<?xml version="1.0"?>
<!DOCTYPE article
PUBLIC "-//NLM//DTD JATS (Z39.96) Journal Publishing DTD v1.4 20190208//EN"
       "JATS-journalpublishing1.dtd">
<article 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" article-type="research-article" dtd-version="1.4" xml:lang="en">
 <front>
  <journal-meta>
   <journal-id journal-id-type="publisher-id">Management of the Personnel and Intellectual Resources in Russia</journal-id>
   <journal-title-group>
    <journal-title xml:lang="en">Management of the Personnel and Intellectual Resources in Russia</journal-title>
    <trans-title-group xml:lang="ru">
     <trans-title>Управление персоналом и интеллектуальными ресурсами в России</trans-title>
    </trans-title-group>
   </journal-title-group>
   <issn publication-format="print">2305-7807</issn>
  </journal-meta>
  <article-meta>
   <article-id pub-id-type="publisher-id">34714</article-id>
   <article-id pub-id-type="doi">10.12737/2305-7807-2020-77-83</article-id>
   <article-categories>
    <subj-group subj-group-type="toc-heading" xml:lang="ru">
     <subject>Работодателю</subject>
    </subj-group>
    <subj-group subj-group-type="toc-heading" xml:lang="en">
     <subject>For employer</subject>
    </subj-group>
    <subj-group>
     <subject>Работодателю</subject>
    </subj-group>
   </article-categories>
   <title-group>
    <article-title xml:lang="en">Assessment Selection Of Strategies In Knowledge Management</article-title>
    <trans-title-group xml:lang="ru">
     <trans-title>Оценка выбора стратегий при управлении знаниями</trans-title>
    </trans-title-group>
   </title-group>
   <contrib-group content-type="authors">
    <contrib contrib-type="author">
     <name-alternatives>
      <name xml:lang="ru">
       <surname>Дмитриева</surname>
       <given-names>С. В.</given-names>
      </name>
      <name xml:lang="en">
       <surname>Dmitrieva</surname>
       <given-names>S. V.</given-names>
      </name>
     </name-alternatives>
     <email>DSV949@yandex.ru</email>
     <bio xml:lang="ru">
      <p>кандидат экономических наук;</p>
     </bio>
     <bio xml:lang="en">
      <p>candidate of economic sciences;</p>
     </bio>
     <xref ref-type="aff" rid="aff-1"/>
    </contrib>
   </contrib-group>
   <aff-alternatives id="aff-1">
    <aff>
     <institution xml:lang="ru">Санкт-Петербургский государственный университет аэрокосмического приборостроения</institution>
     <city>Санкт-Петербург</city>
     <country>Россия</country>
    </aff>
    <aff>
     <institution xml:lang="en">Saint Petersburg State University of Aerospace Instrumentation</institution>
     <city>Saint Petersburg</city>
     <country>Russian Federation</country>
    </aff>
   </aff-alternatives>
   <volume>8</volume>
   <issue>6</issue>
   <fpage>77</fpage>
   <lpage>83</lpage>
   <self-uri xlink:href="https://zh-szf.ru/en/nauka/article/34714/view">https://zh-szf.ru/en/nauka/article/34714/view</self-uri>
   <abstract xml:lang="ru">
    <p>Среди множества методов анализа управления знаниями необходимо сделать выбор между несколькими конкурирующими методологиями и приемами. В работе предложено использовать методы машинного обучения для оценки стратегий управления знаниями. Вследствие огромной информации по данной тематике основные выводы получены с применением нормативной документации по оценкам стратегий. Решены задачи по выбору оценок с использованием нейронных сетей и оценке эффективности стратегии с помощью гибридной нейронечеткой системы. База примеров, необходимая для обучения нейронных сетей, была сформирована посредством метода Монте-Карло, а ее качество проверялось через использование главных компонентов. Проверка работы нейронной сети в виде персептрона показала ее пригодность для оценки стратегии управления знаниями. Также эффективность выбранной оценки определялась с применением нейронечеткой системы типа ANFIS, которая продемонстрировала возможность получения количественной балльной оценки.</p>
   </abstract>
   <trans-abstract xml:lang="en">
    <p>It is necessary to choose between several competing methodologies and techniques among the many methods of knowledge management analysis. The paper proposes using machine learning methods to evaluate knowledge management strategies. Due to the vast information on this subject, the main conclusions were obtained using the normative documentation on strategy evaluations. The tasks of choosing a strategy are solved using neural networks. Evaluation of the eff ectiveness of the strategy was found using a hybrid neurofuzzy system. The base of examples necessary for training neural networks was formed using the Monte Carlo method, and its quality was checked through the use of the principal components. Testing the work of the neural network in the form of a perceptron showed its suitability for choosing a knowledge management strategy. The eff ectiveness of the chosen strategy was evaluated using an ANFIS type system, which demonstrated the possibility of obtaining a quantitative scoring.</p>
   </trans-abstract>
   <kwd-group xml:lang="ru">
    <kwd>управление знаниями</kwd>
    <kwd>машинное обучение</kwd>
    <kwd>влияющие на стратегии факторы</kwd>
    <kwd>формирование базы примеров</kwd>
    <kwd>нейросетевой выбор оценки стратегий</kwd>
    <kwd>нейронечеткая оценка эффективности</kwd>
   </kwd-group>
   <kwd-group xml:lang="en">
    <kwd>knowledge management</kwd>
    <kwd>machine learning</kwd>
    <kwd>factors influencing strategies</kwd>
    <kwd>building a base of examples</kwd>
    <kwd>neural network choice of evaluation strategies</kwd>
    <kwd>neurofuzzy evaluation of eff ectiveness</kwd>
   </kwd-group>
  </article-meta>
 </front>
 <body>
  <p></p>
 </body>
 <back>
  <ref-list>
   <ref id="B1">
    <label>1.</label>
    <citation-alternatives>
     <mixed-citation xml:lang="ru">Nadali A., Nosratabadi H., Pourdarab S. ANP-FIS Method for Determining the Knowledge Management Strategy. International Journal of Information and Education Technology, 2011, Vol. 1, No. 2, p. 107-113.</mixed-citation>
     <mixed-citation xml:lang="en">Nadali A., Nosratabadi H., Pourdarab S. ANP-FIS Method for Determining the Knowledge Management Strategy. International Journal of Information and Education Technology, 2011, Vol. 1, No. 2, p. 107-113.</mixed-citation>
    </citation-alternatives>
   </ref>
   <ref id="B2">
    <label>2.</label>
    <citation-alternatives>
     <mixed-citation xml:lang="ru">Ratnaparkhi P.S., Butey P.K. Summary: Smart Decision Making Using Fuzzy Logic For Knowledge Management System. International Journal of Computer Engineering and Technology, 2014, Vol. 5, No. 10, p. 41-50.</mixed-citation>
     <mixed-citation xml:lang="en">Ratnaparkhi P.S., Butey P.K. Summary: Smart Decision Making Using Fuzzy Logic For Knowledge Management System. International Journal of Computer Engineering and Technology, 2014, Vol. 5, No. 10, p. 41-50.</mixed-citation>
    </citation-alternatives>
   </ref>
   <ref id="B3">
    <label>3.</label>
    <citation-alternatives>
     <mixed-citation xml:lang="ru">ГОСТ Р 53894-2016. Менеджмент знаний. Термины и определения. Москва : Стандартинформ, 2016.</mixed-citation>
     <mixed-citation xml:lang="en">GOST R 53894-2016. Menedzhment znanij. Terminy i opredeleniya [GOST R 53894-2016. Knowledge management. Terms and Definitions]. Moscow: Standartinform Publ., 2016.</mixed-citation>
    </citation-alternatives>
   </ref>
   <ref id="B4">
    <label>4.</label>
    <citation-alternatives>
     <mixed-citation xml:lang="ru">ГОСТ Р 57127-2016. Менеджмент знаний. Руководство по наилучшей практике. Москва : Стандартинформ, 2016.</mixed-citation>
     <mixed-citation xml:lang="en">GOST R 57127-2016. Menedzhment znanij. Rukovodstvo po nailuchshej praktike [GOST R 57127-2016. Knowledge management. Best Practice Guide]. Moscow: Standartinform Publ., 2016.</mixed-citation>
    </citation-alternatives>
   </ref>
   <ref id="B5">
    <label>5.</label>
    <citation-alternatives>
     <mixed-citation xml:lang="ru">Kim P. MATLAB Deep Learning: With Machine Learning, Neural Networks and Artificial Intelligence., Soul-t'ukpyolsi, Seoul, 2017.</mixed-citation>
     <mixed-citation xml:lang="en">Kim P. MATLAB Deep Learning: With Machine Learning, Neural Networks and Artificial Intelligence., Soul-t\'ukpyolsi, Seoul, 2017.</mixed-citation>
    </citation-alternatives>
   </ref>
   <ref id="B6">
    <label>6.</label>
    <citation-alternatives>
     <mixed-citation xml:lang="ru">Alpaydın E. Introduction to Machine Learning. MIT Press Cambridge, Massachusetts, 2010.</mixed-citation>
     <mixed-citation xml:lang="en">Alpaydın E. Introduction to Machine Learning. MIT Press Cambridge, Massachusetts, 2010.</mixed-citation>
    </citation-alternatives>
   </ref>
   <ref id="B7">
    <label>7.</label>
    <citation-alternatives>
     <mixed-citation xml:lang="ru">Jolliffe I.T. Principal component analysis. Springer, New York, 2002. p. 519</mixed-citation>
     <mixed-citation xml:lang="en">Jolliffe I.T. Principal component analysis. Springer, New York, 2002. p. 519</mixed-citation>
    </citation-alternatives>
   </ref>
   <ref id="B8">
    <label>8.</label>
    <citation-alternatives>
     <mixed-citation xml:lang="ru">Haykin S. 2009. Neural Networks and Learning Machines. NY, Pearson Education.  pp: 937.</mixed-citation>
     <mixed-citation xml:lang="en">Haykin S. 2009. Neural Networks and Learning Machines. NY, Pearson Education.  pp: 937.</mixed-citation>
    </citation-alternatives>
   </ref>
   <ref id="B9">
    <label>9.</label>
    <citation-alternatives>
     <mixed-citation xml:lang="ru">Neural Network Toolbox™.  User's Guide.   The MathWorks, Inc., MA,  2015.  pp: 410.</mixed-citation>
     <mixed-citation xml:lang="en">Neural Network Toolbox™.  User\'s Guide.   The MathWorks, Inc., MA,  2015.  pp: 410.</mixed-citation>
    </citation-alternatives>
   </ref>
   <ref id="B10">
    <label>10.</label>
    <citation-alternatives>
     <mixed-citation xml:lang="ru">Mewada K.M., Sinhal A., Verma B. (2013) Adaptive Neuro-Fuzzy Inference System (ANFIS) based software evaluation. International Journal of Computer Science 10(1):  244-250</mixed-citation>
     <mixed-citation xml:lang="en">Mewada K.M., Sinhal A., Verma B. (2013) Adaptive Neuro-Fuzzy Inference System (ANFIS) based software evaluation. International Journal of Computer Science 10(1):  244-250</mixed-citation>
    </citation-alternatives>
   </ref>
   <ref id="B11">
    <label>11.</label>
    <citation-alternatives>
     <mixed-citation xml:lang="ru">Рамсундар Б., Заде Р.Б. TensorFlow для глубокого обучения. М.:  BHV, 2019, 250 стр.</mixed-citation>
     <mixed-citation xml:lang="en">Ramsundar B., Zade R.B. TensorFlow dlya glubokogo obucheniya [TensorFlow for deep learning]. Moscos:  BHV Publ., 2019. 250 p.</mixed-citation>
    </citation-alternatives>
   </ref>
   <ref id="B12">
    <label>12.</label>
    <citation-alternatives>
     <mixed-citation xml:lang="ru">Шакла Н. Машинное обучение и TensorFlow. Санкт-Петербург : Питер, 2019. 336 с.</mixed-citation>
     <mixed-citation xml:lang="en">Shakla N. Mashinnoe obuchenie i TensorFlow [Machine Learning and TensorFlow]. St.-Petersburg: Piter Publ., 2019. 336 p.</mixed-citation>
    </citation-alternatives>
   </ref>
  </ref-list>
 </back>
</article>
