Collective emotion dynamics in chats with agents, moderators and Bots
نویسندگان
چکیده
Collective emotion dynamics in chats with agents, moderators and Bots M. Šuvakov1,2, B. Tadić1 1 Department of Theoretical Physics, Jožef Stefan Institute, Jamova 39, 1001 Ljubljana, Slovenia 2 Institute of Physics Belgrade, University of Belgrade, Pregrevica 118, 11080 Beograd, Serbia Received March 27, 2014, in final form April 19, 2014 Using agent-directed simulations, we investigate fluctuations in the collective emotional states on a chat network where agents interchange messages with a fixed number of moderators and emotional Bot. To design a realistic chat system, the interaction rules and some statistical parameters, as well as the agent’s attributes, are inferred from the empirical chat channel Ubuntu. In the simulations, the Bot’s emotion is fixed; the moderators tune the level of its activity by passing a fraction 2 of messages to the Bot. At 2 & 0, the collective emotional state matching the Bot’s emotion polarity gradually arises; the average growth rate of the dominant emotional charge serves as an order parameter. Due to self-organizing effects, the collective dynamics is more explosive when positive emotions arise by positive Bot than the onset of negative emotions in the presence of negative Bot at the same 2. Furthermore, when the emotions matching the Bot’s emotion polarity are spread over the system, the underlying fractal processes exhibit higher persistence and stronger clustering of events than the processes spreading of emotion polarity opposite to the Bot’s emotion. On the other hand, the relaxation dynamics is controlled by the external noise; the related nonextensive parameter, estimated from the statistics of returns, is virtually independent of the Bot’s activity level and emotion contents.
منابع مشابه
Can Human-Like Bots Control Collective Mood: Agent-Based Simulations of Online Chats
Using agent-basedmodeling approach, in this paper, we study self-organized dynamics of interacting agents in the presence of chat Bots. Different Bots with tunable “human-like” attributes, which exchange emotional messages with agents, are considered, and collective emotional behavior of agents is quantitatively analysed. In particular, using detrended fractal analysis we determine persistent f...
متن کاملCo-Evolutionary Mechanisms of Emotional Bursts in Online Social Dynamics and Networks
Collective emotional behavior of users is frequently observed on various Web portals; however, its complexity and the role of emotions in the acting mechanisms are still not thoroughly understood. In this work, using the empirical data and agent-based modeling, a parallel analysis is performed of two archetypal systems—Blogs and Internet-Relayed-Chats—both of which maintain self-organized dynam...
متن کاملThe Dynamics of Emotional Chats with Bots: Experiment and Agent-Based Simulations
Recently, quantitative research of human dynamics on Web has been enabled thanks to a large amount of empirical data that are systematically accumulated at the various Web portals. This opened a new avenue of quantitative social science [1]. Online social dynamics constitute a complex system, in which micro-conceptions of global behaviors only began to reveal the working mechanisms of new emerg...
متن کاملStructure and stability of online chat networks built on emotion-carrying links
High-resolution data of online chats are studied as a physical system in laboratory in order to quantify collective behavior of users. Our analysis reveals strong regularities characteristic to natural systems with additional features. In particular, we find self-organized dynamics with long-range correlations in user actions and persistent associations among users that have the properties of a...
متن کاملCollective behaviour of social bots is encoded in their temporal Twitter activity
Computational propaganda deploys social or political bots to try to shape, steer and manipulate online public discussions and influence decisions. Collective behaviour of populations of social bots has not been yet widely studied, though understanding of collective patterns arising from interactions between bots would aid social bot detection. Here we show that there are significant differences...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- CoRR
دوره abs/1411.5392 شماره
صفحات -
تاریخ انتشار 2014