Bayesian speech and language processing, : e-book

Bayesian speech and language processing, : e-book

Shinji Watanabe, Jen-Tzung Chien

電子ブック

巻号情報

 [新着]  : e-book
No. 刷年 所在 請求記号 資料ID 貸出区分 状況 予約人数

1

  • Cambridge Core

詳細情報

刊年

2015

G/SMD

機械可読データファイル -- リモートファイル (wr)

形態

1 online resource (xxi, 424 pages) : digital, PDF file(s)

別書名

Bayesian speech & language processing

内容注記

Machine generated contents note: Part I. General Discussion: 1. Introduction; 2. Bayesian approach; 3. Statistical models in speech and language processing; Part II. Approximate Inference: 4. Maximum a posteriori approximation; 5. Evidence approximation; 6. Asymptotic approximation; 7. Variational Bayes; 8. Markov chain Monte Carlo

注記

Title from publisher's bibliographic system (viewed on 05 Oct 2015)

With this comprehensive guide you will learn how to apply Bayesian machine learning techniques systematically to solve various problems in speech and language processing. A range of statistical models is detailed, from hidden Markov models to Gaussian mixture models, n-gram models and latent topic models, along with applications including automatic speech recognition, speaker verification, and information retrieval. Approximate Bayesian inferences based on MAP, Evidence, Asymptotic, VB, and MCMC approximations are provided as well as full derivations of calculations, useful notations, formulas, and rules. The authors address the difficulties of straightforward applications and provide detailed examples and case studies to demonstrate how you can successfully use practical Bayesian inference methods to improve the performance of information systems. This is an invaluable resource for students, researchers, and industry practitioners working in machine learning, signal processing, and speech and language processing

出版国

(en)

標題言語

英語 (eng)

本文言語

英語 (eng)

著者情報

Watanabe, Shinji (Communications engineer)

Chien, Jen-Tzung

分類

LCC:P53.815

DC23:410.1/51

件名

Language and languages -- Study and teaching -- Statistical method

Bayesian statistical decision theory

ISBN

9781107295360 (: e-book)

IDENT

https://doi.org/10.1017/CBO9781107295360