Learning Vector Space Models with SpaCy [Online Code]

Number of Videos: 0.5 hours – 9 lessonsAuthor: Aaron KramerUser Level: IntermediateInformation representation is a fundamental aspect of computational linguistics and learning from unstructured data. This course explores vector space models, how they’re used to represent the meaning of words and documents, and how to create them using Python-based spaCy. You’ll learn about several types

Number of Videos: 0.5 hours – 9 lessons
Author: Aaron Kramer
User Level: Intermediate
Information representation is a fundamental aspect of computational linguistics and learning from unstructured data. This course explores vector space models, how they’re used to represent the meaning of words and documents, and how to create them using Python-based spaCy. You’ll learn about several types of vector space models, how they relate to each other, and how to determine which model is best for natural language processing applications like information retrieval, indexing, and relevancy rankings.

The course begins with a look at various encodings of sparse document-term matrices, moves on to dense vector representations that need to be learned, touches on latent semantic analysis, and finishes with an exploration of representation learning from neural network models with a focus on word2vec and Gensim. To get the most out of this course, learners should have intermediate level Python skills. Understand how and why vector models are used in natural language processing Discover the distributional hypothesis and its use in word and document vectors Explore term-document tf-idf, latent semantic analysis, and neural embedding models Gain experience integrating neural embedding models with spaCyAaron Kramer is a data scientist and engineer with Los Angeles based DataScience Inc. He is a spaCY contributor who holds a BA in Economics from Swarthmore College and is the author of multiple O’Reilly titles on the subject of natural language processing.
Mac Minimum System Requirements:Mac Recommended System Requirements:Processor:   AnyRAM:   AnyHard Disk:   1GBVideo Card:   AnySupported OS:   Mac El Capitan 10.11, Mac Yosemite 10.10, Mac Mavericks 10.9, Mac Mountain Lion 10.8, Mac Lion 10.7, Mac Snow Leopard 10.6, Mac Leopard 10.5, Mac OS X, Macintosh

Product Features

  • Learn Vector Space Models with SpaCy from a professional trainer on your own time at your own desk.
  • This visual training method offers users increased retention and accelerated learning.
  • Breaks even the most complex applications down into simplistic steps
  • Comes with Extensive Working Files