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Towards a theory of compositional learning and encoding of objects

机译:朝着作曲学学习理论和对象的编码

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This paper develops a theory for learning compositional models of objects. It gives a theoretical basis for explaining the effectiveness of recent learning algorithms which exploit compositionality in order to perform structure induction of graphical models. It describes how compositional learning can be considered as learning either probability models or efficient codes for objects.
机译:本文发展了学习物体的学习组成模型的理论。它给出了解释近期学习算法的有效性的理论依据,该算法利用组成性以执行图形模型的结构诱导。它描述了如何被视为学习的学习如何学习概率模型或对象的有效代码。

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