Complete spatial randomness
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Complete spatial randomness (CSR) describes a
point process In statistics and probability theory, a point process or point field is a collection of mathematical points randomly located on a mathematical space such as the real line or Euclidean space. Kallenberg, O. (1986). ''Random Measures'', 4th editio ...
whereby point events occur within a given study area in a completely random fashion. It is synonymous with a ''homogeneous spatial Poisson process''.O. Maimon, L. Rokach, ''Data Mining and Knowledge Discovery Handbook'' , Second Edition, Springer 2010, pages 851-852 Such a process is modeled using only one parameter \rho, i.e. the density of points within the defined area. The term complete spatial randomness is commonly used in Applied Statistics in the context of examining certain point patterns, whereas in most other statistical contexts it is referred to the concept of a spatial Poisson process.O. Maimon, L. Rokach, ''Data Mining and Knowledge Discovery Handbook'' , Second Edition, Springer 2010, pages 851-852


Model

Data in the form of a set of points, irregularly distributed within a region of space, arise in many different contexts; examples include locations of trees in a forest, of nests of birds, of nuclei in tissue, of ill people in a population at risk. We call any such data-set a spatial point pattern and refer to the locations as events, to distinguish these from arbitrary points of the region in question. The hypothesis of complete spatial randomness for a spatial point pattern asserts that the number of events in any region follows a
Poisson distribution In probability theory and statistics, the Poisson distribution is a discrete probability distribution that expresses the probability of a given number of events occurring in a fixed interval of time or space if these events occur with a known co ...
with given mean count per uniform subdivision. The events of a pattern are independently and uniformly distributed over space; in other words, the events are equally likely to occur anywhere and do not interact with each other. "Uniform" is used in the sense of following a uniform probability distribution across the study region, not in the sense of “evenly” dispersed across the study region. L. A. Waller, C. A. Gotway, ''Applied Spatial Statistics for Public Health Data'', volume 1 Wiley Chichester, 2004, pages 119–121, 123–127, 137, 139–141, 146–148, 150–151, 157, 203. There are no interactions amongst the events, as the intensity of events does not vary over the plane. For example, the independence assumption would be violated if the existence of one event either encouraged or inhibited the occurrence of other events in the neighborhood.


Distribution

The probability of finding exactly k points within the area V with event density \rho is therefore: :P(k,\rho,V) = \frac . \,\! The first moment of which, the
average In ordinary language, an average is a single number taken as representative of a list of numbers, usually the sum of the numbers divided by how many numbers are in the list (the arithmetic mean). For example, the average of the numbers 2, 3, 4, 7 ...
number of points in the area, is simply \rho V. This value is intuitive as it is the Poisson rate parameter. The probability of locating the N^ neighbor of any given point, at some radial distance r is: :P_N(r) = \frac ^N r^ e^ , where D is the number of dimensions, \lambda is a density-dependent parameter given by \lambda = \frac and \Gamma is the
gamma function In mathematics, the gamma function (represented by , the capital letter gamma from the Greek alphabet) is one commonly used extension of the factorial function to complex numbers. The gamma function is defined for all complex numbers except ...
, which when its argument is integer, is simply the factorial function. The expected value of P_N(r) can be derived via the use of the gamma function using statistical moments. The first moment is the mean distance between randomly distributed particles in D dimensions.


Applications

The study of CSR is essential for the comparison of measured point data from experimental sources. As a statistical testing method, the test for CSR has many applications in the
social sciences Social science is one of the branches of science, devoted to the study of societies and the relationships among individuals within those societies. The term was formerly used to refer to the field of sociology, the original "science of so ...
and in astronomical examinations. CSR is often the standard against which data sets are tested. Roughly described one approach to test the CSR hypothesis is the following: A. Okabe, K. Sugihara, "Spatial Analysis along Networks- Statistical and Computational Methods", volume 1 Wiley Chichester, 2012, pages 135-136 # Use statistics that are a function of the distance from every event to the next nearest event. # Firstly focus on a specific event and formulate a method for testing whether the event and the next nearest event are significantly close (or distant). # Next consider all events and formulate a method for testing whether the average distance from every event to the next nearest event is significantly short (or long). In cases where computing test statistics analytically is difficult, numerical methods, such as the
Monte Carlo method Monte Carlo methods, or Monte Carlo experiments, are a broad class of computational algorithms that rely on repeated random sampling to obtain numerical results. The underlying concept is to use randomness to solve problems that might be determi ...
simulation are employed, by simulating a stochastic process a large number of times.


References


Further reading

*{{cite book , last=Diggle , first=P. J. , year=2003 , title=Statistical Analysis of Spatial Point Patterns , edition=2nd , publisher=Academic Press , location=New York , isbn=0340740701


External links


Improvement of Inter-event Distance Tests of Randomness in Spatial Point Processes
Spatial analysis Point processes Statistical randomness Spatial processes