Affiliation:
1. Arizona State University, Tempe, Phoenix, USA
Abstract
In this paper, we utilize a Twitter dataset collected between December 8, 2021 and February 18, 2022, during the lead-up to the 2022 Russian invasion of Ukraine. Our aim is to design a data processing pipeline featuring a high-accuracy Graph Convolutional Network (GCN) based political camp classifier, a botnet detection algorithm, and a robust measure of botnet effects. Our experiments reveal that while the pro-Russian botnet contributes significantly to network
polarization
, the pro-Ukrainian botnet contributes with
moderating
effects. To understand the
factors
leading to these different effects, we analyze the interactions between the botnets and the users, distinguishing between
barrier-crossing
users, who navigate across different political camps, and
barrier-bound
users, who remain within their own camps. We observe that the pro-Russian botnet amplifies the
barrier-bound
partisan users within their own camp most of the time. In contrast, the pro-Ukrainian botnet amplifies the
barrier-crossing
users on their own camp alongside themselves for the majority of the time.
Publisher
Association for Computing Machinery (ACM)
Subject
Industrial and Manufacturing Engineering