Spatial statistics empowers you to go beyond visual analysis to answer questions confidently and make data-driven decisions.
Thanks to the data and computational power now at our fingertips, data science is in every aspect of our lives. But with so many algorithms and buzzwords floating around, where do you start to solve complex problems or figure out where to go next?
There has never been a more exciting time to learn about spatial statistics. Spatial statistics uses an aspect of geography that helps you quantify patterns and relationships so that you can feel confident in your analysis.
Spatial Statistics Illustrated is an introductory book for learning the concepts behind the powerful spatial statistics tools in Arc GIS.
With approachable explanations and uncomplicated drawings, Spatial Statistics Illustrated gives readers an accessible understanding of some of the most widely used spatial statistics methods, including how they work and when to use them. In a friendly, conversational tone, the authors share techniques that can help you explore your data in meaningful ways; quantify patterns and relationships; understand trends, and make informed, impactful decisions.
This book has something for everyone analyzing data, including:
- seasoned data scientists looking to explore the value that spatial analysis offers
- GIS analysts looking to expand their spatial statistics skill set
- new GIS users discovering the value of spatial statistics
Spatial Statistics Illustrated is a perfect complement to more traditional, technical statistics and spatial statistics texts and is also ideal as supplemental reading for academic courses.
Based on the popular series of Spatial Statistics workshops presented by the authors at the annual Esri User Conference, Spatial Statistics Illustrated welcomes readers into the unparalleled world of spatial statistics.
Over de auteur
Flora Vale is a Product Engineer on Esri’s Spatial Analysis and Data Science team. She is passionate about using spatial analysis and data visualization to answer questions and solve problems. In addition to building software, Flora loves teaching analytical methods through conceptual illustrations, and believes that anyone can learn how to think spatially and make data-drive decisions. Flora studied Geography and GIS at University of Maryland, and is currently pursuing a Ph D in Information Systems and Technology at Claremont Graduate University.