Computer Science ›› 2017, Vol. 44 ›› Issue (12): 183-187.doi: 10.11896/j.issn.1002-137X.2017.12.034

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Analysis of Development Status of World Artificial Intelligence Based on Scientific Measurement

LI Yue, SU Cheng, JIA Jia, XU Zhen and TIAN Rui-qiang   

  • Online:2018-12-01 Published:2018-12-01

Abstract: This paper analyzed the field of artificial intelligence in the past 15 years to predict the future development trend,and to help researchers quickly grasp the field profile.SciMAT software was used to carry out the co-occurrence analysis of the keywords,and the development trend and sub-domain maturity were predicted by the generated theme evolution chart,and the strategy map was used to predict the future development trend.The total number of advertisements and the total number of keywords in the field of artificial intelligence are on the rise,indicating that the development of the field is good.The increase in the number of groups at various stages indicates that the development of the field in many ways.In the past 15 years,neural networks and intelligent robots have been hot topics in the field of artificial intelligence,and as time goes on,the scale of the research expand,has been also gradually mature.Artificial intelligence is taking place from theory to application of the change.Neural network and intelligent robot will be the future development of artificial intelligence field.

Key words: Artificial intelligence,SciMAT,Co-word analysis,Theme evolution

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