A nondeterministic approach to infer context free grammar from sequence

Yuan Li, Jim X. Chen
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引用次数: 2

Abstract

Grammar induction has received a lot of attention from researchers in the past decades because of its practical and theoretical impact on data compression, pattern discovery and computation theory. There are a bunch of grammar induction algorithms for a given sequence are introduced. Most existing work on learning grammar for a given sequence is based on deterministic approach. Such deterministic approaches used by grammar induction algorithms can be categorized as greedy heuristics. In addition, there are many grammars, which can be learned from a given sequence. The smallest grammar problem is defined by some researchers to evaluate different grammars learned from a given sequence by different algorithms. Such problem is proved as NP-hard. In this work, we introduce a nondeterministic approach to address grammar induction for a given sequence based on genetic algorithm. We demonstrate that our grammar induction algorithm can effectively identify smaller grammar than a well-known grammar induction algorithm. Experimental results, which are presented, illustrate that our approach and algorithm are feasible to resolve difficult problems such as identifying patterns of DNA sequence.
从序列中推断上下文无关语法的不确定性方法
语法归纳法由于其在数据压缩、模式发现和计算理论方面的实际和理论影响,在过去几十年中受到了研究者的广泛关注。针对给定序列,介绍了一系列的语法归纳算法。大多数现有的学习给定序列语法的工作都是基于确定性方法。语法归纳算法使用的这种确定性方法可以归类为贪婪启发式。此外,还有许多语法,可以从给定的序列中学习。最小语法问题被一些研究者定义为评估通过不同算法从给定序列中学习到的不同语法。这类问题被证明为np困难问题。在这项工作中,我们引入了一种基于遗传算法的非确定性方法来解决给定序列的语法归纳。我们证明,我们的语法归纳算法可以有效地识别小语法比一个知名的语法归纳算法。实验结果表明,我们的方法和算法对于解决DNA序列模式识别等难题是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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