Semi-Supervised Learning and Domain Adaptation in Natural Language Processing

Semi-Supervised Learning and Domain Adaptation in Natural Language Processing
Author :
Publisher : Springer Nature
Total Pages : 93
Release :
ISBN-10 : 9783031021497
ISBN-13 : 3031021495
Rating : 4/5 (495 Downloads)

Book Synopsis Semi-Supervised Learning and Domain Adaptation in Natural Language Processing by : Anders Søgaard

Download or read book Semi-Supervised Learning and Domain Adaptation in Natural Language Processing written by Anders Søgaard and published by Springer Nature. This book was released on 2022-05-31 with total page 93 pages. Available in PDF, EPUB and Kindle. Book excerpt: This book introduces basic supervised learning algorithms applicable to natural language processing (NLP) and shows how the performance of these algorithms can often be improved by exploiting the marginal distribution of large amounts of unlabeled data. One reason for that is data sparsity, i.e., the limited amounts of data we have available in NLP. However, in most real-world NLP applications our labeled data is also heavily biased. This book introduces extensions of supervised learning algorithms to cope with data sparsity and different kinds of sampling bias. This book is intended to be both readable by first-year students and interesting to the expert audience. My intention was to introduce what is necessary to appreciate the major challenges we face in contemporary NLP related to data sparsity and sampling bias, without wasting too much time on details about supervised learning algorithms or particular NLP applications. I use text classification, part-of-speech tagging, and dependency parsing as running examples, and limit myself to a small set of cardinal learning algorithms. I have worried less about theoretical guarantees ("this algorithm never does too badly") than about useful rules of thumb ("in this case this algorithm may perform really well"). In NLP, data is so noisy, biased, and non-stationary that few theoretical guarantees can be established and we are typically left with our gut feelings and a catalogue of crazy ideas. I hope this book will provide its readers with both. Throughout the book we include snippets of Python code and empirical evaluations, when relevant.


Semi-Supervised Learning and Domain Adaptation in Natural Language Processing Related Books

Semi-Supervised Learning and Domain Adaptation in Natural Language Processing
Language: en
Pages: 93
Authors: Anders Søgaard
Categories: Computers
Type: BOOK - Published: 2022-05-31 - Publisher: Springer Nature

DOWNLOAD EBOOK

This book introduces basic supervised learning algorithms applicable to natural language processing (NLP) and shows how the performance of these algorithms can
Semisupervised Learning for Computational Linguistics
Language: en
Pages: 322
Authors: Steven Abney
Categories: Business & Economics
Type: BOOK - Published: 2007-09-17 - Publisher: CRC Press

DOWNLOAD EBOOK

The rapid advancement in the theoretical understanding of statistical and machine learning methods for semisupervised learning has made it difficult for nonspec
Semi-Supervised Learning
Language: en
Pages: 525
Authors: Olivier Chapelle
Categories: Computers
Type: BOOK - Published: 2010-01-22 - Publisher: MIT Press

DOWNLOAD EBOOK

A comprehensive review of an area of machine learning that deals with the use of unlabeled data in classification problems: state-of-the-art algorithms, a taxon
Introduction to Semi-Supervised Learning
Language: en
Pages: 116
Authors: Xiaojin Geffner
Categories: Computers
Type: BOOK - Published: 2022-05-31 - Publisher: Springer Nature

DOWNLOAD EBOOK

Semi-supervised learning is a learning paradigm concerned with the study of how computers and natural systems such as humans learn in the presence of both label
Supervised and Unsupervised Learning for Data Science
Language: en
Pages: 191
Authors: Michael W. Berry
Categories: Technology & Engineering
Type: BOOK - Published: 2019-09-04 - Publisher: Springer Nature

DOWNLOAD EBOOK

This book covers the state of the art in learning algorithms with an inclusion of semi-supervised methods to provide a broad scope of clustering and classificat