  <?xml version="1.0"?>
<journal>
 <journal_metadata>
  <full_title>International Journal of Neutrosophic Science</full_title>
  <abbrev_title>IJNS</abbrev_title>
  <issn media_type="print">2690-6805</issn>
  <issn media_type="electronic">2692-6148</issn>
  <doi_data>
   <doi>10.54216/IJNS</doi>
   <resource>https://www.americaspg.com/journals/show/3472</resource>
  </doi_data>
 </journal_metadata>
 <journal_issue>
  <publication_date media_type="print">
   <year>2020</year>
  </publication_date>
  <publication_date media_type="online">
   <year>2020</year>
  </publication_date>
 </journal_issue>
 <journal_article publication_type="full_text">
  <titles>
   <title>Analyzing and Interpretation of Kernel Neutrosophic Set Based Machine Learning Model for Cost Estimation of Multi Product Supply Chain Management Systems</title>
  </titles>
  <contributors>
   <organization sequence="first" contributor_role="author">Department of Corporate Finance and Corporate Governance, Financial University under the Government of the Russian Federation, Moscow, 125167, Russia</organization>
   <person_name sequence="first" contributor_role="author">
    <given_name>Elvir</given_name>
    <surname>Elvir</surname>
   </person_name>
   <organization sequence="first" contributor_role="author">Department of Economics, Urgench State University, Urgench, 220100, Uzbekistan</organization>
   <person_name sequence="additional" contributor_role="author">
    <given_name>Bakhtiyar</given_name>
    <surname>Ruzmetov</surname>
   </person_name>
   <organization sequence="first" contributor_role="author">Institute of Digital Technologies and Law, Kazan Innovative University named after V.G. Timiryasov, Kazan, 420111, Russia</organization>
   <person_name sequence="additional" contributor_role="author">
    <given_name>Ildar</given_name>
    <surname>Begishev</surname>
   </person_name>
   <organization sequence="first" contributor_role="author">Department of Economics and Management, Khorezm University of Economics, Urgench, 220100, Uzbekistan</organization>
   <person_name sequence="additional" contributor_role="author">
    <given_name>Denis</given_name>
    <surname>Shakhov</surname>
   </person_name>
   <organization sequence="first" contributor_role="author">Department of Economics and Management, Khorezm University of Economics, Urgench, 220100, Uzbekistan</organization>
   <person_name sequence="additional" contributor_role="author">
    <given_name>Elena</given_name>
    <surname>Klochko</surname>
   </person_name>
   <organization sequence="first" contributor_role="author">Department of Economics, Mamun University, Khiva, 220900, Uzbekistan; Moscow Aviation Institute (National Research University), Moscow, 125080, Russia</organization>
   <person_name sequence="additional" contributor_role="author">
    <given_name>Elvir</given_name>
    <surname>Akhmetshin</surname>
   </person_name>
  </contributors>
  <jats:abstract xml:lang="en">
   <jats:p>Neutrosophic set (NS) is a novel devise to handle uncertainty considering the memberships of truth T, indeterminacy I, and falsity F satisfying. It is employed to illustrate the indefinite data more appropriately and precisely than an intuitionistic fuzzy set. The search for cost information over the supply chain is very significant for controlling costs that aid in enhancing and beginning activities in organizations in the value chain. In today’s intricate supply networks, sharing data among suppliers and buyers is important for sustainable competitive benefit. Particularly, for both business partners, cost information is extremely appropriate in buying conditions. As per experimental analyses in literature, artificial neural networks (ANNs) are probable to have a great latent to expose cost structures by machine learning (ML). This study presents a novel Interpretation of Kernel Regression Neutrosophic Set using Enhanced Coati Optimization for Cost Estimation Model (KRNSECO-CEM). The main goal of the presented KRNSECO-CEM technique is to analyze and interpret the multi-product of Supply Chain Management Systems. At first, the KRNSECO-CEM approach applies Z-score normalization to pre-process the input data. For the regression process, the kernel regression based neutrosophic set (KRNS) model can be used. Eventually, the enhanced coati optimization algorithm (ECOA) has been applied for the fine-tuning of the best hyperparameter of the KRNS model. The experimental evaluation of the KRNSECO-CEM algorithm can be tested on a benchmark dataset. The extensive outcomes highlighted the significant solution of the KRNSECO-CEM approach over other recent approaches</jats:p>
  </jats:abstract>
  <publication_date media_type="print">
   <year>2025</year>
  </publication_date>
  <publication_date media_type="online">
   <year>2025</year>
  </publication_date>
  <pages>
   <first_page>250</first_page>
   <last_page>261</last_page>
  </pages>
  <doi_data>
   <doi>10.54216/IJNS.250421</doi>
   <resource>https://www.americaspg.com/articleinfo/21/show/3472</resource>
  </doi_data>
 </journal_article>
</journal>
