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When & Where
Date: 
Thu, January 12, 2017 - 2:00 PM to 4:00 PM
Location: 
Barrows 356: D-Lab Convening Room
Description
Type: 

In this workshop we will cover two main supervised text analysis methods, the dictionary method, and supervised classification. We will use list comprehension to implement the dictionary method, using sentiment analysis as our example. Using the Python library scikit-learn, we will also implement a few supervised classification techniques, including Naive Bayes and Support Vector Machines. Specific skills covered include a) measuring themes in text using dictionaries, b) feature selection, c) Support Vector Machines, d) Naive Bayes, e) cross-validation, and f) feature importance.

This workshop is one of a four-part series that will prepare participants to move forward with text analysis research, with a special focus on humanities and social science applications. Please register for each workshop separately. The other workshops in the series are listed below:

Details
Training Host: 
D-lab Facilitator: 
Jon Stiles
Format Detail: 
Interactive, hands-on
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