<?xml version="1.0" encoding="UTF-8"?>
<rss xmlns:content="http://purl.org/rss/1.0/modules/content/" xmlns:dc="http://purl.org/dc/elements/1.1/" xmlns:rdf="http://www.w3.org/1999/02/22-rdf-syntax-ns#" xmlns:taxo="http://purl.org/rss/1.0/modules/taxonomy/" version="2.0">
  <channel>
    <title>topic Real Risks of Fake Data in Governance, Risk, Compliance</title>
    <link>https://community.isc2.org/t5/Governance-Risk-Compliance/Real-Risks-of-Fake-Data/m-p/73286#M1203</link>
    <description>&lt;P&gt;Hi All&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&lt;SPAN class=""&gt;&lt;SPAN&gt;Responsible data development is at the core of Responsible AI (RAI). If a training dataset was created poorly (under-represented, skewed data) this will lead to a biased model. In AI development, using real data has privacy, ethical, and IP implications, to name a few. On the other hand, using synthetic (AI-generated) data is not a panacea (as much as it’s been hailed). It leads to other kinds of downstream issues that need to be taken into account.&lt;BR /&gt;&lt;BR /&gt;This paper explores two key risks of using synthetic data in AI model development:&lt;BR /&gt;1.&amp;nbsp;&amp;nbsp;&amp;nbsp;&amp;nbsp;&amp;nbsp;&amp;nbsp;Diversity-washing (synthetic data can give the appearance of diversity)&lt;BR /&gt;2.&amp;nbsp;&amp;nbsp;&amp;nbsp;&amp;nbsp;&amp;nbsp;&amp;nbsp;Consent circumvention (consent stops being a “procedural hook” that limits downstream harms from AI model use and this – along with data source obfuscation - complicates enforcement)&lt;BR /&gt;&lt;BR /&gt;The paper focuses on facial recognition technology (FRT) highlighting the risks of using synthetic data, and the trade-offs between utility, fidelity, and privacy. It’s important to develop participatory governance models along with data lineage and transparency which are crucial when it comes to mitigating these risks.&lt;/SPAN&gt;&lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&lt;SPAN class=""&gt;&lt;SPAN&gt;&lt;A href="https://media.licdn.com/dms/document/media/D4E1FAQEQEHlQ7cTbAA/feedshare-document-pdf-analyzed/0/1724211479703?e=1724889600&amp;amp;v=beta&amp;amp;t=EZAP3GZ4_Rp2jRKbzOZOfbVceSBNtEUsVFGQMELCbQM" target="_blank" rel="noopener"&gt;https://media.licdn.com/dms/document/media/D4E1FAQEQEHlQ7cTbAA/feedshare-document-pdf-analyzed/0/1724211479703?e=1724889600&amp;amp;v=beta&amp;amp;t=EZAP3GZ4_Rp2jRKbzOZOfbVceSBNtEUsVFGQMELCbQM&lt;/A&gt;&lt;/SPAN&gt;&lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&lt;SPAN class=""&gt;&lt;SPAN&gt;Regards&lt;/SPAN&gt;&lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&lt;SPAN class=""&gt;&lt;SPAN&gt;Caute_Cautim&lt;/SPAN&gt;&lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;</description>
    <pubDate>Wed, 21 Aug 2024 06:06:56 GMT</pubDate>
    <dc:creator>Caute_cautim</dc:creator>
    <dc:date>2024-08-21T06:06:56Z</dc:date>
    <item>
      <title>Real Risks of Fake Data</title>
      <link>https://community.isc2.org/t5/Governance-Risk-Compliance/Real-Risks-of-Fake-Data/m-p/73286#M1203</link>
      <description>&lt;P&gt;Hi All&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&lt;SPAN class=""&gt;&lt;SPAN&gt;Responsible data development is at the core of Responsible AI (RAI). If a training dataset was created poorly (under-represented, skewed data) this will lead to a biased model. In AI development, using real data has privacy, ethical, and IP implications, to name a few. On the other hand, using synthetic (AI-generated) data is not a panacea (as much as it’s been hailed). It leads to other kinds of downstream issues that need to be taken into account.&lt;BR /&gt;&lt;BR /&gt;This paper explores two key risks of using synthetic data in AI model development:&lt;BR /&gt;1.&amp;nbsp;&amp;nbsp;&amp;nbsp;&amp;nbsp;&amp;nbsp;&amp;nbsp;Diversity-washing (synthetic data can give the appearance of diversity)&lt;BR /&gt;2.&amp;nbsp;&amp;nbsp;&amp;nbsp;&amp;nbsp;&amp;nbsp;&amp;nbsp;Consent circumvention (consent stops being a “procedural hook” that limits downstream harms from AI model use and this – along with data source obfuscation - complicates enforcement)&lt;BR /&gt;&lt;BR /&gt;The paper focuses on facial recognition technology (FRT) highlighting the risks of using synthetic data, and the trade-offs between utility, fidelity, and privacy. It’s important to develop participatory governance models along with data lineage and transparency which are crucial when it comes to mitigating these risks.&lt;/SPAN&gt;&lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&lt;SPAN class=""&gt;&lt;SPAN&gt;&lt;A href="https://media.licdn.com/dms/document/media/D4E1FAQEQEHlQ7cTbAA/feedshare-document-pdf-analyzed/0/1724211479703?e=1724889600&amp;amp;v=beta&amp;amp;t=EZAP3GZ4_Rp2jRKbzOZOfbVceSBNtEUsVFGQMELCbQM" target="_blank" rel="noopener"&gt;https://media.licdn.com/dms/document/media/D4E1FAQEQEHlQ7cTbAA/feedshare-document-pdf-analyzed/0/1724211479703?e=1724889600&amp;amp;v=beta&amp;amp;t=EZAP3GZ4_Rp2jRKbzOZOfbVceSBNtEUsVFGQMELCbQM&lt;/A&gt;&lt;/SPAN&gt;&lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&lt;SPAN class=""&gt;&lt;SPAN&gt;Regards&lt;/SPAN&gt;&lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&lt;SPAN class=""&gt;&lt;SPAN&gt;Caute_Cautim&lt;/SPAN&gt;&lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;&lt;P&gt;&amp;nbsp;&lt;/P&gt;</description>
      <pubDate>Wed, 21 Aug 2024 06:06:56 GMT</pubDate>
      <guid>https://community.isc2.org/t5/Governance-Risk-Compliance/Real-Risks-of-Fake-Data/m-p/73286#M1203</guid>
      <dc:creator>Caute_cautim</dc:creator>
      <dc:date>2024-08-21T06:06:56Z</dc:date>
    </item>
  </channel>
</rss>

