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Bootstrapping intrinsically motivated learning with human demonstration

机译:通过人类示范来引导内在动机的学习

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This paper studies the coupling of internally guided learning and social interaction, and more specifically the improvement owing to demonstrations of the learning by intrinsic motivation. We present Socially Guided Intrinsic Motivation by Demonstration (SGIM-D), an algorithm for learning in continuous, unbounded and non-preset environments. After introducing social learning and intrinsic motivation, we describe the design of our algorithm, before showing through a fishing experiment that SGIM-D efficiently combines the advantages of social learning and intrinsic motivation to gain a wide repertoire while being specialised in specific subspaces.
机译:本文研究了内部指导学习与社会互动的耦合,更具体地讲,是由于内在动机对学习的示范而产生的改善。我们介绍了社会引导的示范性内在动机(SGIM-D),一种用于在连续,无界和非预设环境中学习的算法。在介绍了社交学习和内在动机之后,我们将描述算法的设计,然后通过一个钓鱼实验证明SGIM-D有效地结合了社交学习和内在动机的优点,从而获得广泛的曲目,同时专门研究特定的子空间。

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