Inferring Stochastic L-Systems Using a Hybrid Greedy Algorithm

Jason Bernard, Ian McQuillan
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引用次数: 3

Abstract

Stochastic context-free Lindenmayer systems (S0L-systems) are a formal grammar system that produce sequences of strings based on parallel rewriting rules over a probability distribution. The resulting words can be treated as symbolic instructions to create visual models by simulation software. S0L-system have been used to model different natural and engineered processes. One issue with S0L-systems is the difficulty in determining an S0L-systems to model a process. Current approaches either infer S0L-systems based on aesthetics or rely on a priori expert knowledge. This work introduces PMIT-S0L, a tool for inferring S0L-systems from a sequence of strings generated by a (hidden) L-system, using a greedy algorithm hybridized with search algorithms. PMIT-S0L was evaluated using 3600 procedurally generated S0L-systems and is able to infer the test set with 100% success so long as there are 12 or less rewriting rules in total in the L-system. This makes PMIT-S0L applicable for many practical applications.
用混合贪心算法推断随机l系统
随机上下文无关林登梅尔系统(random context-free Lindenmayer system,简称sl系统)是一种基于概率分布上的并行重写规则生成字符串序列的形式化语法系统。生成的单词可以作为符号指令,通过仿真软件创建可视化模型。系统已被用于模拟不同的自然和工程过程。sql系统的一个问题是很难确定一个sql系统来对流程进行建模。当前的方法要么基于美学来推断sl系统,要么依赖于先验的专家知识。这项工作介绍了PMIT-S0L,一个从(隐藏)l系统生成的字符串序列中推断sl系统的工具,使用贪婪算法和搜索算法相结合。PMIT-S0L使用3600个程序生成的s0l系统进行评估,只要l系统中总共有12个或更少的重写规则,就能够100%成功地推断出测试集。这使得PMIT-S0L适用于许多实际应用。
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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