Learn about vector semantics and embeddings in this comprehensive lecture that explores the fundamental concepts and applications of representing words and meanings in vector space. Dive into the mathematical foundations and practical implementations of word embeddings, understanding how they capture semantic relationships and enable natural language processing tasks. Discover techniques for creating and manipulating word vectors, exploring semantic similarity, and leveraging these powerful tools for various language understanding applications.
Overview
Syllabus
Vector semantics & embeddings
Taught by
UofU Data Science