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Using Pseudo-stochastic Rational Languages in Probabilistic Grammatical Inference

机译:在概率语法推理中使用伪随机有理语言

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In probabilistic grammatical inference, a usual goal is to infer a good approximation of an unknown distribution P called a stochastic language. The estimate of P stands in some class of probabilistic models such as probabilistic automata (PA). In this paper, we focus on probabilistic models based on multiplicity automata (MA). The stochastic languages generated by MA are called rational stochastic languages; they strictly include stochastic languages generated by PA and admit a very concise canonical representation. Despite the fact that this class is not recursively enumerable, it is efficiently identifiable in the limit by using the algorithm DEES, introduced by the authors in a previous paper. However, the identification is not proper and before the convergence of the algorithm, DEES can produce MA that do not define stochastic languages. Nevertheless, it is possible to use these MA to define stochastic languages. We show that they belong to a broader class of rational series, that we call pseudo-stochastic rational languages. The aim of this paper is twofold. First we provide a theoretical study of pseudo-stochastic rational languages, the languages output by DEES, showing for example that this class is decidable within polynomial time. Second, we have carried out experiments to compare DEES to classical inference algorithms (ALERGIA and MDI). They show that DEES outperforms them in most cases.
机译:在概率语法推断中,通常的目标是推断出称为随机语言的未知分布P的良好近似值。 P的估计代表某些类型的概率模型,例如概率自动机(PA)。在本文中,我们专注于基于多重自动机(MA)的概率模型。 MA生成的随机语言称为有理随机语言。它们严格包含PA生成的随机语言,并接受非常简洁的规范表示。尽管该类不是可递归枚举的,但是通过使用作者在先前论文中介绍的算法DEES,可以在极限中有效地识别该类。但是,这种识别是不正确的,并且在算法收敛之前,DEES可能会产生未定义随机语言的MA。但是,可以使用这些MA定义随机语言。我们表明它们属于更广泛的有理序列类,我们称其为伪随机有理语言。本文的目的是双重的。首先,我们提供对伪随机有理语言(由DEES输出的语言)的理论研究,例如,表明此类可在多项式时间内确定。其次,我们进行了实验以将DEES与经典推理算法(ALERGIA和MDI)进行比较。它们表明,在大多数情况下,DEES的性能均优于它们。

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