Machine Learning of Spatial Data — A Critical Review

Progress, best practices & Gaps.

Photo by Scott Webb on Unsplash

Spatial data is often inappropriately handled or even ignored in Machine learning. Compared to other datasets, like time-series data, spatial data integration into machine learning algorithms is lagging.

A recent review paper highlights the current state of machine learning in spatial data, the…

--

--

--

Geospatial Data Science

Recommended from Medium

Secure Sublinear Time Differentially Private Median Computation

continuous data vs discrete data

Data Science of Coronavirus (COVID-19) with Python code

Working With Hand Written Dataset For Beginners

Effective Data Storytelling and Visualization

Elemental Knowledge of Data Science and role of a Data scientist

Analyzing Housing Prices in Airbnb

Incremental Data Migration

Get the Medium app

A button that says 'Download on the App Store', and if clicked it will lead you to the iOS App store
A button that says 'Get it on, Google Play', and if clicked it will lead you to the Google Play store
Abdishakur

Abdishakur

Writing about Geospatial Data Science, AI, ML, DL, Python, SQL, GIS | Top writer | 1m views.

More from Medium

What is Lidar Point Cloud Data?

What Is NetCDF Data and Why Is It Interesting?

Annotating Imagery at Scale with GeoVisual Search

Modifiable Areal Unit Problem — The Spatial Data Scientist’s nightmare