Text mining for information professionals an uncharted territory / Manika Lamba and Madhusudhan Margam.
Material type:
TextLanguage: English Publication details: Switzerland : Springer, 2022. Description: xvi, 356 p. : ills. ; 23 cmISBN: 9783030850845Subject(s): Information Storage and Retrieval | Information retrieval | Text data miningDDC classification: 006.312 Online resources: WorldCat details | Item type | Current library | Collection | Call number | Copy number | Status | Date due | Barcode | Item holds |
|---|---|---|---|---|---|---|---|---|
Text
|
Dr. S. R. Lasker Library, EWU Reserve Section | Non-fiction | 006.312 LAT 2022 (Browse shelf(Opens below)) | C-1 | Not For Loan | 30927 | ||
Text
|
Dr. S. R. Lasker Library, EWU Circulation Section | Non-fiction | 006.312 LAT 2022 (Browse shelf(Opens below)) | C-2 | Available | 30928 | ||
Text
|
Dr. S. R. Lasker Library, EWU Circulation Section | Non-fiction | 006.312 LAT 2022 (Browse shelf(Opens below)) | C-3 | Available | 30929 |
Browsing Dr. S. R. Lasker Library, EWU shelves, Shelving location: Circulation Section Close shelf browser (Hides shelf browser)
|
|
|
|
|
|
|
||
| 006.312 HAD 2012 Data mining : | 006.312 HAD 2012 Data mining : | 006.312 INT 2021 Introduction to data mining / | 006.312 LAT 2022 Text mining for information professionals an uncharted territory / | 006.312 LAT 2022 Text mining for information professionals an uncharted territory / | 006.312 NIH 2009 Handbook of statistical analysis and data mining applications / | 006.312 VAP 2023 Python data science handbook : essential tools for working with data / |
Index
Table of contents 1. The Computational Library
2. Text Data and Where to Find Them?
3. Text Pre-Processing
4. Topic Modeling
5. Network Text Analysis
6. Burst Detection
7. Sentiment Analysis
8. Predictive Modeling
9. Information Visualization
10. Tools and Techniques for Text Mining and Visualization
11. Text Data and Mining Ethics
This book focuses on a basic theoretical framework dealing with the problems, solutions, and applications of text mining and its various facets in a very practical form of case studies, use cases, and stories. The book contains 11 chapters with 14 case studies showing 8 different text mining and visualization approaches, and 17 stories. In addition, both a website and a Github account are also maintained for the book. They contain the code, data, and notebooks for the case studies; a summary of all the stories shared by the librarians/faculty; and hyperlinks to open an interactive virtual RStudio/Jupyter Notebook environment. The interactive virtual environment runs case studies based on the R programming language for hands-on practice in the cloud without installing any software. From understanding different types and forms of data to case studies showing the application of each text mining approaches on data retrieved from various resources, this book is a must-read for all library professionals interested in text mining and its application in libraries. Additionally, this book will also be helpful to archivists, digital curators, or any other humanities and social science professionals who want to understand the basic theory behind text data, text mining, and various tools and techniques available to solve and visualize their research problems
Information Studies Information Studies
Text
There are no comments on this title.