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research-article

Utilizing statistical physics and machine learning to discover collective behavior on temporal social networks

Published: 01 March 2023 Publication History

Abstract

Computational social science has become a branch of social science that uses computationally intensive ways to investigate and model social phenomena. Exploitation on mathematics, physics, and computer sciences, and analytic approaches like Social Network Analysis (SNA), Machine Learning (ML), etc, develops and tests the theories of complex social phenomena. In the emerging environment of social media, the new characteristics of social collective behavior and its extensive phenomena have become the hot spot of common concern across many disciplines. In this paper, we propose a general quantitative framework to discover the social collective behavior in temporal social networks. The general framework incorporates the Time-Correlation Function (T.C.F.) in statistical physics and evolutionary approach in Machine Learning, and provides the quantitative evidence of the existence of social collective behavior. Results show collective behaviors are observed and there exists a tiny fraction of users whose behavior are constantly replicated by public, disregard of the behavior itself. Our method is assumption-independent and has the potential to be applied to various temporal systems.

Highlights

We apply Correlation Functions and Evolution Strategy to detect herding behavior.
The results show the public’s herding behavior towards a small group of individuals.
Our model is widely applicable with proper design of time-correlation functions.

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          Information & Contributors

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          Published In

          cover image Information Processing and Management: an International Journal
          Information Processing and Management: an International Journal  Volume 60, Issue 2
          Mar 2023
          1443 pages

          Publisher

          Pergamon Press, Inc.

          United States

          Publication History

          Published: 01 March 2023

          Author Tags

          1. Social collective behavior
          2. Evolutionary machine learning
          3. Social networks
          4. Time-correlation-functions

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