Neural Network Methods for Natural Language Processing
Table of Contents:PrefaceAcknowledgmentsIntroductionLearning Basics and Linear ModelsFrom Linear Models to Multi-layer PerceptronsFeed-forward Neural...
Also Available in:
- Amazon
- Audible
- Barnes & Noble
- AbeBooks
- Kobo
More Details
Table of Contents:
Preface
Acknowledgments
Introduction
Learning Basics and Linear Models
From Linear Models to Multi-layer Perceptrons
Feed-forward Neural Networks
Neural Network Training
Features for Textual Data
Case Studies of NLP Features
From Textual Features to Inputs
Language Modeling
Pre-trained Word Representations
Using Word Embeddings
Case Study: A Feed-forward Architecture for Sentence Meaning Inference
Ngram Detectors: Convolutional Neural Networks
Recurrent Neural Networks: Modeling Sequences and Stacks
Concrete Recurrent Neural Network Architectures
Modeling with Recurrent Networks
Conditioned Generation
Modeling Trees with Recursive Neural Networks
Structured Output Prediction
Cascaded, Multi-task and Semi-supervised Learning
Conclusion
Bibliography
Author's Biography
- Format:ebook
- Pages:309 pages
- Publication:2017
- Publisher:Morgan & Claypool
- Edition:
- Language:eng
- ISBN10:162705295X
- ISBN13:9781627052955
- kindle Asin:162705295X









