Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Crowd intelligence evolution based on complex network

View through CrossRef
Purpose In recent years, with the increase in computing power, artificial intelligence can gradually be regarded as intelligent agents and interact with humans, this interactive network has become increasingly complex. Therefore, it is necessary to model and analyze this complex interactive network. This paper aims to model and demonstrate the evolution of crowd intelligence using visual complex networks. Design/methodology/approach This paper uses the complex network to model and observe the collaborative evolution behavior and self-organizing system of crowd intelligence. Findings The authors use the complex network to construct the cooperative behavior and self-organizing system in crowd intelligence. Determine the evolution mode of the node by constructing the interactive relationship between nodes and observe the global evolution state through the force layout. Practical implications The simulation results show that the state evolution map can effectively simulate the distribution, interaction and evolution of crowd intelligence through force layout and the intelligent agents’ link mode the authors proposed. Originality/value Based on the complex network, this paper constructs the interactive behavior and organization system in crowd intelligence and visualizes the evolution process.
Title: Crowd intelligence evolution based on complex network
Description:
Purpose In recent years, with the increase in computing power, artificial intelligence can gradually be regarded as intelligent agents and interact with humans, this interactive network has become increasingly complex.
Therefore, it is necessary to model and analyze this complex interactive network.
This paper aims to model and demonstrate the evolution of crowd intelligence using visual complex networks.
Design/methodology/approach This paper uses the complex network to model and observe the collaborative evolution behavior and self-organizing system of crowd intelligence.
Findings The authors use the complex network to construct the cooperative behavior and self-organizing system in crowd intelligence.
Determine the evolution mode of the node by constructing the interactive relationship between nodes and observe the global evolution state through the force layout.
Practical implications The simulation results show that the state evolution map can effectively simulate the distribution, interaction and evolution of crowd intelligence through force layout and the intelligent agents’ link mode the authors proposed.
Originality/value Based on the complex network, this paper constructs the interactive behavior and organization system in crowd intelligence and visualizes the evolution process.

Related Results

A measurement framework of crowd intelligence
A measurement framework of crowd intelligence
Purpose The originality of the crowd cyber system lies in the fact that it possesses the intelligence of multiple groups including intelligence of people, intelligence of objects a...
Crowd Density Estimation via Global Crowd Collectiveness Metric
Crowd Density Estimation via Global Crowd Collectiveness Metric
Drone-captured crowd videos have become increasingly prevalent in various applications in recent years, including crowd density estimation via measuring crowd collectiveness. Tradi...
A novel simulation framework for crowd co-evolutions
A novel simulation framework for crowd co-evolutions
Purpose Evolution can be easily observed in nature world, and this phenomenon is a research hotspot no matter in natural science or social science. In crowd science and technology,...
Bibliometric analysis of sharing economy logistics and crowd logistics
Bibliometric analysis of sharing economy logistics and crowd logistics
Purpose This study aims to review the literature on sharing economy logistics and crowd logistics to answer the three following questions: How is the literature on sharing economy ...
A reflective memory based framework for crowd network simulations
A reflective memory based framework for crowd network simulations
Purpose As main mode of modern service industry and future economy society, the research on crowd network can greatly facilitate governances of economy society and make it more eff...
Deep Learning-Based Crowd Scene Analysis Survey
Deep Learning-Based Crowd Scene Analysis Survey
Recently, our world witnessed major events that attracted a lot of attention towards the importance of automatic crowd scene analysis. For example, the COVID-19 breakout and public...
Network Automation
Network Automation
Purpose: The article "Network Automation in the Contemporary Economy" explores the concepts and methods of effective network management. The application stack, Jinja template engin...
Gridding crowd-sourced weather data: is quality control required?
Gridding crowd-sourced weather data: is quality control required?
Context. For monitoring, analysing and forecasting the impact of weather and climate change on society, we see an increasing need for high-quality, high-resolution gridded weather ...

Back to Top