<!DOCTYPE html PUBLIC "-//W3C//DTD XHTML 1.0 Transitional//EN" "http://www.w3.org/TR/xhtml1/DTD/xhtml1-transitional.dtd"> <html> <head> <title>UTas ePrints - An Incremental Learning Method for Data Mining from Large Databases</title> <script type="text/javascript" src="http://eprints.utas.edu.au/javascript/auto.js"><!-- padder --></script> <style type="text/css" media="screen">@import url(http://eprints.utas.edu.au/style/auto.css);</style> <style type="text/css" media="print">@import url(http://eprints.utas.edu.au/style/print.css);</style> <link rel="icon" href="/images/eprints/favicon.ico" type="image/x-icon" /> <link rel="shortcut icon" href="/images/eprints/favicon.ico" type="image/x-icon" /> <link rel="Top" href="http://eprints.utas.edu.au/" /> <link rel="Search" href="http://eprints.utas.edu.au/cgi/search" /> <meta content="Ling, Tristan Ronald" name="eprints.creators_name" /> <meta content="trling@postoffice.utas.edu.au" name="eprints.creators_id" /> <meta content="thesis" name="eprints.type" /> <meta content="2007-02-22" name="eprints.datestamp" /> <meta content="2008-01-08 15:30:00" name="eprints.lastmod" /> <meta content="show" name="eprints.metadata_visibility" /> <meta content="An Incremental Learning Method for Data Mining from Large Databases" name="eprints.title" /> <meta content="unpub" name="eprints.ispublished" /> <meta content="280199" name="eprints.subjects" /> <meta content="280213" name="eprints.subjects" /> <meta content="280205" name="eprints.subjects" /> <meta content="public" name="eprints.full_text_status" /> <meta content="data mining, incremental learning, artificial intelligence, large databases" name="eprints.keywords" /> <meta content="Knowledge Discovery techniques seek to find new information about a domain through a combination of existing domain knowledge and data examples from the domain. These techniques can either be manually performed by an expert, or automated using software algorithms (Machine Learning). However some domains, such as the clinical field of Lung Function testing, contain volumes of data too vast and detailed for manual analysis to be effective, and existing knowledge too complex for Machine Learning algorithms to be able to adequately discover relevant knowledge. In many cases this data is also unclassified, with no previous analysis having been performed. A better approach for these domains might be to involve a human expert, taking advantage of their expertise to guide the process, and to use Machine Learning techniques to assist the expert in discovering new and meaningful relationships in the data. It is hypothesised that Knowledge Acquisition methods would provide a strong basis for such a Knowledge Discovery method, particularly methods which can provide incremental verification and validation of knowledge as it is obtained. This study examines how the MCRDR (Multiple Classification Ripple- Down Rules) Knowledge Acquisition process can be adapted to develop a new Knowledge Discovery method, Exposed MCRDR, and tests this method in the domain of Lung Function. Preliminary results suggest that the EMCRDR method can be successfully applied to discover new knowledge in a complex domain, and reveal many potential areas of study and development for the MCRDR method." name="eprints.abstract" /> <meta content="2006-11" name="eprints.date" /> <meta content="published" name="eprints.date_type" /> <meta content="89" name="eprints.pages" /> <meta content="University of Tasmania" name="eprints.institution" /> <meta content="School of Computing" name="eprints.department" /> <meta content="honours" name="eprints.thesis_type" /> <meta content="Aamodt, A & Plaza, E 1994, 'Case-Based Reasoning: Foundational Issues, Methodological Variations, and System Approaches', AI Communications, vol. 7, no. 1, pp. 33-59. 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Yamaguti, T & Kurematsu, M 1993, 'Legal knowledge acquisition using case-based reasoning and model inference', in Proceedings of the 4th international conference on Artificial intelligence and law, ACM Press, Amsterdam, The Netherlands, pp. 212- 7." name="eprints.referencetext" /> <meta content="Ling, Tristan Ronald (2006) An Incremental Learning Method for Data Mining from Large Databases. Honours thesis, University of Tasmania." name="eprints.citation" /> <meta content="http://eprints.utas.edu.au/793/1/trling_Honours_Thesis.pdf" name="eprints.document_url" /> <link rel="schema.DC" href="http://purl.org/DC/elements/1.0/" /> <meta content="An Incremental Learning Method for Data Mining from Large Databases" name="DC.title" /> <meta content="Ling, Tristan Ronald" name="DC.creator" /> <meta content="280199 Information Systems not elsewhere classified" name="DC.subject" /> <meta content="280213 Other Artificial Intelligence" name="DC.subject" /> <meta content="280205 Text Processing" name="DC.subject" /> <meta content="Knowledge Discovery techniques seek to find new information about a domain through a combination of existing domain knowledge and data examples from the domain. These techniques can either be manually performed by an expert, or automated using software algorithms (Machine Learning). However some domains, such as the clinical field of Lung Function testing, contain volumes of data too vast and detailed for manual analysis to be effective, and existing knowledge too complex for Machine Learning algorithms to be able to adequately discover relevant knowledge. In many cases this data is also unclassified, with no previous analysis having been performed. A better approach for these domains might be to involve a human expert, taking advantage of their expertise to guide the process, and to use Machine Learning techniques to assist the expert in discovering new and meaningful relationships in the data. It is hypothesised that Knowledge Acquisition methods would provide a strong basis for such a Knowledge Discovery method, particularly methods which can provide incremental verification and validation of knowledge as it is obtained. This study examines how the MCRDR (Multiple Classification Ripple- Down Rules) Knowledge Acquisition process can be adapted to develop a new Knowledge Discovery method, Exposed MCRDR, and tests this method in the domain of Lung Function. Preliminary results suggest that the EMCRDR method can be successfully applied to discover new knowledge in a complex domain, and reveal many potential areas of study and development for the MCRDR method." name="DC.description" /> <meta content="2006-11" name="DC.date" /> <meta content="Thesis" name="DC.type" /> <meta content="NonPeerReviewed" name="DC.type" /> <meta content="application/pdf" name="DC.format" /> <meta content="http://eprints.utas.edu.au/793/1/trling_Honours_Thesis.pdf" name="DC.identifier" /> <meta content="Ling, Tristan Ronald (2006) An Incremental Learning Method for Data Mining from Large Databases. 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border: solid 1px #ccc; padding: 3px"><tr> <td align="left"><a href="http://eprints.utas.edu.au/cgi/users/home">Login</a> | <a href="http://eprints.utas.edu.au/cgi/register">Create Account</a></td> <td align="right" style="white-space: nowrap"> <form method="get" accept-charset="utf-8" action="http://eprints.utas.edu.au/cgi/search" style="display:inline"> <input class="ep_tm_searchbarbox" size="20" type="text" name="q" /> <input class="ep_tm_searchbarbutton" value="Search" type="submit" name="_action_search" /> <input type="hidden" name="_order" value="bytitle" /> <input type="hidden" name="basic_srchtype" value="ALL" /> <input type="hidden" name="_satisfyall" value="ALL" /> </form> </td> </tr></table></td></tr> <tr> <td class="toplinks"><!-- InstanceBeginEditable name="content" --> <div align="center"> <table width="720" class="ep_tm_main"><tr><td align="left"> <h1 class="ep_tm_pagetitle">An Incremental Learning Method for Data Mining from Large Databases</h1> <p style="margin-bottom: 1em" class="not_ep_block"><span class="person_name">Ling, Tristan Ronald</span> (2006) <xhtml:em>An Incremental Learning Method for Data Mining from Large Databases.</xhtml:em> Honours thesis, University of Tasmania.</p><p style="margin-bottom: 1em" class="not_ep_block"></p><table style="margin-bottom: 1em" class="not_ep_block"><tr><td valign="top" style="text-align:center"><a onmouseover="EPJS_ShowPreview( event, 'doc_preview_798' );" href="http://eprints.utas.edu.au/793/1/trling_Honours_Thesis.pdf" onmouseout="EPJS_HidePreview( event, 'doc_preview_798' );"><img alt="[img]" src="http://eprints.utas.edu.au/style/images/fileicons/application_pdf.png" class="ep_doc_icon" border="0" /></a><div class="ep_preview" id="doc_preview_798"><table><tr><td><img alt="" src="http://eprints.utas.edu.au/793/thumbnails/1/preview.png" class="ep_preview_image" border="0" /><div class="ep_preview_title">Preview</div></td></tr></table></div></td><td valign="top"><a href="http://eprints.utas.edu.au/793/1/trling_Honours_Thesis.pdf"><span class="ep_document_citation">PDF (Complete thesis)</span></a> - Requires a PDF viewer<br />555Kb</td></tr></table><div class="not_ep_block"><h2>Abstract</h2><p style="padding-bottom: 16px; text-align: left; margin: 1em auto 0em auto">Knowledge Discovery techniques seek to find new information about a domain through a combination of existing domain knowledge and data examples from the domain. These techniques can either be manually performed by an expert, or automated using software algorithms (Machine Learning). However some domains, such as the clinical field of Lung Function testing, contain volumes of data too vast and detailed for manual analysis to be effective, and existing knowledge too complex for Machine Learning algorithms to be able to adequately discover relevant knowledge. In many cases this data is also unclassified, with no previous analysis having been performed. A better approach for these domains might be to involve a human expert, taking advantage of their expertise to guide the process, and to use Machine Learning techniques to assist the expert in discovering new and meaningful relationships in the data. It is hypothesised that Knowledge Acquisition methods would provide a strong basis for such a Knowledge Discovery method, particularly methods which can provide incremental verification and validation of knowledge as it is obtained. This study examines how the MCRDR (Multiple Classification Ripple- Down Rules) Knowledge Acquisition process can be adapted to develop a new Knowledge Discovery method, Exposed MCRDR, and tests this method in the domain of Lung Function. Preliminary results suggest that the EMCRDR method can be successfully applied to discover new knowledge in a complex domain, and reveal many potential areas of study and development for the MCRDR method.</p></div><table style="margin-bottom: 1em" cellpadding="3" class="not_ep_block" border="0"><tr><th valign="top" class="ep_row">Item Type:</th><td valign="top" class="ep_row">Thesis (Honours)</td></tr><tr><th valign="top" class="ep_row">Keywords:</th><td valign="top" class="ep_row">data mining, incremental learning, artificial intelligence, large databases</td></tr><tr><th valign="top" class="ep_row">Subjects:</th><td valign="top" class="ep_row"><a href="http://eprints.utas.edu.au/view/subjects/280199.html">280000 Information, Computing and Communication Sciences > 280100 Information Systems > 280199 Information Systems not elsewhere classified</a><br /><a href="http://eprints.utas.edu.au/view/subjects/280213.html">280000 Information, Computing and Communication Sciences > 280200 Artificial Intelligence and Signal and Image Processing > 280213 Other Artificial Intelligence</a><br /><a href="http://eprints.utas.edu.au/view/subjects/280205.html">280000 Information, Computing and Communication Sciences > 280200 Artificial Intelligence and Signal and Image Processing > 280205 Text Processing</a></td></tr><tr><th valign="top" class="ep_row">ID Code:</th><td valign="top" class="ep_row">793</td></tr><tr><th valign="top" class="ep_row">Deposited By:</th><td valign="top" class="ep_row"><span class="ep_name_citation"><span class="person_name">Prof Arthur Sale</span></span></td></tr><tr><th valign="top" class="ep_row">Deposited On:</th><td valign="top" class="ep_row">22 Feb 2007</td></tr><tr><th valign="top" class="ep_row">Last Modified:</th><td valign="top" class="ep_row">09 Jan 2008 02:30</td></tr><tr><th valign="top" class="ep_row">ePrint Statistics:</th><td valign="top" class="ep_row"><a target="ePrintStats" href="/es/index.php?action=show_detail_eprint;id=793;">View statistics for this ePrint</a></td></tr></table><p align="right">Repository Staff Only: <a href="http://eprints.utas.edu.au/cgi/users/home?screen=EPrint::View&eprintid=793">item control page</a></p> </td></tr></table> </div> <!-- InstanceEndEditable --></td> </tr> <tr> <td><!-- #BeginLibraryItem "/Library/footer_eprints.lbi" --> <table width="795" border="0" align="left" cellpadding="0" class="footer"> <tr valign="top"> <td colspan="2"><div align="center"><a href="http://www.utas.edu.au">UTAS home</a> | <a href="http://www.utas.edu.au/library/">Library home</a> | <a href="/">ePrints home</a> | <a href="/contact.html">contact</a> | <a href="/information.html">about</a> | <a href="/view/">browse</a> | <a href="/perl/search/simple">search</a> | <a href="/perl/register">register</a> | <a href="/perl/users/home">user area</a> | <a href="/help/">help</a></div><br /></td> </tr> <tr><td colspan="2"><p><img src="/images/eprints/footerline.gif" width="100%" height="4" /></p></td></tr> <tr valign="top"> <td width="68%" class="footer">Authorised by the University Librarian<br /> © University of Tasmania ABN 30 764 374 782<br /> <a href="http://www.utas.edu.au/cricos/">CRICOS Provider Code 00586B</a> | <a href="http://www.utas.edu.au/copyright/copyright_disclaimers.html">Copyright & Disclaimers</a> | <a href="http://www.utas.edu.au/accessibility/index.html">Accessibility</a> | <a href="http://eprints.utas.edu.au/feedback/">Site Feedback</a> </td> <td width="32%"><div align="right"> <p align="right" class="NoPrint"><a href="http://www.utas.edu.au/"><img src="http://www.utas.edu.au/shared/logos/unioftasstrip.gif" alt="University of Tasmania Home Page" width="260" height="16" border="0" align="right" /></a></p> <p align="right" class="NoPrint"><a href="http://www.utas.edu.au/"><br /> </a></p> </div></td> </tr> <tr valign="top"> <td><p> </p></td> <td><div align="right"><span class="NoPrint"><a href="http://www.eprints.org/software/"><img src="/images/eprintslogo.gif" alt="ePrints logo" width="77" height="29" border="0" align="bottom" /></a></span></div></td> </tr> </table> <!-- #EndLibraryItem --> <div align="center"></div></td> </tr> </table> </body> </html>