Abstract

Introduction. The aim of the work is to reduce the requirements to test sample size when testing the hypothesis of normality. Materials and Methods. A neural network generalization of three well-known statistical criteria is used: the chi-square criterion, the Anderson–Darling criterion in ordinary form, and the Anderson–Darling criterion in logarithmic form. Results. The neural network combining of the chi-square criterion and the Anderson–Darling criterion reduces the sample size requirements by about 40 %. Adding a third neuron that reproduces the logarithmic version of the Andersоn–Darling test leads to a small decrease in the probability of errors by 2 %. The article deals with single-layer and multilayer neural networks, summarizing many currently known statistical criteria. Discussion and Conclusion. An assumption has been made that an artificial neuron can be assigned to each of the known statistical criteria. It is necessary to change the attitude to the synthesis of new statistical criteria that previously prevailed in the 20th century. There is no current need for striving to create statistical criteria for high power. It is much more advantageous trying to ensure that the data of newly synthesized statistical criteria are low correlated with many of the criteria already created.

Highlights

  • The aim of the work is to reduce the requirements to test sample size when testing the hypothesis of normality

  • The neural network combining of the chi-square criterion and the Anderson–Darling criterion reduces the sample size requirements by about 40 %

  • The article deals with single-layer and multilayer neural networks, summarizing many currently known statistical criteria

Read more

Summary

ENGINEERING TECHNOLOGIES AND SYSTEMS

Используется нейросетевое обобщение трех известных статистических критериев: хи-квадрат критерия, критерия Андерсона – Дарлинга в обычной форме и критерия Андерсона – Дарлинга в логарифмической форме. Нейросетевое объединение хи-квадрат критерия и критерия Андерсона – Дарлинга позволяет снизить требования к объему выборки приблизительно на 40 %. Ключевые слова: критерий хи-квадрат, критерий Андерсона – Дарлинга, искусственная нейронная сеть, статистический критерий, нейросетевое воспроизведение статистических критериев, нейросетевой анализ, малая выборка. Для цитирования: Нейросетевой анализ нормальности малых выборок биометрических данных с использованием хи-квадрат критерия и критериев Андерсона – Дарлинга / В. И. Волчихин [и др.] // Инженерные технологии и системы. Контент доступен по лицензии Creative Commons Attribution 4.0 License.

ИНЖЕНЕРНЫЕ ТЕХНОЛОГИИ И СИСТЕМЫ
Introduction
Об эффективности работы нейрона
Пятое место по информативности
Findings
СПИСОК ИСПОЛЬЗОВАННЫХ ИСТОЧНИКОВ
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call