首页> 外文会议>Cellular Automata; Lecture Notes in Computer Science; 4173 >Automatic Detection of Go-Based Patterns in CA Model of Vegetable Populations: Experiments on Geta Pattern Recognition
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Automatic Detection of Go-Based Patterns in CA Model of Vegetable Populations: Experiments on Geta Pattern Recognition

机译:蔬菜种群CA模型中基于Go的模式的自动检测:Geta模式识别的实验

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The paper presents an empirical study aiming at evaluating and comparing several Machine Learning (ML) classification techniques in the automatic recognition of known patterns. The main motivations of this work is to select best performing classification techniques where target classes are based on the occurrence of known patterns in configurations of a forest system modeled according to Cellular Automata. Best performing ML classifiers will be adopted for the study of ecosystem dynamics within an interdisciplinary research collaboration between computer scientists, biologists and ecosystem managers (Cellular Automata For Forest Ecosystems - CAFFE project). One of the main aims of the CAFFE project is the development of an analysis method based on recognition in CA state configurations of spatial patterns whose interpretations are inspired by the Chinese Go game.
机译:本文提出了一项实证研究,旨在评估和比较几种机器学习(ML)分类技术,以自动识别已知模式。这项工作的主要动机是选择性能最佳的分类技术,其中目标类别基于根据Cellular Automata建模的森林系统配置中已知模式的出现。在计算机科学家,生物学家和生态系统管理者之间的跨学科研究合作中,将采用性能最好的ML分类器来研究生态系统动力学(森林生态系统细胞自动机-CAFFE项目)。 CAFFE项目的主要目标之一是开发一种基于CA模式状态空间结构识别的分析方法,其解释受中国围棋游戏的启发。

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