Scientific and Technical Journal

ELECTROTECHNIC AND COMPUTER SYSTEMS

ISSN Print 2221-3937
ISSN Online 2221-3805
APPLICATION OF THE ROBUST DATA ANALYSIS METHODS WITH LIMITED NUMBER OF OBSERVATIONS
Abstract:
Measuring information of a small size distribution is characterized by asymmetry, which leads to a situation when you need to make decisions that can reduce the statistical reliability of the results. The use of a robust data analysis methods helps to avoid such situation, while allowing recovering a possible general population
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DOI
References

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2017-11-23 15:10:48

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