中文

Methods and Techniques of Complex Systems Science: An Overview

适应与自组织系统 2007-05-23 v4 统计力学 混沌动力学 元胞自动机与格子气 数据分析、统计与概率 定量方法

摘要

In this chapter, I review the main methods and techniques of complex systems science. As a first step, I distinguish among the broad patterns which recur across complex systems, the topics complex systems science commonly studies, the tools employed, and the foundational science of complex systems. The focus of this chapter is overwhelmingly on the third heading, that of tools. These in turn divide, roughly, into tools for analyzing data, tools for constructing and evaluating models, and tools for measuring complexity. I discuss the principles of statistical learning and model selection; time series analysis; cellular automata; agent-based models; the evaluation of complex-systems models; information theory; and ways of measuring complexity. Throughout, I give only rough outlines of techniques, so that readers, confronted with new problems, will have a sense of which ones might be suitable, and which ones definitely are not.

关键词

引用

@article{arxiv.nlin/0307015,
  title  = {Methods and Techniques of Complex Systems Science: An Overview},
  author = {Cosma Rohilla Shalizi},
  journal= {arXiv preprint arXiv:nlin/0307015},
  year   = {2007}
}

备注

96 pages, 8 figures. Versions 2 and 3: corrects minor typographical errors. Version 4: Expanded examples, updated references (through late 2004), matches published version up to changes in formatting