ArcGIS Desktop

  • ArcGIS Pro
  • ArcMap

  • My Profile
  • Help
  • Sign Out
ArcGIS Desktop

ArcGIS Online

The mapping platform for your organization

ArcGIS Desktop

A complete professional GIS

ArcGIS Enterprise

GIS in your enterprise

ArcGIS Developers

Tools to build location-aware apps

ArcGIS Solutions

Free template maps and apps for your industry

ArcGIS Marketplace

Get apps and data for your organization

  • Documentation
  • Support
Esri
  • Sign In
user
  • My Profile
  • Sign Out

ArcMap

  • Home
  • Get Started
  • Map
  • Analyze
  • Manage Data
  • Tools
  • Extensions

Examine the distribution of your data

Available with Geostatistical Analyst license.

Most of the interpolation methods provided by Geostatistical Analyst do not require the data to be normally distributed, although in this case the prediction map may not be optimal. However, certain kriging methods require the data to be approximately normally distributed (close to a bell-shaped curve). In particular, quantile and probability maps created using ordinary, simple, or universal kriging assume that the data comes from a multivariate normal distribution. In addition, simple kriging models, which are used as a basis for geostatistical simulation (see Gaussian Geostatistical Simulations for more information) should use data that is normally distributed or include a normal score transformation as part of the model to ensure this.

Normally distributed data has a probability density function that looks like the one shown in the following diagram:

Normal distribution example

The Histogram and Normal QQ plot tools are designed to help you explore the distribution of your data, and they include different data transformations (Box-Cox, logarithmic, and arcsine) so that you can assess the effects they have on the data. To learn more about the transformations that are available in these tools, see Box-Cox, arcsine, and log transformations.

All kriging methods rely on the assumption of stationarity. This assumption requires, in part, that all data values come from distributions that have the same variability. Data transformations can also be used to satisfy this assumption of equal variability. For more information on stationarity, see Random processes with dependence.

ArcGIS Desktop

  • Home
  • Documentation
  • Support

ArcGIS

  • ArcGIS Online
  • ArcGIS Desktop
  • ArcGIS Enterprise
  • ArcGIS
  • ArcGIS Developer
  • ArcGIS Solutions
  • ArcGIS Marketplace

About Esri

  • About Us
  • Careers
  • Esri Blog
  • User Conference
  • Developer Summit
Esri
Tell us what you think.
Copyright © 2021 Esri. | Privacy | Legal