<node id="65071">
  <nid>65071</nid>
  <type>event</type>
  <uid>
    <user id="27187"><![CDATA[27187]]></user>
  </uid>
  <created>1300791397</created>
  <changed>1475891674</changed>
  <title><![CDATA[Correlation Pursuit: forward stepwise variable selection for index models]]></title>
  <body><![CDATA[<p><strong>TITLE:</strong> Correlation Pursuit: forward stepwise variable selection for index 
models</p><p><strong>SPEAKER:</strong>&nbsp; Michael Zhu</p><p><strong>ABSTRACT:</strong></p><p>In this talk, a stepwise procedure, correlation pursuit (COP), is 
proposed for variable selection under the sufficient dimension 
reduction framework. Unlike linear stepwise regression, COP does not 
impose assumptions on the exact form of the relationship between the 
response variable and the predictor variables. The COP procedure 
selects variables that attain the maximum correlation between the 
transformed response and the linear combination of the variables. Some 
asymptotic properties of the COP procedure are established, and in 
particular, its variable selection performance under diverging sample 
size and number of predictors has been investigated. The empirical 
performance of the COP procedure in comparison with existing methods 
are demonstrated by both simulation studies and an real life example in 
functional genomics.</p>]]></body>
  <field_summary_sentence>
    <item>
      <value><![CDATA[Correlation Pursuit: forward stepwise variable selection for index models]]></value>
    </item>
  </field_summary_sentence>
  <field_summary>
    <item>
      <value><![CDATA[]]></value>
    </item>
  </field_summary>
  <field_time>
    <item>
      <value><![CDATA[2011-03-31T13:00:00-04:00]]></value>
      <value2><![CDATA[2011-03-31T14:00:00-04:00]]></value2>
      <rrule><![CDATA[]]></rrule>
      <timezone><![CDATA[America/New_York]]></timezone>
    </item>
  </field_time>
  <field_fee>
    <item>
      <value><![CDATA[]]></value>
    </item>
  </field_fee>
  <field_extras>
      </field_extras>
  <field_audience>
      </field_audience>
  <field_media>
      </field_media>
  <field_contact>
    <item>
      <value><![CDATA[]]></value>
    </item>
  </field_contact>
  <field_location>
    <item>
      <value><![CDATA[]]></value>
    </item>
  </field_location>
  <field_sidebar>
    <item>
      <value><![CDATA[]]></value>
    </item>
  </field_sidebar>
  <field_phone>
    <item>
      <value><![CDATA[]]></value>
    </item>
  </field_phone>
  <field_url>
    <item>
      <url><![CDATA[]]></url>
      <title><![CDATA[]]></title>
            <attributes><![CDATA[]]></attributes>
    </item>
  </field_url>
  <field_email>
    <item>
      <email><![CDATA[]]></email>
    </item>
  </field_email>
  <field_boilerplate>
    <item>
      <nid><![CDATA[]]></nid>
    </item>
  </field_boilerplate>
  <links_related>
      </links_related>
  <files>
      </files>
  <og_groups>
          <item>1242</item>
      </og_groups>
  <og_groups_both>
          <item><![CDATA[School of Industrial and Systems Engineering (ISYE)]]></item>
      </og_groups_both>
  <field_categories>
      </field_categories>
  <field_keywords>
      </field_keywords>
  <userdata><![CDATA[]]></userdata>
</node>
