samples when testing statistically similar hypotheses, such as the hypothesis of a uniform distribution law and the hypothesis of a beta distribution of the first kind. Conclusions. The approach proposed in the paper enables a sequential analysis procedure (detection of process “imbalance”). This procedure makes it possible to reliably detect the “imbalance” (deviation of the distribution of observations from the uniform law) of a process with a practically sufficient intensity using recurrent relations.
About the Author
A. V. VolovikRussian Federation
Alexander V. Volovik, Candidate of Engineering, Lead Design Engineer
Saint Petersburg
References
1. Johnson N., Leone F. Statistics and Experimental Designs and Engineering and the Physical Sciences. Mathods of Data Processing. Moscow: Mir; 1980.
2. Vinogradova M.S., Kandaurova I.E., Tkachiova O.S. [A combinatorial method of calculating probabilities]. Modern European Researches 2021;3(1):67-79. (in Russ.)
3. Volovik A.V. Variational criterion of evenness. Dependability 2023;23(1):52-55. DOI: 10.21683/1729- 2646-2023-23-1-52-55. (in Russ.)
4. Lemeshko B.Yu., Blinov P.Yu [Criteria for testing a distribution for deviation from a uniform law. An application guide]. Novosibirsk: NSTU; 2015. (in Russ.)
5. Korn G., Korn T. Mathematical handbook. Moscow: Nauka; 1974.
6. Volovik A.V. A method of signalling the presence of shavings in oil and a device to implement it: patent 2791174 Russian Federation. No. 2022116675; submitted 20.06.2022; published 03.03.2023, Bul. no. 7.
7. Johnson N. Continuous univariate distributions. Vol. 2. Moscow: BINOM. Laboratoria znaniy; 2010-2012.
8. Volchikhin V.I. The neural network analysis of normality of small samples of biometric data through using the Chi-square test and Anderson–Darling criteria. Inzhenernyye tekhnologii i sistemy 2019;29(2):205-217. DOI: https://doi.org/10.15507/2658-4123.029.201902.205-217. (in Russ.)
9. GOSTR50779.10-2000 Statistical methods. Probability and general statistical terms. Terms and definitions. Moscow: Standartinform; 2005. (in Russ.)
10. Ivchenko B.P., Martyshchenko L.A., Tabukhov M.E. [Control in economic and social systems. Systems analysismaking under uncertainty]. Saint Petersburg: NordmedIzdat; 2001. (in Russ.)
Review
For citations:
Volovik A.V. A combinatorial method of small sample identification. Dependability. 2024;24(2):3-7. (In Russ.) https://doi.org/10.21683/1729-2646-2024-24-2-3-7