Overview
Learn about the fundamentals of data science through a comprehensive lecture that explores key concepts and methodologies. Begin with understanding core motivations and essential background knowledge before diving into practical applications like free-text explanations and gradient-based highlighting techniques. Master advanced topics including pairwise feature influence, concept-based explanations, data influence analysis, and contrastive editing. Conclude with important logistical information that will help structure your learning journey. The lecture systematically builds knowledge from basic principles to complex applications, providing a solid foundation in modern data science practices and analytical techniques.
Syllabus
Recording starts
Motivation
Background
Free-text explanations
Gradient-based highlighting
Pairwise feature influence
Concept-based explanations
Data influence
Contrastive editing
Logistics
Lecture ends
Taught by
UofU Data Science