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  <title><![CDATA[Neural Variational Learning for Grounded Language Acquisition]]></title>
  <link>http://ebiquity.umbc.edu/paper/html/id/1003/Neural-Variational-Learning-for-Grounded-Language-Acquisition</link>
  <description><![CDATA[We propose a learning system in which language
is grounded in visual percepts without specific pre-defined
categories of terms. We present a unified generative method
to acquire a shared semantic/visual embedding that enables
the learning of language about a wide range of real-world
objects. We evaluate the efficacy of this learning by predicting
the semantics of objects and comparing the performance with
neural and non-neural inputs. We show that this generative
approach exhibits pro...]]></description>
  <dc:date>2021-08-08</dc:date>
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