论文标题
通过简单复合物和持续同源性进行模型比较
Model comparison via simplicial complexes and persistent homology
论文作者
论文摘要
在许多科学和技术环境中,我们对适当数学模型的结构和细节有很差的理解。因此,我们经常需要比较不同的模型。有了可用的数据,我们可以使用正式的统计模型选择来比较和对比不同数学模型描述此类数据的能力。但是,缺乏比较不同模型\ emph {a先验}的严格方法。在这里,我们开发并说明了两种这样的方法,这些方法使我们能够以系统的方式比较模型结构{{通过简单复合物来表示模型}。使用简单代数拓扑的发达概念,我们根据模型的简单表示定义了一个距离。使用持续的同源性使用平坦的过滤提供了模型的替代表示,作为持久间隔,代表模型的结构,我们也可以从中获得模型之间的距离。然后,我们扩展了这种模型距离的度量,以研究模型等效性的概念,以确定模型的概念相似性。我们将方法应用于模型比较,以证明位置信息模型与发展生物学的图灵模型之间的等效性,这构成了两类模型的新颖观察结果,这些模型先前被认为是无关的。
In many scientific and technological contexts we have only a poor understanding of the structure and details of appropriate mathematical models. We often, therefore, need to compare different models. With available data we can use formal statistical model selection to compare and contrast the ability of different mathematical models to describe such data. There is, however, a lack of rigorous methods to compare different models \emph{a priori}. Here we develop and illustrate two such approaches that allow us to compare model structures in a systematic way {by representing models in terms of simplicial complexes}. Using well-developed concepts from simplicial algebraic topology, we define a distance between models based on their simplicial representations. Employing persistent homology with a flat filtration provides for alternative representations of the models as persistence intervals, which represent the structure of the models, from which we can also obtain the distances between models. We then expand on this measure of model distance to study the concept of model equivalence in order to determine the conceptual similarity of models. We apply our methodology for model comparison to demonstrate an equivalence between a positional-information model and a Turing-pattern model from developmental biology, constituting a novel observation for two classes of models that were previously regarded as unrelated.