cytora/clickbait-workshop
Pydata 2017 workshop: build a clickbait detector with python
This workshop helps content creators, marketers, or anyone analyzing online articles understand and identify 'clickbait' headlines. You'll learn how to take a collection of article headlines and train a system to determine if a new headline is designed to be clickbait or not. It's designed for someone interested in the mechanics of text analysis and classification.
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Use this if you want to understand how to automatically identify sensational or misleading article headlines from a dataset of text.
Not ideal if you are looking for a ready-to-use, off-the-shelf clickbait detection tool without wanting to learn the underlying machine learning concepts.
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Sep 14, 2017
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