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PAC-learnability of probabilistic deterministic finite state automata in terms of variation distance

机译:基于变化距离的概率确定性有限状态自动机的PAC可学习性

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We consider the problem of PAC-learning distributions over strings, represented by probabilistic deterministic finite automata (PDFAs). PDFAs are a probabilistic model for the generation of strings of symbols, that have been used in the context of speech and handwriting recognition, and bioinfonnatics. Recent work on learning PDFAs from random examples has used the KL-divergence as the error measure; here we use the variation distance. We build on recent work by Clark and Thollard, and show that the use of the variation distance allows simplifications to be made to the algorithms, and also a strengthening of the results; in particular that using the variation distance, we obtain polynomial sample size bounds that are independent of the expected length of strings. ? 2007 Elsevier B.V. All rights reserved.
机译:我们考虑以概率确定性有限自动机(PDFAs)表示的字符串上PAC学习分布的问题。 PDFA是用于生成符号字符串的概率模型,该符号字符串已用于语音和手写识别以及生物信息学中。从随机示例中学习PDFA的最新工作已使用KL散度作为错误度量;这里我们使用变化距离。我们以Clark和Thollard最近的工作为基础,并表明使用变化距离可以简化算法,并增强结果。特别是使用变化距离,我们获得的多项式样本大小范围与预期的字符串长度无关。 ? 2007 Elsevier B.V.保留所有权利。

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