Text Data Management and Analysis: A Practical Introduction to Information Retrieval and Text Mining
English | ISBN: 197000116X, 1970001194 | 2016 | 532 Pages | PDF | 27 MB
Recent years have seen a dramatic growth of natural language text data, including web pages, news articles, scientific literature, emails, enterprise documents, and social media such as blog articles, forum posts, product reviews, and tweets. This has led to an increasing demand for powerful software tools to help people analyze and manage vast amounts of text data effectively and efficiently. Unlike data generated by a computer system or sensors, text data are usually generated directly by humans, and are accompanied by semantically rich content. As such, text data are especially valuable for discovering knowledge about human opinions and preferences, in addition to many other kinds of knowledge that we encode in text. In contrast to structured data, which conform to well-defined schemas (thus are relatively easy for computers to handle), text has less explicit structure, requiring computer processing toward understanding of the content encoded in text. The current technology of natural language processing has not yet reached a point to enable a computer to precisely understand natural language text, but a wide range of statistical and heuristic approaches to analysis and management of text data have been developed over the past few decades. They are usually very robust and can be applied to analyze and manage text data in any natural language, and about any topic.
This book provides a systematic introduction to all these approaches, with an emphasis on covering the most useful knowledge and skills required to build a variety of practically useful text information systems. The focus is on text mining applications that can help users analyze patterns in text data to extract and reveal useful knowledge. Information retrieval systems, including search engines and recommender systems, are also covered as supporting technology for text mining applications. The book covers the major concepts, techniques, and ideas in text data mining and information retrieval from a practical viewpoint, and includes many hands-on exercises designed with a companion software toolkit (i.e., MeTA) to help readers learn how to apply techniques of text mining and information retrieval to real-world text data and how to experiment with and improve some of the algorithms for interesting application tasks. The book can be used as a textbook for a computer science undergraduate course or a reference book for practitioners working on relevant problems in analyzing and managing text data.
Download:
http://longfiles.com/7uzvxn40vtoc/Text_Data_Management_and_Analysis_A_Practical_Introduction_to_Information_Retrieval_and_Text_Mining.pdf.html
The Handbook of Information and Computer Ethics
Strategic Planning for Social Media in Libraries
Kali Linux Revealed: Mastering the Penetration Testing Distribution
Effective Threat Intelligence: Building and Running an Intel Team for Your Organization (Audiobook)
TRIZ - The Theory of Inventive Problem Solving: Current Research and Trends in French Academic Insti
Applications of Optimization with Xpress-MP
Introduction to Artificial Life
PMP: Project Management Professional Exam Study Guide
Database Systems for Advanced Applications: DASFAA 2017 International Workshops
Css Hacks and Filters: Making Cascading Style Sheets Work
This site does not store any files on its server. We only index and link to content provided by other sites. Please contact the content providers to delete copyright contents if any and email us, we'll remove relevant links or contents immediately.
Hobbies & Leisure time | IT Certification |
Languages | Others |
Deep Learning with Python: A Hands-on Intr(2879)
Pro Python Best Practices: Debugging, Test(2567)
Advanced Penetration Testing: Hacking the (2539)
SketchUp For Dummies(2397)
Hacking the Hacker: Learn from the Experts(2269)
Django: Web Development with Python(2082)
Beginning Ethical Hacking with Python(2077)
Guide to Networking Essentials, 7 edition(1968)
Mastering IPython 4.0(1818)
Machine Learning Refined: Foundations, Alg(1697)
Think Like a Data Scientist: Tackle the da(1689)
Social Media Marketing All-in-One For Dumm(1679)
Big Data: Does Size Matter?(1679)
Wireshark for Security Professionals: Usin(1591)
Systems Analysis and Design(1583)
