In this paper, we describe our submission to SemEval-2019 Task 4 on
Hyperpartisan News Detection. Our system relies on a variety of engineered
features originally used to detect propaganda. This is based on the assumption
that biased messages are propagandistic in the sense that they promote a
particular political cause or viewpoint. We trained a logistic regression model
with features ranging from simple bag-of-words to vocabulary richness and text
readability features. Our system achieved 72.9% accuracy on the test data that
is annotated manually and 60.8% on the test data that is annotated with distant
supervision. Additional experiments showed that significant performance
improvements can be achieved with better feature pre-processing.Comment: Hyperpartisanship, propaganda, news media, fake news, SemEval-201