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<doi_batch_id>ba60f6118992d8a5a252cd</doi_batch_id>
<timestamp>20231221035519848</timestamp>
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  <email_address>director@blueeyesintelligence.org</email_address>
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<journal_metadata>   <full_title>International Journal of Innovative Technology and Exploring Engineering</full_title>   <abbrev_title>IJITEE</abbrev_title>   <issn media_type='electronic'>22783075</issn>   <doi_data>     <doi>10.35940/ijitee</doi>     <resource>https://www.ijitee.org/</resource>   </doi_data> </journal_metadata> <journal_issue>  <publication_date media_type='online'>     <month>12</month>     <day>30</day>     <year>2023</year>   </publication_date>   <journal_volume>     <volume>13</volume>   </journal_volume>   <issue>1</issue> </journal_issue><!-- ============== --> <journal_article publication_type='full_text'>   <titles>     <title>A Hybrid Model for Predicting Classification Dataset based on Random Forest, Support Vector Machine and Artificial Neural Network</title>   </titles>   <contributors>      <organization sequence='first' contributor_role='author'>Department of Computer Applications, Assam Science and Technical University, Tetelia Road, Jhalukbari, Guwahati (Assam), India</organization>    <person_name sequence='first' contributor_role='author'>      <given_name>Priyanka</given_name>      <surname>Mazumder</surname>      <ORCID>https://orcid.org/0000-0002-0761-780X</ORCID>    </person_name>    <person_name sequence='additional' contributor_role='author'>       <given_name>Dr. Siddhartha</given_name>       <surname>Baruah</surname>     </person_name>     <organization sequence='additional' contributor_role='author'>Department of Computer Applications, Jorhat Engineering College, Garamur, Jorhat (Assam), India.</organization>   </contributors>    <jats:abstract xml:lang='en'>         <jats:p>Machine Learning offers a rich array of algorithms, and the performance of these algorithms can vary significantly depending on the specific task. Combining these traditional algorithms can lead to the development of innovative hybrid structures that outperform individual models. One such novel hybrid model is the Hybrid Support Random Forest Neural Network (HSRFNN), which is designed to deliver enhanced performance and accuracy. HSRFNN represents a fusion of Random Forest, Support Vector Machine (SVM), and Artificial Neural Network (ANN) to leverage their respective strengths. This hybrid model consistently outperforms the individual models of Random Forest, SVM, and ANN. In this study, ten diverse datasets sourced from UCI and Kaggle data repositories were considered for evaluation. The accuracy of the HSRFNN model was meticulously compared with the three traditional algorithms, namely Random Forest, Support Vector Machine, and Artificial Neural Network. Various accuracy metrics, such as Correctly Classified Instances (CCI), Incorrectly Classified Instances (ICI), Accuracy (A), and Time Taken to Build Model (TTBM), were used for the comparative analysis. This research strives to demonstrate that HSRFNN, through its hybrid architecture, can offer superior accuracy and performance compared to individual algorithms. The choice of datasets from different sources enhances the generalizability of the results, making HSRFNN a promising approach for a wide range of machine learning tasks. Further exploration and fine-tuning of HSRFNN may unlock its potential for even more challenging and diverse datasets.</jats:p>     </jats:abstract>  <publication_date media_type='online'>     <month>12</month>     <day>30</day>     <year>2023</year>   </publication_date>   <pages>     <first_page>19</first_page>     <last_page>25</last_page>   </pages>   <crossmark>     <crossmark_version>CC BY-NC-ND 4.0</crossmark_version>     <crossmark_policy>10.35940/BEIESP.CrossMarkPolicy</crossmark_policy>     <crossmark_domains>       <crossmark_domain>          <domain>www.ijitee.org</domain>       </crossmark_domain>     </crossmark_domains>     <crossmark_domain_exclusive>true</crossmark_domain_exclusive>     <custom_metadata>       <assertion explanation='Journal Name' group_label='Journal Name' group_name='Journal' name='Declaration' order='0'>International Journal of Innovative Technology and Exploring Engineering (IJITEE)</assertion>       <assertion explanation='Funding' group_label='Funding' group_name='Funding' name='Declaration' order='1'>No, I did not receive.</assertion>       <assertion explanation='Conflicts of Interest' group_label='Conflicts of Interest' group_name='Conflicts-of-Interest' name='Declaration' order='2'>No conflicts of interest to the best of our knowledge.</assertion>       <assertion explanation='Ethical Approval and Consent to Participate' group_label='Ethical Approval and Consent to Participate' group_name='Ethical-Approval-and-Consent-to-Participate' name='Declaration' order='3'>No, the article does not require ethical approval and consent to participate with evidence.</assertion>       <assertion explanation='Availability of Data and Material' group_label='Availability of Data and Material' group_name='Availability-of-Data-and-Material' name='Declaration' order='4'>Not relevant.</assertion>       <assertion explanation='Authors Contributions' group_label='Authors Contributions' group_name='Authors-Contributions' name='Declaration' order='5'>All authors have equal participation in this article.</assertion>     </custom_metadata>   </crossmark>   <doi_data>     <doi>10.35940/ijitee.A9757.1213123</doi>     <resource>https://www.ijitee.org/portfolio-item/A97571213123/</resource>   </doi_data> </journal_article>
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