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Measurement Techniques

, Volume 57, Issue 3, pp 222–227 | Cite as

Comparison of the Effectiveness of Methods for Sampling the Range of Variation of Random Quantities in Synthesis of Nonparametric Estimates of Probability Density

  • A. V. Lapko
  • V. A. Lapko
GENERAL PROBLEMS OF METROLOGY AND MEASUREMENT TECHNIQUE

The approximation properties of a nonparametric estimate of probability density are studied for different methods of sampling the domain of definition. The indicators of the effectiveness of these methods are estimated.

Keywords

nonparametric estimate of probability density approximation properties sampling methods normal distribution law 

References

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Copyright information

© Springer Science+Business Media New York 2014

Authors and Affiliations

  1. 1.Institute of Computer ModellingSiberian Branch of the Russian Academy of SciencesKrasnoyarskRussia
  2. 2.Siberian State Aerospace UniversityKrasnoyarskRussia

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