Classification of Propaganda on Fragment Level: Using Logistic Regression with Handcrafted Contextual Features
Summary
Propaganda in the media has become a rising problem, especially after automation. The ease of
which propaganda can be created and spread is astonishing. A way to combat this is an automated
propaganda detection system. The goal of fine-grained propaganda detection is to determine
whether a given sentence uses a propaganda technique, or to recognize which techniques are used
on the fragment level. In this paper we try to analyze the effects of contextual features on the
fragment level when training a propaganda classifier. Using a logistic regression model I created
some handcrafted features that solely depend on contextual information. The results showed no
significant impact on the performance. The features based on the propagandistic fragment itself
prove to be the top features in this setting. In future research it is recommended to create either
more complex contextual features or to create features that are able to discern whether the
fragment is Loaded Language or Name Calling .