Author:
Liu Jianran,Liang Bing,Ji Wen
Abstract
Purpose
Artificial intelligence is gradually penetrating into human society. In the network era, the interaction between human and artificial intelligence, even between artificial intelligence, becomes more and more complex. Therefore, it is necessary to describe and intervene the evolution of crowd intelligence network dynamically. This paper aims to detect the abnormal agents at the early stage of intelligent evolution.
Design/methodology/approach
In this paper, differential evolution (DE) and K-means clustering are used to detect the crowd intelligence with abnormal evolutionary trend.
Findings
This study abstracts the evolution process of crowd intelligence into the solution process of DE and use K-means clustering to identify individuals who are not conducive to evolution in the early stage of intelligent evolution.
Practical implications
Experiments show that the method we proposed are able to find out individual intelligence without evolutionary trend as early as possible, even in the complex crowd intelligent interactive environment of practical application. As a result, it can avoid the waste of time and computing resources.
Originality/value
In this paper, DE and K-means clustering are combined to analyze the evolution of crowd intelligent interaction.
Subject
General Earth and Planetary Sciences,General Environmental Science
Reference20 articles.
1. Evidence for a collective intelligence factor in the performance of human groups;Science,2010
2. Differential evolution with DEoptim: an application to non-convex portfolio optimization;The R Journal,2011
3. Random search for hyper-parameter optimization;Journal of Machine Learning Research,2012
4. Application of differential evolution algorithm for transient stability constrained optimal power flow;IEEE Transactions on Power Systems,2008
5. Differential evolution trained wavelet neural networks: Application to bankruptcy prediction in banks;Expert Systems with Applications,2010
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