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  <title><![CDATA[MS Defense by Zachary R. Tidler]]></title>
  <body><![CDATA[<p><strong>Name: Zachary R. Tidler</strong></p>

<p><strong>Master&rsquo;s&nbsp;Thesis&nbsp;Defense&nbsp;Meeting</strong><br />
<strong>Date:</strong>&nbsp;Friday, December 11th, 2020<br />
<strong>Time:</strong>&nbsp;1:00pm<br />
<strong>Location:&nbsp;</strong>Virtual,&nbsp;<a href="https://bluejeans.com/256884510">https://bluejeans.com/256884510</a><br />
&nbsp;<br />
<strong>Advisor:</strong><br />
Richard Catrambone, Ph.D. (Georgia Tech)<br />
&nbsp;<br />
<strong>Thesis&nbsp;Committee Members:</strong><br />
Richard Catrambone, Ph.D. (Georgia Tech)<br />
Bruce N. Walker, Ph.D. (Georgia Tech)<br />
Sidni Justus, Ph.D. (Oglethorpe)<br />
&nbsp;<br />
<strong>Title:</strong>&nbsp;<strong>Individual Differences in Deepfake Detection: Mindblindness and Political Orientation</strong></p>

<p>&nbsp;<strong>Abstract:&nbsp;</strong>The proliferation of the capability for producing and distributing deepfake videos threatens the integrity&nbsp;of systems of justice, democratic processes, and the general ability to critically assess evidence. This&nbsp;study sought to identify individual differences that meaningfully predict one&rsquo;s ability to detect these&nbsp;forgeries. It was hypothesized that measures of affect detection (theory of mind ability) and political&nbsp;&nbsp;orientation would correlate with performance on a deepfake detection task. Within a sample (N = 173) of&nbsp;&nbsp;college undergraduates and participants from Amazon&rsquo;s Mechanical Turk platform, affect detection&nbsp;ability was shown to correlate with deepfake detection ability, r(171) = .73, p &lt; .001, and general&nbsp;orientation to the political left was shown to correlate with deepfake detection ability, r(171) = .31, p &lt;&nbsp;.001. Stronger correlations with deepfake detection ability were observed among specific facets of&nbsp;political orientation: economic liberalism, r(171) = .4, p &lt; .001, and social progressivism, r(171) = .57, p&nbsp;&lt; .001. However, affect detection ability was shown to mediate the relationship between deepfake&nbsp;detection ability and political orientation (Sobel Statistic = 5.29, SE = 3.29, p &lt; .001). The deepfake&nbsp;detection task was also assessed as a predictor of an autism spectrum disorder screening instrument,&nbsp;r(171) = -.23, p &lt; .001. The results of this study serve to identify populations who are particularly&nbsp;susceptible to deception via deepfake video and to inform the development of interventions that may help&nbsp;defend the vulnerable from nefarious attempts to influence them.<strong>&nbsp;</strong></p>
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