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Regular version of the site
2022/2023

Topological Data Analysis

Type: Optional course (faculty)
When: 3, 4 module
Open to: students of all HSE University campuses
Instructors: Vasily Gorbounov
Language: English
ECTS credits: 6
Contact hours: 72

Course Syllabus

Abstract

Topological Data Analysis (TDA) is a field that lies at the intersection of data analysis, algebraic topology, computational geometry, computer science, statistics, and other related areas. The main goal of TDA is to use ideas and results from geometry and topology to develop tools for studying qualitative features of data. To achieve this goal, one needs precise definitions of qualitative features, tools to compute them in practice, and some guaranteeabout the robustness of those features. One way to address all three points is a method in TDA called persistent homology (PH). This method is appealing for applications because it is based on algebraic topology, which gives a well-understood theoretical framework to study qualitative features of data with complex structure, is computable via linear algebra, and is robust with respect to small perturbations in input data