February 2025
Intermediate to advanced
688 pages
24h 13m
English
Part 1 gathered the tools for natural language processing and dove into machine learning with statistics-driven vector space models. You discovered that even more meaning could be found when you looked at the statistics of connections between words. You also learned about algorithms, such as latent semantic analysis (LSA), which can help make sense of those connections by gathering words into topics. But part 1 considered only linear relationships between words, and you often had to use human judgment to design feature extractors and select model parameters.
In part 2, you will peel open the “black box” that is deep learning. You will learn how to model text in deep, nonlinear ways. Chapter 5 gives ...
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