论文标题
通过分辨率,相关性和映射熵来理解复杂的系统
Making sense of complex systems through resolution, relevance, and mapping entropy
论文作者
论文摘要
复杂的系统的特征是其成分的紧密,不平凡的相互作用,这会导致多种尺度的新兴特性。在这种情况下,实际上和概念上很难识别那些主要决定系统行为并将其与不太杰出参与者区分开来的自由度。在这里,我们解决了使用三种统计信息措施的问题:解决,相关性和映射熵。我们解决了它们之间存在的链接,从分辨率和相关性之间的既定关系以及分辨率和映射熵之间的新型联系中采取了行动;通过这些方式,我们可以以定量的方式识别系统自由度的数量和选择,这些程度保留了基于经验数据集的生成过程的最大信息内容。该方法是在免费提供的软件中实现的,它是完全笼统的,正如应用程序通过应用于三个非常多样化的系统的应用所示,即独立二进制旋转的玩具模型,金融股票市场的粗粒度表示以及对蛋白质的完全原子模拟。
Complex systems are characterised by a tight, nontrivial interplay of their constituents, which gives rise to a multi-scale spectrum of emergent properties. In this scenario, it is practically and conceptually difficult to identify those degrees of freedom that mostly determine the behaviour of the system and separate them from less prominent players. Here, we tackle this problem making use of three measures of statistical information: resolution, relevance, and mapping entropy. We address the links existing among them, taking the moves from the established relation between resolution and relevance and further developing novel connections between resolution and mapping entropy; by these means we can identify, in a quantitative manner, the number and selection of degrees of freedom of the system that preserve the largest information content about the generative process that underlies an empirical dataset. The method, which is implemented in a freely available software, is fully general, as it is shown through the application to three very diverse systems, namely a toy model of independent binary spins, a coarse-grained representation of the financial stock market, and a fully atomistic simulation of a protein.