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                <front>
                    <journal-meta>
                    <journal-id journal-id-type="publisher-id">ei</journal-id>
                    <journal-title>Electronic Imaging</journal-title>
                    <issn pub-type="ppub">2470-1173</issn><issn pub-type="epub">2470-1173</issn>
                    <publisher>
                        <publisher-name>Society for Imaging Science and Technology</publisher-name>
                        <publisher-loc>IS&amp;T 7003 Kilworth Lane, Springfield, VA 22151 USA</publisher-loc>
                    </publisher>
                    </journal-meta>
                    <article-meta>
                    <article-id pub-id-type="doi">10.2352/EI.2023.35.14.COIMG-172</article-id>
                    <article-id pub-id-type="publisher-id">COIMG-172</article-id>
                    <article-categories>
                        <subj-group>
                        <subject>Article</subject>
                        </subj-group>
                    </article-categories>
                    <title-group>
                        <article-title>A globally optimal fast iterative linear maximum likelihood classifier</article-title>
                    </title-group><contrib-group content-type="all"><contrib contrib-type="author"><name>
                            <surname>Pulakurthi</surname>
                            <given-names>Prasanna Reddy </given-names>
                           </name> <xref ref-type="aff" rid="aff1author1"/></contrib><aff id="aff1author1">Rochester Institute of Technology, United States</aff></contrib-group><contrib-group content-type="all"><contrib contrib-type="author"><name>
                            <surname>Dianat</surname>
                            <given-names>Sohail A.</given-names>
                           </name> <xref ref-type="aff" rid="aff1author2"/></contrib><aff id="aff1author2">Rochester Institute of Technology, United States</aff></contrib-group><contrib-group content-type="all"><contrib contrib-type="author"><name>
                            <surname>Rabbani</surname>
                            <given-names>Majid </given-names>
                           </name> <xref ref-type="aff" rid="aff1author3"/></contrib><aff id="aff1author3">Rochester Institute of Technology, United States</aff></contrib-group><contrib-group content-type="all"><contrib contrib-type="author"><name>
                            <surname>You</surname>
                            <given-names>Suya </given-names>
                           </name> <xref ref-type="aff" rid="aff2author4"/></contrib><aff id="aff2author4">DEVCOM Army Research Laboratory, United States</aff></contrib-group><contrib-group content-type="all"><contrib contrib-type="author"><name>
                            <surname>Rao</surname>
                            <given-names>Raghuveer M.</given-names>
                           </name> <xref ref-type="aff" rid="aff2author5"/></contrib><aff id="aff2author5">DEVCOM Army Research Laboratory, United States</aff></contrib-group><abstract>
                    <title>Abstract</title>
                    <p>A novel iterative linear classification algorithm is developed from a maximum likelihood (ML) linear classifier. The main contribution of this paper is the discovery that a well-known maximum likelihood linear classifier with regularization is the solution to a contraction mapping for an acceptable range of values of the regularization parameter. Hence, a novel iterative scheme is proposed that converges to a fixed point, the globally optimum solution. To the best of our knowledge, this formulation has not been discovered before. Furthermore, the proposed iterative solution converges to a fixed point at a rate faster than the traditional gradient descent technique. The performance of the proposed iterative solution is compared to conventional gradient descent methods on linear and non-linearly separable data in terms of both convergence speed and overall classification performance.</p>
                    </abstract><pub-date>
                        <day>16</day>
                        <month>1</month>
                        <year>2023</year>
                        </pub-date><volume>35</volume>
                    <issue-acronym>COIMG</issue-acronym>
                    <issue-title>Computational Imaging XXI</issue-title>
                    <issue seq="172">14</issue>
                    <fpage>172-1</fpage>
                    <lpage>172-5</lpage>
                    <permissions>
                         <copyright-statement>© 2023, Society for Imaging Science and Technology</copyright-statement>
                        <copyright-year>2023</copyright-year>
                    </permissions><kwd-group><kwd>Maximum Likelihood Classifier</kwd><kwd>Contraction Mapping</kwd><kwd>Iterative Algorithm</kwd><kwd>Linear Classifier</kwd></kwd-group></article-meta>
                </front>
                </article>