Complex high-dimensional co-occurrence data are increasingly popular from a complex system of interacting physical, biological and social processes in discretely indexed modifiable areal units or continuously indexed locations of a study region for landscape-based mechanism. Modeling, predicting and interpreting complex co-occurrences are very general and fundamental problems of statistical and machine learning in a broad variety of real-world modern applications. Probability and conditional probability of co-occurrence are introduced by being defined in a general setting with set functions to develop a rigorous measure-theoretic foundation for the inherent challenge of data sparseness. The data sparseness is a main challenge inherent to probabilistic modeling and reasoning of co-occurrence in statistical inference. The behavior of a class of natural integrals called E-integrals is investigated based on the defined conditional probability of co-occurrence. The results on the properties of E-integral are presented. The paper offers a novel measure-theoretic framework where E-integral as a basic measure-theoretic concept can be the starting point for the expectation functional approach preferred by Whittle (1992) and Pollard (2001) to the development of probability theory for the inherent challenge of co-occurrences emerging in modern high-dimensional co-occurrence data problems and opens the doors to more sophisticated and interesting research in complex high-dimensional co-occurrence data science.
翻译:复杂的物理、生物和社会过程相互作用的物理、生物和社会过程的复杂系统越来越普遍地使用复杂、复杂、高度共生共生的数据,这种数据在以地貌为基础的机制下,在不统一指数化的、可变的、可变的、复合的、可变的、可动的、可动的、可动的、可动的、可动的、可动的、可动的、可动的、可动的、可动的、可动的、可动的、可动的、从一个复杂的系统中确定,在一个具有设定功能,为数据稀少的内在挑战制定严格的计量理论基础。数据稀少是统计推论中一种概率性建模和共同推理所固有的一项主要挑战。一个称为“E-I-I-I-I-I-I”的一类自然整体行为,根据界定的有条件的共生可能性,对统计学的特性和有条件的概率进行调查。本文提供了一个新的计量-理论框架,其中E-I-I-I-I-S-I-I-I-I-Ient-Icental-Orental-Orvicental-Icreal-Orview-Orview-Orview-Irview-I-Ig-Irview-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-O-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-I-C-I-C-C-I-I-I-I-C-C-I-C-C-I-I-I-I-I-C-C-I-I-I-I-I-I-I-I-I-I-I-I-I-C-C-C-C-C-C-I-I-I-C-I-I-I-C-C-C-C-C-C-I-I-C-C-C-C-I