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Learning Rational Stochastic Tree Languages

机译:学习理性随机树语语言

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We consider the problem of learning stochastic tree languages, i.e. probability distributions over a set of trees T(F), from a sample of trees independently drawn according to an unknown target P. We consider the case where the target is a rational stochastic tree language, i.e. it can be computed by a rational tree series or, equivalently, by a multiplicity tree automaton. In this paper, we provide two contributions. First, we show that rational tree series admit a canonical representation with parameters that can be efficiently estimated from samples. Then, we give an inference algorithm that identifies the class of rational stochastic tree languages in the limit with probability one.
机译:我们考虑学习随机树语的问题,即通过根据未知目标P独立绘制的树木样本来学习随机树语的概率分布。我们考虑目标是理性随机树语的情况,即它可以由Rational Tree系列或等效地由多个树自动机计算。在本文中,我们提供了两项贡献。首先,我们表明Rational Trey系列承认可以从样本有效地估计的参数的规范表示。然后,我们提供了一种推理算法,其识别概率1的极限中的Rational随机树语类别。

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