模式识别与人工智能
Friday, Apr. 4, 2025 Home      About Journal      Editorial Board      Instructions      Ethics Statement      Contact Us                   中文
  2012, Vol. 25 Issue (3): 456-461    DOI:
Orignal Article Current Issue| Next Issue| Archive| Adv Search |
Breakthroughs in Artificial Intelligence and Innovation in Methodology
ZHONG Yi-Xin
Department of Intelligence Science and Network Engineering,School of Computer Science,Beijing University of Posts and Telecommunications,Beijing 100876

Download: PDF (364 KB)   HTML (1 KB) 
Export: BibTeX | EndNote (RIS)      
Abstract  

The following breakthroughs have been made in the field of artificial intelligence (AI) research over the last decade: 1) The common kernel mechanism of intelligence formation, the information-knowledge-intelligence conversion, was discovered. Thus, the mechanism simulation of intelligence was established. 2)The knowledge ecological structure, the empirical knowledge-regular knowledge-commonsense knowledge growth, which is all supported by innate knowledge, was discovered. 3) The combination of 1) and 2) has led to another discovery that the existing and independent AI approaches, the structural simulation approach to cortex of the brain, the functional simulation approach to the logical thinking, and the behavior simulation approach to the intelligent beings are three special harmonious cases of the mechanism simulation of intelligence under respective knowledge. Therefore, the unified simulation approach and AI theory are achieved, which opens up prospects for AI research. It is believed that the radical source for the breakthroughs in AI is the innovation of scientific methodology.

Key wordsKnowledge Ecology      Mechanism Simulation      Unified Theory      Scientific Methodology     
Received: 13 February 2012     
ZTFLH: TP18  
Service
E-mail this article
Add to my bookshelf
Add to citation manager
E-mail Alert
RSS
Articles by authors
ZHONG Yi-Xin
Cite this article:   
ZHONG Yi-Xin. Breakthroughs in Artificial Intelligence and Innovation in Methodology[J]. , 2012, 25(3): 456-461.
URL:  
http://manu46.magtech.com.cn/Jweb_prai/EN/      OR     http://manu46.magtech.com.cn/Jweb_prai/EN/Y2012/V25/I3/456
Copyright © 2010 Editorial Office of Pattern Recognition and Artificial Intelligence
Address: No.350 Shushanhu Road, Hefei, Anhui Province, P.R. China Tel: 0551-65591176 Fax:0551-65591176 Email: bjb@iim.ac.cn
Supported by Beijing Magtech  Email:support@magtech.com.cn