Bibliographic Details
| Title: |
Using SAS™ Software to Enhance Pedagogy for Text Mining and Sentiment Analysis Using Social Media Twitter™) Data. |
| Authors: |
Subramanian, Ramesh1 ramesh.subramanian@quinnipiac.edu, Cote, Danielle1 danielle.cote@quinnipiac.edu |
| Source: |
Journal of International Technology & Information Management. 2018, Vol. 27 Issue 2, p73-98. 26p. 1 Color Photograph, 8 Diagrams, 10 Charts. |
| Subjects: |
SAS (Computer program language), Programming languages, Twitter (Web resource), Text mining, Sentiment analysis |
| Abstract: |
This pedagogical paper describes how a graduate course in Text Mining was developed and taught in a fully online format at Quinnipiac University. The software used was SAS™ Enterprise Miner. This paper discusses the design, software used and the methodology followed in the course. A critical component of the course required the students to delve deep into social media data by completing a detailed project on analyzing sentiment analysis using large files of social media data. A sample report of this project, which was a key deliverable for the course, is described at length in this paper. [ABSTRACT FROM AUTHOR] |
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| Database: |
Engineering Source |