<node id="347741">
  <nid>347741</nid>
  <type>event</type>
  <uid>
    <user id="28077"><![CDATA[28077]]></user>
  </uid>
  <created>1416480953</created>
  <changed>1475892626</changed>
  <title><![CDATA[Ph.D. Thesis Proposal by Ilias Fountalis]]></title>
  <body><![CDATA[<p>Ph.D. THESIS PROPOSAL<br /><br />TITLE: <strong>From spatio-temporal data to functional weighted networks: methods and</strong><strong>&nbsp;</strong><br /><strong>applications in climate science, neuroscience and ecology.</strong><br /><br /><strong>Ilias Fountalis</strong><br />School of Computer Science<br />College of Computing<br />Georgia Institute of Technology<br /><br />Date: Wednesday,&nbsp;December 3, 2014<br />Time: 11:00 AM - 1:00 PM<br />Location: KACB 3100<br /><br />Committee:<br />----------<br /><br />Prof. Constantine Dovrolis, School of Computer Science, GeorgiaTech&nbsp;<br />(Advisor)<br />Prof. Mostafa H. Ammar, School of Computer Science, GeorgiaTech<br />Prof. Annalisa Bracco, Earth and Atmospheric Sciences Department,&nbsp;<br />GeorgiaTech<br />Assistant Prof. Bistra Dilkina, &nbsp;School of Computational Science and&nbsp;<br />Engineering, GeorgiaTech<br />Associate Prof. Shella Keilholz, Wallace H. Coulter Department of&nbsp;<br />Biomedical Engineering, GeorgiaTech and Emory University School of Medicine<br />Prof. Athanasios Nenes, Earth and Atmospheric Sciences Department,&nbsp;<br />GeorgiaTech<br /><br /><strong>Abstract:</strong><br />----------<br />There is an abundance of spatio-temporal data&nbsp;today&nbsp;from diverse complex&nbsp;<br />systems such as the Earth's climate, the human brain, or the mobility&nbsp;<br />patterns of migratory species. By analyzing such data, scientists are&nbsp;<br />able to discover the key modules of the corresponding system, and to&nbsp;<br />investigate their dynamics and inter-dependencies.<br /><br />Spatio-temporal data are typically embedded in a two- or&nbsp;<br />three-dimensional grid, and the dynamics of each grid cell are&nbsp;<br />represented by a time-series. Common computational analysis methods for&nbsp;<br />such data include standard time series analysis, spatial clustering, and&nbsp;<br />principal/independent component analysis. These techniques, although&nbsp;<br />valuable in specific contexts, are not able to directly identify the&nbsp;<br />latent functional components of the system and how these components&nbsp;<br />interact with each other. This objective can be met more naturally with&nbsp;<br />a framework that is based on network analysis.<br /><br />The emerging field of network analysis incorporates a broad range of&nbsp;<br />models, metrics and algorithms to study complex nonlinear dynamical&nbsp;<br />systems; its main premise is that the underlying topology or network&nbsp;<br />structure of a system has a strong impact on its dynamics and evolution.<br /><br />We propose a novel network-based analysis framework for the study of&nbsp;<br />spatio-temporal data. First, we cluster grid-cells into "areas", defined&nbsp;<br />as spatially coherent regions that are highly homogeneous in terms of&nbsp;<br />dynamics. The proposed algorithm identifies a parsimonious set of latent&nbsp;<br />functional components, and it relies on a single parameter that is set&nbsp;<br />based on a target statistical significance level. In a second step, we&nbsp;<br />identify edges between areas. The strength of the edge between two areas&nbsp;<br />is given by the covariance of their cumulative anomaly time series. Each&nbsp;<br />edge is also characterized by the lag at which the cross-correlation&nbsp;<br />between the two areas is maximum, in absolute sense.<br /><br />The proposed framework has been applied successfully in Climate Science&nbsp;<br />to evaluate state-of-the-art climate models and to assess their&nbsp;<br />performance. Further, we have investigated future projections of these&nbsp;<br />models' trajectories under increased greenhouse gas emission scenarios.&nbsp;<br />We are going to also apply the proposed method on functional MRI data to&nbsp;<br />construct dynamic functional brain networks. Finally, we will apply the&nbsp;<br />proposed framework in the context of Ecology, to investigate bird&nbsp;<br />migration patterns.</p>]]></body>
  <field_summary_sentence>
    <item>
      <value><![CDATA[From spatio-temporal data to functional weighted networks: methods and  applications in climate science, neuroscience and ecology.]]></value>
    </item>
  </field_summary_sentence>
  <field_summary>
    <item>
      <value><![CDATA[]]></value>
    </item>
  </field_summary>
  <field_time>
    <item>
      <value><![CDATA[2014-12-03T10:00:00-05:00]]></value>
      <value2><![CDATA[2014-12-03T12:00:00-05:00]]></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>
          <item>
        <value><![CDATA[Faculty/Staff]]></value>
      </item>
      </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>221981</item>
      </og_groups>
  <og_groups_both>
          <item><![CDATA[Graduate Studies]]></item>
      </og_groups_both>
  <field_categories>
          <item>
        <tid>1788</tid>
        <value><![CDATA[Other/Miscellaneous]]></value>
      </item>
      </field_categories>
  <field_keywords>
          <item>
        <tid>1808</tid>
        <value><![CDATA[graduate students]]></value>
      </item>
          <item>
        <tid>102851</tid>
        <value><![CDATA[Phd proposal]]></value>
      </item>
      </field_keywords>
  <field_userdata><![CDATA[]]></field_userdata>
</node>
