Geographical data science and spatial data analytics in R : an introduction / Lex Comber, Chris Brunsdon.
Material type: TextSeries: Spatial analytics and gis ; book 6Publication details: Carlifonia : SAGE publications, c2021Edition: 1st edDescription: xv, 339pages ill. ; 22cmISBN:- 9781526449368
- 9781526449351
- QA276.45 .R3 .C66 2021
Item type | Current library | Collection | Call number | Copy number | Status | Date due | Barcode | |
---|---|---|---|---|---|---|---|---|
Books | Zetech Library - TRC General Stacks | Non-fiction | QA276.45 .R3 ,C66 2021 (Browse shelf(Opens below)) | C2 | Available | Z012287 | ||
Books | Zetech Library - TRC General Stacks | Non-fiction | QA276.45 .R3 ,C66 2021 (Browse shelf(Opens below)) | C1 | Available | Z012286 |
Browsing Zetech Library - TRC shelves, Shelving location: General Stacks, Collection: Non-fiction Close shelf browser (Hides shelf browser)
QA 276.4 .H23 1991 Statistics / | QA 276.4 .S23 1994 SAS language: | QA276.45 .R3 ,C66 2021 Geographical data science and spatial data analytics in R : an introduction / | QA276.45 .R3 ,C66 2021 Geographical data science and spatial data analytics in R : an introduction / | QA276.45.R3 .C43 2015 R for Marketing Research and Analytics / | QA276.45.R3 .L87 2019 Mastering Spark with R : the complete guide to large-scale analysis and modeling / | QA276.45.R3 .P73 2013 Big data analytics with r and hadoop 3: set up an integrated infrastructure of R and hadoop to turn your data analytics into big data analytics / |
Introduction to geographical data science and spatila data analytics -- Data and spatial data in R -- A framework for processing data: the piping syntax and dplyr -- Creating databases and querries in R -- EDA and finding structure in data -- Modelling and exploration of data -- Applications of machine learning to spatial data -- Alternative spatial summaries and visualisations -- Epilogue on the principles of spatial data analysis
"We are in an age of big data where all of our everyday interactions and transactions generate data. Much of this data is spatial - it is collected some-where - and identifying analytical insight from trends and patterns in these increasing rich digital footprints presents a number of challenges. These include the questioning of classical statistical hypothesis testing (with Big Data almost everything is significant), the importance of data visualizations to support robust hypothesis development and the role of spatial data analytics to link different big spatial datasets and to support trend identification. This book builds on the tools and techniques described in An Introduction to R for Spatial Analysis and Mapping by Brunsdon and Comber, extending these into Big Spatial Data and Data Analytics. It reflects a number of recent developments in both thinking about Big Spatial Data and in handling such data in R, the open source statistical software, which have significantly increased R's ability to handle, process and visualize big data. As yet there are no text books which reflect these recent developments in data handling in R, that develop robust inferential methods for Big Data analysis, that include spatial operations in data analytics or that describe advanced spatial manipulations and visualizations of highly dimensional, spatially referenced data. This book addresses these gaps"--
There are no comments on this title.