There have been many efforts to estimate the political orien-
tation of citizens and political actors. With the burst of online
social media use in the last two decades, this topic has un-
dergone major changes. Many researchers and political cam-
paigns have attempted to measure and estimate the political
orientation of online social media users. In this paper, we use
a combination of metric learning algorithms and label propa-
gation methods to estimate the political orientation of Twitter
users. We argue that the metric learning algorithm dramat-
ically increases the accuracy of our model by accentuating
the effect of homophilic networks. Homophilic networks are
user clusters formed due to cognitive motivational processes
linked with cognitive biases. We apply our method to a sam-
ple of Twitter users in Germany’s six-party political sphere.
Our method obtains a significant accuracy of 62% using only
40 observations of training data for each political party.
«
There have been many efforts to estimate the political orien-
tation of citizens and political actors. With the burst of online
social media use in the last two decades, this topic has un-
dergone major changes. Many researchers and political cam-
paigns have attempted to measure and estimate the political
orientation of online social media users. In this paper, we use
a combination of metric learning algorithms and label propa-
gation methods to estimate the political orientation of Twit...
»