Mathematics and Spatial Analysis Notes#
This repository is a Jupyter Book collection of notes and interactive chapters covering mathematical foundations and spatial learning topics.
About This Book#
The content is organized around the repository’s current structure and TOC. It focuses on:
core Linear Algebra concepts used in spatial and machine learning applications
Calculus principles for limits, derivatives, and indeterminate forms
Optimization and regularization techniques for model fitting and generalization
Spatial learning and spatial autocorrelation methods for geographic data analysis
Education#
2019–2024 Ph.D. in Geospatial Information Sciences, University of Texas at Dallas, Texas, USA
2017–2019 M.A. in Geography, Binghamton University (SUNY), New York, USA
2013–2017 B.S. in Geographic Information Science, Yunnan University, Yunnan, China
Current Sections#
The current book sections are:
Linear Algebra
Calculus
Optimization
Spatial Learning
Links#
Personal website: https://gisyaliny.github.io/
GitHub: gisyaliny
Published book: https://gisyaliny.github.io/math/