Text Analytics with Python A Practitioner's Guide to Natural Language Processing
Afbeeldingen
Sla de afbeeldingen overArtikel vergelijken
Auteur:
Dipanjan Sarkar
- Engels
- Paperback
- 9781484243534
- 22 mei 2019
- 674 pagina's
Samenvatting
Leverage Natural Language Processing (NLP) in Python and learn how to set up your own robust environment for performing text analytics. The second edition of this book will show you how to use the latest state-of-the-art frameworks in NLP, coupled with Machine Learning and Deep Learning to solve real-world case studies leveraging the power of Python.
This edition has gone through a major revamp introducing several major changes and new topics based on the recent trends in NLP. We have a dedicated chapter around Python for NLP covering fundamentals on how to work with strings and text data along with introducing the current state-of-the-art open-source frameworks in NLP. We have a dedicated chapter on feature engineering representation methods for text data including both traditional statistical models and newer deep learning based embedding models. Techniques around parsing and processing text data have also been improved with some new methods.
Considering popular NLP applications, for text classification, we also cover methods for tuning and improving our models. Text Summarization has gone through a major overhaul in the context of topic models where we showcase how to build, tune and interpret topic models in the context of an interest dataset on NIPS conference papers. Similarly, we cover text similarity techniques with a real-world example of movie recommenders. Sentiment Analysis is covered in-depth with both supervised and unsupervised techniques. We also cover both machine learning and deep learning models for supervised sentiment analysis. Semantic Analysis gets its own dedicated chapter where we also showcase how you can build your own Named Entity Recognition (NER) system from scratch. To conclude things, we also have a completely new chapter on the promised of Deep Learning for NLP where we also showcase a hands-on example on deep transfer learning.
While the overall structure of the book remainsthe same, the entire code base, modules, and chapters will be updated to the latest Python 3.x release.----------------------------------Also the key selling points• Implementations are based on Python 3.x and state-of-the-art popular open source libraries in NLP • Covers Machine Learning and Deep Learning for Advanced Text Analytics and NLP• Showcases diverse NLP applications including Classification, Clustering, Similarity Recommenders, Topic Models, Sentiment and Semantic Analysis
This edition has gone through a major revamp introducing several major changes and new topics based on the recent trends in NLP. We have a dedicated chapter around Python for NLP covering fundamentals on how to work with strings and text data along with introducing the current state-of-the-art open-source frameworks in NLP. We have a dedicated chapter on feature engineering representation methods for text data including both traditional statistical models and newer deep learning based embedding models. Techniques around parsing and processing text data have also been improved with some new methods.
Considering popular NLP applications, for text classification, we also cover methods for tuning and improving our models. Text Summarization has gone through a major overhaul in the context of topic models where we showcase how to build, tune and interpret topic models in the context of an interest dataset on NIPS conference papers. Similarly, we cover text similarity techniques with a real-world example of movie recommenders. Sentiment Analysis is covered in-depth with both supervised and unsupervised techniques. We also cover both machine learning and deep learning models for supervised sentiment analysis. Semantic Analysis gets its own dedicated chapter where we also showcase how you can build your own Named Entity Recognition (NER) system from scratch. To conclude things, we also have a completely new chapter on the promised of Deep Learning for NLP where we also showcase a hands-on example on deep transfer learning.
While the overall structure of the book remainsthe same, the entire code base, modules, and chapters will be updated to the latest Python 3.x release.----------------------------------Also the key selling points• Implementations are based on Python 3.x and state-of-the-art popular open source libraries in NLP • Covers Machine Learning and Deep Learning for Advanced Text Analytics and NLP• Showcases diverse NLP applications including Classification, Clustering, Similarity Recommenders, Topic Models, Sentiment and Semantic Analysis
Productspecificaties
Wij vonden geen specificaties voor jouw zoekopdracht '{SEARCH}'.
Inhoud
- Taal
- en
- Bindwijze
- Paperback
- Oorspronkelijke releasedatum
- 22 mei 2019
- Aantal pagina's
- 674
- Illustraties
- Nee
Betrokkenen
- Hoofdauteur
- Dipanjan Sarkar
- Hoofduitgeverij
- Apress
Overige kenmerken
- Editie
- 2
- Extra groot lettertype
- Nee
- Product breedte
- 178 mm
- Product lengte
- 254 mm
- Studieboek
- Ja
- Verpakking breedte
- 179 mm
- Verpakking hoogte
- 46 mm
- Verpakking lengte
- 244 mm
- Verpakkingsgewicht
- 1672 g
EAN
- EAN
- 9781484243534
Je vindt dit artikel in
- Categorieën
- Taal
- Engels
- Beschikbaarheid
- Leverbaar
- Boek, ebook of luisterboek?
- Boek
- Studieboek of algemeen
- Studieboeken
Kies gewenste uitvoering
Kies je bindwijze
Bekijk alle bindwijzen (3)
Prijsinformatie en bestellen
De prijs van dit product is 54 euro en 23 cent.
1 - 2 weken
Verkoop door
MyBoeken.nl
- Bestellen en betalen via bol
- Prijs inclusief verzendkosten, verstuurd door MyBoeken.nl
- 30 dagen bedenktijd en gratis retourneren
- Wettelijke garantie via MyBoeken.nl
Shop dit artikel
Alle bindwijzen en edities (3)
-
43,99Direct beschikbaar
-
43,99Direct beschikbaar
-
54,231 - 2 weken
Levertijd
We doen er alles aan om dit artikel op tijd te bezorgen. Het is echter in een enkel geval mogelijk dat door omstandigheden de bezorging vertraagd is.
Bezorgopties
We bieden verschillende opties aan voor het bezorgen of ophalen van je bestelling. Welke opties voor jouw bestelling beschikbaar zijn, zie je bij het afronden van de bestelling.
Tooltip
Rapporteer dit artikel
Je wilt melding doen van illegale inhoud over dit artikel:
- Ik wil melding doen als klant
- Ik wil melding doen als autoriteit of trusted flagger
- Ik wil melding doen als partner
- Ik wil melding doen als merkhouder
Geen klant, autoriteit, trusted flagger, merkhouder of partner? Gebruik dan onderstaande link om melding te doen.