Geospatial Data Science: Statistics and Machine Learning I

Category: Tutorial

Posted on 2021-03-10, by perica123.



Geospatial Data Science: Statistics and Machine Learning I
.MP4, AVC, 1280x720, 30 fps | English, AAC, 2 Ch | 12h 6m | 6.37 GB
Instructor: Michael Miller

Vector data analysis in Python with GeoPandas, statsmodels, Scikit-learn, and PySAL

What you'll learn

Basic concepts of statistical modeling
Pandas tools for data preparation
Feature engineering methods
Linear Regression
Logistic Regression
Other supervised classification methods
Unsupervised classification methods
Non-parametric regression
Dealing with spatial autocorrelation


You should be familiar with Python, GeoPandas, and Jupyter Notebooks and have a working environment. This knowledge can be gained through my courses "Survey of Python for GIS applications" and "Geospatial Data Science with Python: GeoPandas"
You should have some familiarity with basic statistics, especially Linear Regression.


In this course I demonstrate open source python packages for the analysis of vector-based geospatial data. I use Jupyter Notebooks as an interactive Python environment. GeoPandas is used for reading and storing geospatial data, exploratory data analysis, preparing data for use in statistical models (feature engineering, dealing with outlier and missing data, etc.), and simple plotting. Statsmodels is used for statistical inference as it provides more detail on the explanatory power of individual explanatory variables and a framework for model selection. Scikit-learn is used for machine learning applications as it includes many advanced machine learning algorithms, as well as tools for cross-validation, regularization, assessing model performance, and more.

This is a project-based course. I use real data related to biodiversity in Mexico and walk through the entire process, from both a statistical inference and machine learning perspective. I use linear regression as the basis for developing conceptual understanding of the methodology and then also discuss Poisson Regression, Logistic Regression, Decision trees, Random Forests, K-NN classification, and unsupervised classification methods such as PCA and K-means clustering.

Throughout the course, the focus is on geospatial data and special considerations for spatial data such as spatial joins, map plotting, and dealing with spatial autocorrelation.

Important concepts including model selection, maximum likelihood estimation, differences between statistical inference and machine learning and more are explained conceptually in a manner intended for geospatial professionals rather than statisticians.

Who this course is for:

Geospatial professionals who are interested in learning more about the machine learning tools for vector data in the Python geospatial stack.

More Info


Sponsored High Speed Downloads
9699 dl's @ 3115 KB/s
Download Now [Full Version]
8555 dl's @ 2155 KB/s
Download Link 1 - Fast Download
7965 dl's @ 3132 KB/s
Download Mirror - Direct Download

Search More...
Geospatial Data Science: Statistics and Machine Learning I

Search free ebooks in!

Download this book

No active download links here?
Please check the description for download links if any or do a search to find alternative books.

Related Books

  1. Ebooks list page : 46775
  2. 2021-03-09Geospatial Data Science: Statistics and Machine Learning
  3. 2021-03-09Geospatial Data Science Statistics and Machine Learning I
  4. 2021-07-23Becoming a Data Head How to Think, Speak, and Understand Data Science, Statistics, and Machine Learning
  5. 2020-04-11Python Programming: 2 Books in 1: Python for Data Analysis and Science with Big Data Analysis, Statistics and Machine Learning.
  6. 2022-08-13Data Science, AI, and Machine Learning in Drug Development
  7. 2022-06-28Full Data Science Interview For Machine Learning, Panda, Python, R Language, SQL, DBMS, RDBMS And More
  8. 2022-06-23Multiblock Data Fusion in Statistics and Machine Learning Applications in the Natural and Life Scien...
  9. 2020-12-21Statistics and Machine Learning Methods for EHR Data From Data Extraction to Data Analytics
  10. 2022-04-22Probability for Statistics and Machine Learning: Fundamentals and Advanced Topics (Springer Texts in Statistics) - Removed
  11. 2021-09-09AI at War How Big Data, Artificial Intelligence, and Machine Learning Are Changing Naval Warfare
  12. 2021-09-03Regression Modeling With Statistics And Machine Learning In Python
  13. 2021-09-03Regression Analysis For Statistics And Machine Learning In R
  14. 2021-08-15Data Structures Algorithms and Machine Learning Optimization Sneak Peek
  15. 2021-08-08Data Structures Algorithms and Machine Learning Optimization Sneak Peek
  16. 2021-08-06Handbook Of Financial Econometrics, Mathematics, Statistics, And Machine Learning
  18. 2021-07-20Packt Regression Analysis for Statistics and Machine Learning in R-XQZT
  19. 2021-07-20Packt Regression Modeling with Statistics and Machine Learning in Python-ZH
  20. 2021-06-30Data Structures, Algorithms, and Machine Learning Optimization


No comments for "Geospatial Data Science: Statistics and Machine Learning I".

    Add Your Comments
    1. Download links and password may be in the description section, read description carefully!
    2. Do a search to find mirrors if no download links or dead links.
    Back to Top