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Global Natural Language Processing (NLP) Market - Forecast & Analysis (2013-2018)

DUBLIN, Ireland, January 3, 2014 /PRNewswire/ --

Research and Markets (http://www.researchandmarkets.com/research/xzrjs3/natural_language) has announced the addition of the "Global Natural Language Processing (NLP) Market - Forecast & Analysis (2013-2018)" report to their offering.
     (Logo: http://photos.prnewswire.com/prnh/20130307/600769 )

Natural language is easier for humans to learn and exercise but difficult for computers to comprehend. Machines have proven their potential in computationally intensive tasks. However, they still fall short to master the basics of spoken and written languages. Natural language processing is a human to computer interaction, which analyses and understands both spoken and written forms of human languages. It helps computers in formulating basic and advanced levels of interaction with humans.

This form of communications assists the computer to perform various other additional tasks. Such application include the processing of large amounts of data by utilizing natural language processing for information retrieval, information extraction, automatic summarization, machine translation and dialogue systems. The prominent market players using this technology for various applications include IBM, SAS, Nuance Communications, Microsoft, 3M, M*Modal, Fuji Xerox and NetBase.

This report provides a comprehensive analysis of the major market drivers, restraints, opportunities, challenges and addresses the key issues in the natural language processing market. The report also analyzes global adoption trends and future potential areas of adoption across the different technologies. Furthermore, the report gives detailed analysis on global trends and forecasts, competitive landscape and analysis on VC funding and M&A, related to the natural language processing market. It also forecasts volumes, revenues and analyzes trends in each of the submarkets covered.


Key Topics Covered:

1 Introduction

2 Executive Summary

3 Market Ecosystem And Dynamics

4 Natural Language Processing: Market Size And Forecast By Types
4.1 Introduction And Overview
4.2 Rule Based NLP
4.3 Statistical NLP
4.4 Hybrid NLP

5 Natural Language Processing: Market Size And Forecast, By Technologies
5.1 Introduction And Overview
5.2 Recognition
5.3 Operational
5.4 Analytics

6 Natural Language Processing: Market Size And Forecast By Services
6.1 Introduction And Overview
6.2 Installation And Maintenance
6.3 Training And Certification
6.4 Consulting

7 Natural Language Processing: Market Size And Forecast, By Applications
7.1 Introduction And Overview
7.2 Machine Translation
7.3 Information Extraction
7.4 Report Generation
7.5 Question Answering
7.6 Other Applications

8 Natural Language Processing: Market Size And Forecast By End Users
8.1 Enterprise NLP
8.2 Customer NLP
8.3 Market Analysis By Deployment Types

9 Natural Language Processing: Market Size And Forecast By Regions
9.1 Introduction And Overview
9.2 North America
9.3 Asia Pacific
9.4 Europe
9.5 Middle East And Africa
9.6 Latin America

10 Market Analysis, Trends And Insights

11 Company Profiles


Companies Mentioned:

  • 3M
  • Anboto
  • Apple
  • Artificial Solutions
  • Dolbey Systems
  • Fuji Xerox
  • Google
  • HP
  • IBM
  • Lexalytics
  • Linguamatics
  • M*Modal
  • Microsoft
  • Miiatech
  • NLP Technologies
  • Netbase Solutions
  • Nuance Communications
  • SAS
  • Semantic Research
  • Senexx
  • Swiftkey
  • Temis
  • Verint Systems
  • Yseop

For more information visit http://www.researchandmarkets.com/research/xzrjs3/natural_language


Media Contact: Laura Wood , +353-1-481-1716, [email protected]

SOURCE Research and Markets

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