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<journal_metadata>   <full_title>International Journal of ADVANCED AND APPLIED SCIENCES</full_title>   <abbrev_title>Int. j. adv. appl. sci.</abbrev_title>   <issn media_type='print'>2313626X</issn>   <issn media_type='electronic'>23133724</issn> </journal_metadata> <journal_issue>  <publication_date media_type='print'>     <month>2</month>     <year>2021</year>   </publication_date>  <publication_date media_type='online'>     <month>2</month>     <year>2021</year>   </publication_date>   <journal_volume>     <volume>8</volume>   </journal_volume>   <issue>2</issue> </journal_issue><!-- ============== --> <journal_article publication_type='full_text'>   <titles>     <title>Data mining classification algorithms: An overview</title>   </titles>   <contributors>      <organization sequence='first' contributor_role='author'>Department of Computer Sciences, ALNeelain University, Khartoum, Sudan</organization>    <person_name sequence='first' contributor_role='author'>      <given_name>Bardab</given_name>      <surname>et al.</surname>    </person_name>  </contributors>    <jats:abstract xml:lang='en'>         <jats:p>Data mining is also defined as the process of analyzing a quantity of data (usually a large amount) to find a logical relationship that summarizes the data in a new way that is understandable and useful to the owner of the data. This paper examines the various types of classification algorithms in Data Mining, their applications and categorically states the strengths and limitations of each type. The weaknesses found in each algorithm demonstrate how tasks cannot be performed well when only one type of algorithm is applied. For this reason, it is the view of the writer that further research needs to be carried out to explore the potential of combining several of these algorithms to solve machine learning problems.</jats:p>     </jats:abstract> <publication_date media_type='print'>     <month>2</month>     <year>2021</year>   </publication_date> <publication_date media_type='online'>     <month>2</month>     <year>2021</year>   </publication_date>   <pages>     <first_page>1</first_page>     <last_page>5</last_page>   </pages>   <crossmark>     <crossmark_policy>10.21833/ijaas-crossmark</crossmark_policy>     <crossmark_domains>       <crossmark_domain>          <domain>www.science-gate.com</domain>       </crossmark_domain>     </crossmark_domains>     <crossmark_domain_exclusive>false</crossmark_domain_exclusive>     <custom_metadata>       <assertion  label='This paper is maintained by' name='Maintenance'>IASE www.science-gate.com</assertion>       <assertion label='Paper Title' name='Title'>Data mining classification algorithms: An overview</assertion>       <assertion label='Journal Title' name='Source'>International Journal of Advanced and Applied Sciences</assertion>       <assertion label='CrossRef DOI link to publisher maintained version' name='DOI'>https://doi.org/10.21833/ijaas.2021.02.001</assertion>       <assertion label='Content Type' name='Type'>Article</assertion>       <assertion label='Copyright' name='Copyright'>© 2020 The Authors. Published by IASE. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).</assertion>     </custom_metadata>   </crossmark>   <doi_data>     <doi>10.21833/ijaas.2021.02.001</doi>     <resource>http://www.science-gate.com/IJAAS/2021/V8I2/1021833ijaas202102001.html</resource>       <collection property='crawler-based'>         <item crawler='iParadigms'>           <resource>http://science-gate.com/IJAAS/Articles/2021/2021-8-2/1021833ijaas202102001.pdf</resource></item></collection>  </doi_data> </journal_article>
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