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    <title>Research on Welcome to Erik Schlögl&#39;s website</title>
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Peer-reviewed journal articles  Gellert, K. &amp;amp; Schlögl, E. 2021, &amp;lsquo;Parameter Learning and Change Detection Using a Particle Filter with Accelerated Adaptation&amp;rsquo;, Risks, 9(12).
View/Download from: Publisher&amp;rsquo;s site (open access)/Working paper version on SSRN
 Click arrow to view description This paper presents the construction of a particle filter, which incorporates elements inspired by genetic algorithms, in order to achieve accelerated adaptation of the estimated posterior distribution to changes in model parameters.</description>
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