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An adaptive probabilistic graphical model for representing skills in PbD settings

机译:用于表示PbD设置中的技能的自适应概率图形模型

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Understanding and efficiently representing skills is one of the most important problems in a general Programming by Demonstration (PbD) paradigm. We present Growing Hierarchical Dynamic Bayesian Networks (GHDBN), an adaptive variant of the general DBN model able to learn and to represent complex skills. The structure of the model, in terms of number of states and possible transitions between them, is not needed to be known a priori. Learning in the model is performed incrementally and in an unsupervised manner.
机译:在一般的“按演示编程”(PbD)范例中,理解并有效地表示技能是最重要的问题之一。我们提出了日益增长的动态贝叶斯网络(GHDBN),它是通用DBN模型的自适应变体,能够学习并代表复杂的技能。无需事先知道状态数量和状态之间可能转换的模型结构。模型中的学习是在无监督的情况下逐步执行的。

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