<?xml version="1.0" encoding="UTF-8"?>
<!DOCTYPE article PUBLIC "-//NLM//DTD JATS (Z39.96) Journal Publishing DTD v1.3 20210610//EN" "JATS-journalpublishing1-3.dtd">
<article article-type="research-article" dtd-version="1.3" xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xml:lang="ru"><front><journal-meta><journal-id journal-id-type="publisher-id">sustain</journal-id><journal-title-group><journal-title xml:lang="ru">Надежность</journal-title><trans-title-group xml:lang="en"><trans-title>Dependability</trans-title></trans-title-group></journal-title-group><issn pub-type="ppub">1729-2646</issn><issn pub-type="epub">2500-3909</issn><publisher><publisher-name>RAMS Journal Limited liability company</publisher-name></publisher></journal-meta><article-meta><article-id pub-id-type="doi">10.21683/1729-2646-2020-20-2-28-34</article-id><article-id custom-type="elpub" pub-id-type="custom">sustain-374</article-id><article-categories><subj-group subj-group-type="heading"><subject>Research Article</subject></subj-group><subj-group subj-group-type="section-heading" xml:lang="ru"><subject>ФУНКЦИОНАЛЬНАЯ НАДЕЖНОСТЬ И ФУНКЦИОНАЛЬНАЯ ЖИВУЧЕСТЬ. ТЕОРИЯ И ПРАКТИКА</subject></subj-group><subj-group subj-group-type="section-heading" xml:lang="en"><subject>FUNCTIONAL DEPENDABILITY AND FUNCTIONAL SURVIVABILITY. THEORY AND PRACTICE</subject></subj-group></article-categories><title-group><article-title>Учет влияния корреляционных связей через их усреднение по модулю при нейросетевом обобщении статистических критериев для малых выборок</article-title><trans-title-group xml:lang="en"><trans-title>Accounting for the effect of correlations by modulo averaging as part of neural network integration of statistical tests for small samples</trans-title></trans-title-group></title-group><contrib-group><contrib contrib-type="author" corresp="yes"><name-alternatives><name name-style="eastern" xml:lang="ru"><surname>Иванов</surname><given-names>А. И.</given-names></name><name name-style="western" xml:lang="en"><surname>Ivanov</surname><given-names>A. I.</given-names></name></name-alternatives><bio xml:lang="ru"><p>Александр И. Иванов – доктор технических наук, доцент, научный консультант</p><p>440000, г. Пенза, ул. Советская, 9тел. (841-2) 59-33-10 </p></bio><bio xml:lang="en"><p>Alexander I. Ivanov, Doctor of Engineering, Associate Professor, Academic Advisor</p><p>Penza, 9 Sovetskaya Str.phone: (841 2) 59 33 10</p></bio><email xlink:type="simple">ivan@pniei.penza.ru</email><xref ref-type="aff" rid="aff-1"/></contrib><contrib contrib-type="author" corresp="yes"><name-alternatives><name name-style="eastern" xml:lang="ru"><surname>Банных</surname><given-names>А. Г.</given-names></name><name name-style="western" xml:lang="en"><surname>Bannykh</surname><given-names>A. G.</given-names></name></name-alternatives><bio xml:lang="ru"><p>Андрей Г. Банных – аспирант третьего года обучения кафедры «Техника систем информационной безопасности»</p><p>440026, г. Пенза, ул. Красная, 40тел. (841-2) 36-82-23 </p></bio><bio xml:lang="en"><p>Andrey G. Bannykh, third year post-graduate student, Department of Information Security Technology</p><p>440026, Penza, 40 Krasnaya Str., 40phone: (841 2) 36 82 23 </p></bio><email xlink:type="simple">ibst@pnzgy.ru</email><xref ref-type="aff" rid="aff-2"/></contrib><contrib contrib-type="author" corresp="yes"><name-alternatives><name name-style="eastern" xml:lang="ru"><surname>Серикова</surname><given-names>Ю. И.</given-names></name><name name-style="western" xml:lang="en"><surname>Serikova</surname><given-names>Yu. I.</given-names></name></name-alternatives><bio xml:lang="ru"><p>Юлия И. Серикова – аспирантка третьего года обучения кафедры «Вычислительная техника»</p><p>440026, г. Пенза, ул. Красная, 40</p></bio><bio xml:lang="en"><p>Yulia I. Serikova, third year post-graduate student, Department of Computer Technology</p><p>440026, Penza, 40 Krasnaya Str.</p></bio><email xlink:type="simple">julia-ska@yandex.ru</email><xref ref-type="aff" rid="aff-2"/></contrib></contrib-group><aff-alternatives id="aff-1"><aff xml:lang="ru"><institution>АО «Пензенский научно-исследовательский электротехнический институт»</institution><country>Россия</country></aff><aff xml:lang="en"><institution>Penza Research and Design Electrical Engineering Institute</institution><country>Russian Federation</country></aff></aff-alternatives><aff-alternatives id="aff-2"><aff xml:lang="ru"><institution>ФБГОУ ВПО «Пензенский государственный университет»</institution><country>Россия</country></aff><aff xml:lang="en"><institution>Penza State University</institution><country>Russian Federation</country></aff></aff-alternatives><pub-date pub-type="collection"><year>2020</year></pub-date><pub-date pub-type="epub"><day>08</day><month>06</month><year>2020</year></pub-date><volume>20</volume><issue>2</issue><fpage>28</fpage><lpage>34</lpage><permissions><copyright-statement>Copyright &amp;#x00A9; Иванов А.И., Банных А.Г., Серикова Ю.И., 2020</copyright-statement><copyright-year>2020</copyright-year><copyright-holder xml:lang="ru">Иванов А.И., Банных А.Г., Серикова Ю.И.</copyright-holder><copyright-holder xml:lang="en">Ivanov A.I., Bannykh A.G., Serikova Y.I.</copyright-holder><license xml:lang="ru" license-type="creative-commons-attribution" xlink:href="https://creativecommons.org/licenses/by/4.0/" xlink:type="simple"><license-p>Данная работа распространяется под лицензией Creative Commons Attribution 4.0.</license-p></license><license xml:lang="en" license-type="creative-commons-attribution" xlink:href="https://creativecommons.org/licenses/by/4.0/" xlink:type="simple"><license-p>This work is licensed under a Creative Commons Attribution 4.0 License.</license-p></license></permissions><self-uri xlink:href="https://www.dependability.ru/jour/article/view/374">https://www.dependability.ru/jour/article/view/374</self-uri><abstract/><trans-abstract xml:lang="en"><p>The Aim of the paper is to demonstrate the advantages of taking into consideration real correlations by means of their symmetrization, which is significantly better than completely ignoring real correlations in cases of statistical estimation using small samples. Methods. Instead of real correlation numbers different in sign and modulo, identical values of correlation numbers moduli are used. It is shown that the equivalence of transformation to symmetrization is subject to the condition of identical probabilities of errors of the first and second kind for asymmetrical and equivalent symmetrical correlation matrices. The authors examine the procedure of accurate calculation of equal data correlation coefficients by trial and error and procedure of approximate calculation of symmetrical coefficients by averaging the moduli of real correlation numbers of an asymmetrical matrix. Results. The paper notes a practically linear dependence of equal probabilities of errors of the first and second kind from the dimension of the symmetrized problem being solved under logarithmic scale of the variables taken into consideration. That ultimately allows performing the examined calculations in table form using low-bit, low-power, inexpensive microcontrollers. The examined transformations have a quadratic computational complexity and come down to using pre-constructed 8-bit binary tables that associate the expected probability of errors of the first and second kind with the parameter of equal correlation of data. All the table calculations are correct and do not accumulate input data round-off errors. Conclusions. The now widely practiced complete disregard of the correlations when performing statistical analysis is very detrimental. It would be more correct to replace the matrices of real correlation numbers with symmetrical equivalents. The approximation error caused by simple averaging of the moduli of coefficient of asymmetrical matrices decreases as the square of their dimension or the square of the number of neurons that generalize classical statistical tests. When 16 and more neurons are used, the approximation error becomes negligible and can be disregarded.</p></trans-abstract><kwd-group xml:lang="ru"><kwd>замена статистических критериев эквивалентными им нейронами</kwd><kwd>многокритериальный статистический анализ малых выборок</kwd><kwd>учет влияния корреляционных связей</kwd><kwd>симметризация корреляционных матриц</kwd></kwd-group><kwd-group xml:lang="en"><kwd>replacement of statistical test with equivalent neurons</kwd><kwd>multicriteria statistical analysis of small samples</kwd><kwd>accounting for the effect of correlations</kwd><kwd>symmetrization of correlation matrices</kwd></kwd-group></article-meta></front><back><ref-list><title>References</title><ref id="cit1"><label>1</label><citation-alternatives><mixed-citation xml:lang="ru">Р 50.1.037 - 2002. Рекомендации по стандартизации. Прикладная статистика. Правила проверки согласия опытного распределения с теоретическим. Часть I. Критерии типа χ2 . М.: Госстандарт России, 2001. 140 с.</mixed-citation><mixed-citation xml:lang="en">R 50.1.037-2002. Recommendations for standardization. Applied statistics. Rules of check of experimental and theoretical distribution of the consent. Part I. Chi-square criteria. Moscow: Gosstandart Rossii; 2001. (in Russ.)</mixed-citation></citation-alternatives></ref><ref id="cit2"><label>2</label><citation-alternatives><mixed-citation xml:lang="ru">Иванов А.И., Куприянов Е.Н., Туреев С.В. Нейросетевое обобщение классических статистических критериев для обработки малых выборок биометрических данных // Надежность. 2019. № 2. С. 22–27. DOI: 10.21683/1729-2646-2019-19-2-22-27</mixed-citation><mixed-citation xml:lang="en">Ivanov A.I., Kupriyanov E.N., Tureev S.V. Neural network integration of classical statistical tests for processing small samples of biometrics data. Dependability 2019;2:22-27. DOI: 10.21683/1729-2646-2019-19-2-22-27.</mixed-citation></citation-alternatives></ref><ref id="cit3"><label>3</label><citation-alternatives><mixed-citation xml:lang="ru">Ахметов Б.Б., Иванов А.И. Оценка качества малой выборки биометрических данных с использованием более экономичной формы хи-квадрат критерия // Надежность. 2016. № 2(57). С. 43–48.</mixed-citation><mixed-citation xml:lang="en">Akhmetov B.B., Ivanov A.I. Estimation of quality of a small sampling biometric data using a more efficient form of the chi-square test. Dependability 2016;16(2):43-48.</mixed-citation></citation-alternatives></ref><ref id="cit4"><label>4</label><citation-alternatives><mixed-citation xml:lang="ru">Волчихин В.И., Иванов А.И., Безяев А.В., Куприянов Е.Н. Нейросетевой анализ малых выборок биометрических данных с использованием хи-квадрат критерия и критериев Андерсона-Дарлинга // Инженерные технологии и системы. 2019. Т. 29. № 2. С. 205–217. DOI: 10.15507/2658-4123.029/2019.02.205-217</mixed-citation><mixed-citation xml:lang="en">Volchikhin V.I., Ivanov A.I., Bezyaev A.V., Kupriyanov E.N. The Neural Network Analysis of Normality of Small Samples of Biometric Data through Using the Chi-Square Test and Anderson–Darling Criteria. Engineering Technologies and Systems. 2019;29(2):205-217. DOI: 10.15507/2658-4123.029/2019.02.205-217.</mixed-citation></citation-alternatives></ref><ref id="cit5"><label>5</label><citation-alternatives><mixed-citation xml:lang="ru">Иванов А.И., Банных А.Г., Куприянов Е.Н. и др. Коллекция искусственных нейронов эквивалентных статистическим критериям для их совместного применения при проверке гипотезы нормальности малых выборок биометрических данных / Сборник научных статей по материалам I Всероссийской научно-технической конференции «Безопасность информационных технологий», 24 апреля 2019 г. Пенза, 2019. С. 156–164.</mixed-citation><mixed-citation xml:lang="en">Ivanov A.I., Bannych A.G., Kupriyanov E.N. et al. Collection of artificial neuron equivalent statistical criteria for their use when testing the hypothesis of normality of small samples of biometric data. Proceedings of the I All-Russian Science and Technology Conference Security of Information Technology. Penza. 2019. 156-164.</mixed-citation></citation-alternatives></ref><ref id="cit6"><label>6</label><citation-alternatives><mixed-citation xml:lang="ru">Перфилов К.А. Критерий среднего геометрического, используемый для проверки достоверности статистических гипотез распределения биометрических данных / Труды научно-технической конференции кластера пензенских предприятий, обеспечивающих безопасность информационных технологий. Пенза, 2014. Том 9. С. 92–93. URL: http://www.pniei.penza.ru/RV-conf/T9/C92 (дата обращения 14.04.2020 г.).</mixed-citation><mixed-citation xml:lang="en">Perfilov K.A. [Criterion of geometric mean used for validity verification of the statistical hypotheses of biometric data distribution]. Proceedings of the Science and Technology Conference of the Penza Information Technology Security Cluster. Penza. 2014;9:92-93. [accessed 14.04.2020]. Available at: http://www.pniei.penza.ru/RV-conf/T9/S92. (in Russ.)</mixed-citation></citation-alternatives></ref><ref id="cit7"><label>7</label><citation-alternatives><mixed-citation xml:lang="ru">Иванов А.И., Малыгина Е.А., Перфилов П.А. и др. Сравнение мощности критерия среднего геометрического и Крамера-фон Мезиса на малых выборках биометрических данных. // Модели, системы, сети в экономике, технике, природе и обществе. 2016. № 2. С. 155–158.</mixed-citation><mixed-citation xml:lang="en">Ivanov A.I., Malygina E.A., Perfilov P.A. et al. The comparison of performance between the criterion mean geometric and the criterion of Cramér-von Mises on a small sample of biometric data. Models, Systems, Networks in Economics, Engineering, Nature and Society. 2016;2:155-158.</mixed-citation></citation-alternatives></ref><ref id="cit8"><label>8</label><citation-alternatives><mixed-citation xml:lang="ru">Иванов А.И., Перфилов К.А., Малыгина Е.А. Многомерный статистический анализ качества биометрических данных на предельно малых выборках с использованием критериев среднего геометрического, вычисленного для анализируемых функций вероятности // Измерение. Мониторинг. Управление. Контроль. 2016. № 2(16). С. 58–66.</mixed-citation><mixed-citation xml:lang="en">Ivanov A.I., Perfilov K.A., Malygina E.A. Multivariate statistical analysis of the quality of biometric data on extremely small samples using the criteria of the geometric mean tests calculated for the analyzed probability functions. Measuring. Monitoring. Management. Control. 2016;2(16):58-66. (in Russ.)</mixed-citation></citation-alternatives></ref><ref id="cit9"><label>9</label><citation-alternatives><mixed-citation xml:lang="ru">Иванов А.И., Вятчанин С.Е., Малыгина Е.А. и др. Прецизионная статистика: нейросетевое объединение хи-квадрат критерия и критерия Шапиро-Уилка при анализе малых выборок биометрических данных. / Труды международного симпозиума «Надежность и качество», 2019. Т. 2. С. 131–134.</mixed-citation><mixed-citation xml:lang="en">Ivanov A.I., Vjatchanin S.E., Malygina E.A. et al. Precision statistics: neuron networking of chi-square test and Shapiro-Wilk test in the analysis of small selections of biometric data. Proceedings of the International Symposium Dependability and Quality. 2019;2:131-134. (in Russ.)</mixed-citation></citation-alternatives></ref><ref id="cit10"><label>10</label><citation-alternatives><mixed-citation xml:lang="ru">Иванов А.И. Биометрическая идентификация личности по динамике подсознательных движений: Монография. Пенза: Изд-во ПГУ, 2000. 178 с.</mixed-citation><mixed-citation xml:lang="en">Ivanov A.I. [Biometric identification of a person based on the dynamics of unconscious movement. Monograph]. Penza: PSU Publishing; 2000. (in Russ.)</mixed-citation></citation-alternatives></ref><ref id="cit11"><label>11</label><citation-alternatives><mixed-citation xml:lang="ru">Иванов А.И. Нейросетевые технологии биометрической аутентификации пользователей открытых систем. Автореферат диссертации на соискание ученой степени доктора технических наук по специальности 05.13.01 «Системный анализ, управление и обработка информации». Пенза, 2002. 34 с.</mixed-citation><mixed-citation xml:lang="en">Ivanov A.I. [Neural network technology of biometric identification of open system users. Author’s summary of the Doctor of Engineering thesis per study program 05.13.01 System analysis, management and processing of information. Penza; 2002. (in Russ.)</mixed-citation></citation-alternatives></ref><ref id="cit12"><label>12</label><citation-alternatives><mixed-citation xml:lang="ru">Малыгин А.Ю., Волчихин В.И., Иванов А.И. и др. Быстрые алгоритмы тестирования нейросетевых механизмов биометрико-криптографической защиты информации. Пенза: Издательство Пензенского государственного университета, 2006. 161 с.</mixed-citation><mixed-citation xml:lang="en">Malygin A.Yu., Volchikhin V.I., Ivanov A.I. et al. [Fast algorithms of testing neural network mechanisms of biometric cryptographic protection of information]. Penza: Penza State University Publishing; 2006. (in Russ.)</mixed-citation></citation-alternatives></ref><ref id="cit13"><label>13</label><citation-alternatives><mixed-citation xml:lang="ru">Ахметов Б.С., Волчихин В.И., Иванов А.И. и др. Алгоритмы тестирования биометрико-нейросетевых механизмов защиты информации. Казахстан, Алматы, КазНТУ им. Сатпаева, 2013. 152 с. URL: http://portal.kazntu.kz/files/publicate/2014-01-04-11940.pdf (дата обращения 14.04.2020 г.)</mixed-citation><mixed-citation xml:lang="en">Akhmetov B.S., Volchikhin V.I., Ivanov A.I., et al. [Algorithms for testing biometric neural network mechanisms of information protection]. Kazakhstan, Almaty: Satbayev University; 2013. [accessed 14.04.2020]. URL: http://portal.kazntu.kz/files/publicate/2014-01-04-11940.pdf. (in Russ.)</mixed-citation></citation-alternatives></ref><ref id="cit14"><label>14</label><citation-alternatives><mixed-citation xml:lang="ru">Иванов А.И., Захаров О.С. Среда моделирования «БиоНейроАвтограф»: Программный продукт (создан лабораторией биометрических и нейросетевых технологий, размещен с 2009 г. на сайте АО «ПНИЭИ» для свободного использования) [Электронный ресурс]. URL: http://пниэи.рф/activity/science/noc/bioneuroautograph.zip (дата обращения 14.04.2020 г.).</mixed-citation><mixed-citation xml:lang="en">Ivanov A.I., Zakharov O.S. [The BioNeiroAvtograf simulation environment: a software product (created by the Laboratory of Biometric and Neural Network Technology, freely available since 2009 on the website of the Penza Electrical Engineering Research and Development Institute)]. [accessed 14.04.2020]. Available at: http://пниэи.рф/activity/science/noc/bioneuroautograph.zip. (in Russ.)</mixed-citation></citation-alternatives></ref><ref id="cit15"><label>15</label><citation-alternatives><mixed-citation xml:lang="ru">Иванов А.И. Автоматическое обучение больших искусственных нейронных сетей в биометрических приложениях: Учебное пособие к пакету лабораторных работ, выполняемых в среде моделирования «БиоНейроАвтограф» [Электронный ресурс]. Пенза: ОАО «ПНИЭИ», 2013. 32 с. URL: http://пниэи.рф/activity/science/noc.htm (дата обращения 14.04.2020 г.)</mixed-citation><mixed-citation xml:lang="en">Ivanov A.I. [Automatic training of large artificial neural networks in biometric applications: a study guide to laboratory works performed in the BioNeiroAvtograf simulation environment]. Penza: Penza Electrical Engineering Research and Development Institute; 2013. [accessed 14.04.2020]. Available at: http://пниэи.рф/activity/science/noc.htm. (in Russ.)</mixed-citation></citation-alternatives></ref><ref id="cit16"><label>16</label><citation-alternatives><mixed-citation xml:lang="ru">Кобзарь А.И. Прикладная математическая статистика. Для инженеров и научных работников. М.: ФИЗМАТЛИТ, 2006. 816 с.</mixed-citation><mixed-citation xml:lang="en">Kobzar A.I. [Applied mathematical statistics. For engineers and researchers]. Moscow: FIZMATLIT; 2006. (in Russ.)</mixed-citation></citation-alternatives></ref><ref id="cit17"><label>17</label><citation-alternatives><mixed-citation xml:lang="ru">Ivanov A.I., Lozhnikov P.S., Bannykh A.G. A simple nomogram for fast computing the code entropy for 256-bit codes that artificial neural networks output // Journal of Physics: Conference Series. 2019. Vol. 1260(2). P. 022003.</mixed-citation><mixed-citation xml:lang="en">Ivanov A.I., Lozhnikov P.S., Bannykh A.G. A simple nomogram for fast computing the code entropy for 256-bit codes that artificial neural networks output. Journal of Physics: Conference Series. 2019;1260(2):022003.</mixed-citation></citation-alternatives></ref></ref-list><fn-group><fn fn-type="conflict"><p>The authors declare that there are no conflicts of interest present.</p></fn></fn-group></back></article>
