Abstract:In the context of social media increasingly becoming an important platform for the spread of public opinion, social bots have malicious guidance and manipulation of online public opinion. In order to explore its guidance mechanism, this paper combines the classic Hegselmann-Krause model with the continuous action learning automaton algorithm (CALA), uses a multi-agent method to model the interaction between social bots and individual users, and captures the distribution characteristics of online public opinion through simulation. Experimental results show that social bots can effectively use the CALA algorithm to obtain network attention in different complex environments and guide the opinions of user groups to develop in the direction of predetermined goals. The study verifies the feasibility of bots in public opinion guidance.
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