Research

Paper

TESTING March 03, 2026

Behavior Change as a Signal for Identifying Social Media Manipulation

Authors

Isuru Ariyarathne, Gangani Ariyarathne, Alessandro Flammini, Filippo Menczer, Alexander C. Nwala

Abstract

Social media accounts engaging in online manipulation can change their behaviors for re-purposing or to evade detection. Existing detection systems are built on features that do not exploit such behavioral patterns. Here we investigate the degree to which change in behavior can serve as a signal for identifying automated or coordinated accounts. First, we use Behavioral Languages for Online Characterization (BLOC) to represent the behavior of a social media account as a sequence of symbols that represent the account's actions and content. Second, we segment an account's BLOC strings and measure the changes between consecutive segments. Third, we represent an account as a feature vector that captures the distribution of behavioral change values. Finally, the resulting features are used to train and test supervised classifiers. We apply the proposed method to two detection tasks aimed at automated behavior (social bots) and coordinated inauthentic behavior (information operations). Our results reveal that the distributions of behavioral changes tend to be consistent across authentic accounts, while social bots exhibit either very low or very high behavioral change. Coordinated inauthentic accounts exhibit highly similar distributions of behavioral change within the same campaign, but diverse across campaigns. These patterns allow our classifiers to achieve good accuracy in both tasks, demonstrating the effectiveness of behavioral change as a signal for identifying online manipulation.

Metadata

arXiv ID: 2603.03128
Provider: ARXIV
Primary Category: cs.SI
Published: 2026-03-03
Fetched: 2026-03-04 03:41

Related papers

Raw Data (Debug)
{
  "raw_xml": "<entry>\n    <id>http://arxiv.org/abs/2603.03128v1</id>\n    <title>Behavior Change as a Signal for Identifying Social Media Manipulation</title>\n    <updated>2026-03-03T16:02:21Z</updated>\n    <link href='https://arxiv.org/abs/2603.03128v1' rel='alternate' type='text/html'/>\n    <link href='https://arxiv.org/pdf/2603.03128v1' rel='related' title='pdf' type='application/pdf'/>\n    <summary>Social media accounts engaging in online manipulation can change their behaviors for re-purposing or to evade detection. Existing detection systems are built on features that do not exploit such behavioral patterns. Here we investigate the degree to which change in behavior can serve as a signal for identifying automated or coordinated accounts. First, we use Behavioral Languages for Online Characterization (BLOC) to represent the behavior of a social media account as a sequence of symbols that represent the account's actions and content. Second, we segment an account's BLOC strings and measure the changes between consecutive segments. Third, we represent an account as a feature vector that captures the distribution of behavioral change values. Finally, the resulting features are used to train and test supervised classifiers. We apply the proposed method to two detection tasks aimed at automated behavior (social bots) and coordinated inauthentic behavior (information operations). Our results reveal that the distributions of behavioral changes tend to be consistent across authentic accounts, while social bots exhibit either very low or very high behavioral change. Coordinated inauthentic accounts exhibit highly similar distributions of behavioral change within the same campaign, but diverse across campaigns. These patterns allow our classifiers to achieve good accuracy in both tasks, demonstrating the effectiveness of behavioral change as a signal for identifying online manipulation.</summary>\n    <category scheme='http://arxiv.org/schemas/atom' term='cs.SI'/>\n    <published>2026-03-03T16:02:21Z</published>\n    <arxiv:comment>This is a research paper accepted to the 18th ACM Web Science Conference 2026</arxiv:comment>\n    <arxiv:primary_category term='cs.SI'/>\n    <author>\n      <name>Isuru Ariyarathne</name>\n    </author>\n    <author>\n      <name>Gangani Ariyarathne</name>\n    </author>\n    <author>\n      <name>Alessandro Flammini</name>\n    </author>\n    <author>\n      <name>Filippo Menczer</name>\n    </author>\n    <author>\n      <name>Alexander C. Nwala</name>\n    </author>\n  </entry>"
}