Packt Python Text Processing with NLTK 2.0 Cookbook 272pages software manual

Packt Python Text Processing with NLTK 2.0 Cookbook 272pages software manual

EAN: 9781849513609
MPN: 978-1-84951-360-9
🚚 Select the country of delivery:
Delivery from:
Germany
Updating price ... 📣 Send Price inquiry Не поставляется
Delivery cost & estimated delivery time:
От
days

Where to buy and prices (Advertising *)

On Top
в наличии
* Alle Preise inkl. der jeweils geltenden gesetzlichen Mehrwertsteuer, ggfs. zzgl. Versandkosten. Alle Angaben ohne Gewähr. Preisänderungen sind in der Zwischenzeit möglich.

Technical specifications

On Top

Technical details

Written by Jacob Perkins
Genre Development software
Publisher Packt
Number of pages 272 pages

Additionally

Release date 11.2010
- Quickly get to grips with Natural Language Processing – with Text Analysis, Text Mining, and beyond
- Learn how machines and crawlers interpret and process natural languages
- Easily work with huge amounts of data and learn how to handle distributed processing
- Part of Packt's Cookbook series: Each recipe is a carefully organized sequence of instructions to complete the task as efficiently as possible

Natural Language Processing is used everywhere – in search engines, spell checkers, mobile phones, computer games – even your washing machine. Python's Natural Language Toolkit (NLTK) suite of libraries has rapidly emerged as one of the most efficient tools for Natural Language Processing. You want to employ nothing less than the best techniques in Natural Language Processing – and this book is your answer.

Python Text Processing with NLTK 2.0 Cookbook is your handy and illustrative guide, which will walk you through all the Natural Language Processing techniques in a step–by-step manner. It will demystify the advanced features of text analysis and text mining using the comprehensive NLTK suite.

This book cuts short the preamble and you dive right into the science of text processing with a practical hands-on approach.

Get started off with learning tokenization of text. Get an overview of WordNet and how to use it. Learn the basics as well as advanced features of Stemming and Lemmatization. Discover various ways to replace words with simpler and more common (read: more searched) variants. Create your own corpora and learn to create custom corpus readers for JSON files as well as for data stored in MongoDB. Use and manipulate POS taggers. Transform and normalize parsed chunks to produce a canonical form without changing their meaning. Dig into feature extraction and text classification. Learn how to easily handle huge amounts of data without any loss in efficiency or speed.

This book will teach you all that and beyond, in a hands-on learn-by-doing manner. Make yourself an expert in using the NLTK for Natural Language Processing with this handy companion.

<b>What you will learn from this book :</b>
- Learn Text categorization and Topic identification
- Learn Stemming and Lemmatization and how to go beyond the usual spell checker
- Replace negations with antonyms in your text
- Learn to tokenize words into lists of sentences and words, and gain an insight into WordNet
- Transform and manipulate chunks and trees
- Learn advanced features of corpus readers and create your own custom corpora
- Tag different parts of speech by creating, training, and using a part-of-speech tagger
- Improve accuracy by combining multiple part-of-speech taggers
- Learn how to do partial parsing to extract small chunks of text from a part-of-speech tagged sentence
- Produce an alternative canonical form without changing the meaning by normalizing parsed chunks
- Learn how search engines use Natural Language Processing to process text
- Make your site more discoverable by learning how to automatically replace words with more searched equivalents
- Parse dates, times, and HTML
- Train and manipulate different types of classifiers

<b>Who this book is written for</b>
This book is for Python programmers who want to quickly get to grips with using the NLTK for Natural Language Processing. Familiarity with basic text processing concepts is required. Programmers experienced in the NLTK will also find it useful. Students of linguistics will find it invaluable.
Фотографии

    Password recovery
    To recover your password, please enter in the box below your email address with which you have registered:
    The password reset code has been sent to your Email.
    Код уже был отправлен Вам ранее.
    Вы можете ввести его в поле выше, или получить новый код через сек.
    An error has occurred. Please check your e-mail address and try again.
    Ваш новый пароль:

    Name is empty


    Выберите страну доставки

    You have not written a message

    By clicking on the "Send" button, you agree that your data will be used to process your request. Further information and revocation instructions can be found in the data protection declaration.

    Your message has been sent!

    Close

    1
    Catalog
    Cancel Close
    Бренды:
      Выберите бренды
        Show more close
          Area search
          Worldwide
          Категории
            Product