...
首页> 外文期刊>Physical review, E >Three faces of entropy for complex systems: Information, thermodynamics, and the maximum entropy principle
【24h】

Three faces of entropy for complex systems: Information, thermodynamics, and the maximum entropy principle

机译:复杂系统的熵三面:信息,热力学和最大熵原理

获取原文
获取原文并翻译 | 示例

摘要

There are at least three distinct ways to conceptualize entropy: entropy as an extensive thermodynamic quantity of physical systems (Clausius, Boltzmann, Gibbs), entropy as a measure for information production of ergodic sources (Shannon), and entropy as a means for statistical inference on multinomial processes (Jaynes maximum entropy principle). Even though these notions represent fundamentally different concepts, the functional form of the entropy for thermodynamic systems in equilibrium, for ergodic sources in information theory, and for independent sampling processes in statistical systems, is degenerate, H(p) = -∑_i p_i log p_i . For many complex systems, which are typically history-dependent, nonergodic, and nonmultinomial, this is no longer the case. Here we show that for such processes, the three entropy concepts lead to different functional forms of entropy, which we will refer to as S_(EXT) for extensive entropy, S_(IT) for the source information rate in information theory, and S_(MEP) for the entropy functional that appears in the so-called maximum entropy principle, which characterizes the most likely observable distribution functions of a system. We explicitly compute these three entropy functionals for three concrete examples: for Pólya urn processes, which are simple self-reinforcing processes, for sample-spacereducing (SSR) processes, which are simple history dependent processes that are associated with power-law statistics, and finally for multinomial mixture processes.
机译:将熵概念化至少三种不同的方法:熵作为物理系统的广泛热力学数量(Clausius,Boltzmann,Gibbs),熵作为ergodic来源(Shannon)的信息产生的措施,以及熵作为统计推理的手段论多项过程(Jaynes最大熵原理)。尽管这些概念基本上代表了基本不同的概念,但是在统计系统中均衡的热力学系统的熵的熵的功能形式,以及在统计系统中的独立采样过程,是退化的,h(p)=-Σ_ip_i log P_I。对于许多复杂的系统,通常是历史依赖性的,不经转化性和非审查,这不再是这种情况。在这里,我们表明,对于此类过程,三个熵概念导致不同的功能形式的熵,我们将参考信息理论中的源信息速率的广泛熵,S_(IT)的S_(ext),以及S_( MEP)对于出现在所谓的最大熵原理中的熵功能,其特征是系统的最可能观察到的分配功能。我们明确地计算了三个具体示例的这三个熵功能:对于PólyaURN进程,这是简单的自我加强过程,用于样本 - 空间(SSR)进程,这是与幂律统计相关的简单历史依赖过程,以及最后用于多项混合物过程。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号