Learning Path: R: Powerful Data Analysis with R
Training
Online
Description
-
Type
Training
-
Methodology
Online
-
Class hours
10h
-
Start date
Different dates available
"There’s an increasing number of data being produced every day. This has led to the demand for skilled professionals who can analyze these data and make decisions. R is one of the popular tools which is widely used by data analysts for performing data analysis on real-world data.............................."
Facilities
Location
Start date
Start date
About this course
"Import and export data in various formats in RPerform advanced statistical data analysisVisualize your data on Google or OpenStreetMapEnhance your data analysis skills and learn to handle even the most complex datasetsLearn how to handle vector and raster data in RDelve into data visualization and regression-based methods with R/RStudio.Tackle multiple linear regression with RExplore multinomial logistic regression with categorical response variables at three levels"
This Video Learning Path is for those who are familiar with R and want to learn data analysis from scratch to an advanced level.
"You need to be familiar with the R programming language.You should have RStudio installed on your system."
"-100% online -Access to the course for life -30 days warranty money back -Available from desktop or mobile app -Can begin and finish the course any time -Can repeat the course any times"
Reviews
This centre's achievements
All courses are up to date
The average rating is higher than 3.7
More than 50 reviews in the last 12 months
This centre has featured on Emagister for 3 years
Subjects
- Interpretation
- spatial
- Spatial Distribution
- Database
- Datanalysis
- Data
- Raster format
- Raster data
- WebGIS
- WebGIS system
- Code
- Geocoding
- Geocoding Information
- Interactive visualization
- Geographic plots
- R Studio
- Modeling
- Mapping
- Dtataset
- ESRI
Course programme
The Course Overview
Importing Data from Tables (read.table)
Downloading Open Data from FTP Sites
Fixed-Width Format
Importing with read.lines (The Last Resort)
Cleaning Your Data
Loading the Required Packages
Importing Vector Data (ESRI shp and GeoJSON)
Transforming from data.frame to SpatialPointsDataFrame
Understanding Projections
Basic time/dates formats
Introducing the Raster Format
Reading Raster Data in NetCDF
Mosaicking
Stacking to Include the Temporal Component
Exporting Data in Tables
Exporting Vector Data (ESRI shp File)
Exporting Rasters in Various Formats (GeoTIFF, ASCII Grids)
Exporting Data for WebGIS Systems (GeoJSON, KML)
Preparing the Dataset
Measuring Spread (Standard Deviation and Standard Distance)
Understanding Your Data with Plots
Plotting for Multivariate Data
Finding Outliers
Introduction
Re-Projecting Your Data
Intersection
Buffer and Distance
Union and Overlay
Introduction
Converting Vector/Table Data into Raster
Subsetting and Selection
Filtering
Raster Calculator
Plotting Basics
Adding Layers
Color Scale
Creating Multivariate Plots
Handling the Temporal Component
Introduction
Plotting Vector Data on Google Maps
Adding Layers
Plotting Raster Data on Google Maps
Using Leaflet to Plot on Open Street Maps
Introduction
Importing Data from the World Bank
Adding Geocoding Information
Concluding Remarks
Theoretical Background
Introduction
Intensity and Density
Spatial Distribution
Modelling
Theoretical Background
Data Preparation
K-Means Clustering
Optimal Number of Clusters
Hierarchical Clustering
Concluding
Theoretical Background
Reading Time-Series in R
Subsetting and Temporal Functions
Decomposition and Correlation
Forecasting
Theoretical Background
Data Preparation
Mapping with Deterministic Estimators
Analyzing Trend and Checking Normality
Variogram Analysis
Mapping with kriging
Theoretical Background
Dataset
Linear Regression
Regression Trees
Support Vector Machines
Test Your Knowledge
Mastering Data Analysis with R
The Course Overview
Getting Started and Data Exploration with R/RStudio
Introduction to Visualization
Interactive Visualization
Geographic Plots
Advanced Visualization
Getting Introductory Concepts
Data Partitioning with R
Multiple Linear Regression with R
Multicollinearity Issues
Logistic Regression with Categorical Response Variables at two Levels
Logistic Regression Model and Interpretation
Misclassification Error and Confusion Matrix
ROC Curves
Prediction and Model Assessment
Multinomial Logistic Regression with Categorical Response Variables at 3Levels
Multinomial Logistic Regression Model and Its Interpretation
Misclassification Error and Confusion Matrix
Prediction and Model Assessment
Ordinal Logistic Regression with R
Ordinal Logistic Regression Model and Interpretation
The Misclassification Error and Confusion Matrix"
Learning Path: R: Powerful Data Analysis with R