Learning vector space models with SpaCy build dense vector representations of text, and train them using Gensim

"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 lea...

Full description

Bibliographic Details
Main Author: Kramer, Aaron
Format: eBook
Language:English
Published: [Place of publication not identified] O'Reilly Media 2017
Subjects:
Online Access:
Collection: O'Reilly - Collection details see MPG.ReNa
LEADER 02384nmm a2200313 u 4500
001 EB001931056
003 EBX01000000000000001093958
005 00000000000000.0
007 cr|||||||||||||||||||||
008 210123 ||| eng
050 4 |a QA76.9.N38 
100 1 |a Kramer, Aaron 
245 0 0 |a Learning vector space models with SpaCy  |b build dense vector representations of text, and train them using Gensim  |c with Aaron Kramer 
260 |a [Place of publication not identified]  |b O'Reilly Media  |c 2017 
300 |a 1 streaming video file (32 min., 32 sec.)  |b digital, sound, color 
653 |a Natural Language Processing 
653 |a Python (Computer program language) / http://id.loc.gov/authorities/subjects/sh96008834 
653 |a Natural language processing (Computer science) / fast / (OCoLC)fst01034365 
653 |a Traitement automatique des langues naturelles 
653 |a Python (Langage de programmation) 
653 |a Python (Computer program language) / fast / (OCoLC)fst01084736 
653 |a Natural language processing (Computer science) / http://id.loc.gov/authorities/subjects/sh88002425 
041 0 7 |a eng  |2 ISO 639-2 
989 |b OREILLY  |a O'Reilly 
500 |a Title from title screen (viewed April 11, 2017). - Date of publication from resource description page 
856 4 0 |u https://learning.oreilly.com/videos/~/9781491986042/?ar  |x Verlag  |3 Volltext 
082 0 |a 500 
082 0 |a 000 
520 |a "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."--Resource description page