EXPERT SYST 润色咨询

EXPERT SYSTEMS

出版年份:暂无数据 年文章数:876 投稿命中率: 开通期刊会员,数据随心看

出版周期:Bimonthly 自引率:7.5% 审稿周期: 开通期刊会员,数据随心看

前往期刊查询

投稿信息

投稿信息
审稿费用
暂无数据
版面费用
暂无数据
中国人发表比例
2023年中国人文章占该期刊总数量暂无数据 (2022年为100.00%)
自引率
7.5 %
年文章数
876
期刊官网
点击查看 (点击次数:3665)
点击查看 (点击次数:2437次)
作者需知
暂无数据
偏重的研究方向
暂无数据
期刊简介
稿件收录要求
Expert Systems is a quarterly journal devoted to all aspects of artificial intelligence and advanced computing. The journal's readers include knowledge engineers artificial intelligence researchers project managers computer scientists and managers. It is written for those who need an international perspective on expert systems and neural networks whether as developer supplier or potential user. Expert Systems acts as a forum for the expert systems and neural networks community increasing awareness of what these technologies are and of the potential they have for decision-makers in industry business and government. The journal covers the development and use of advanced computing in areas: which humans find intellectually difficult and which involve expertise or specialised knowledge and which are the subject of continuing research or of interest to those implementing current systems. These criteria exclude most aspects of fields such as natural language processing and machine vision; although these are computationally difficult and the focus of much continuing research they are not considered intellectually difficult or the preserve of expertise among humans. They also exclude topics such as most types of mathematical calculation and statistics which humans find difficult but which are not a significant computational problem. These criteria form the focus for research into expert systems (also known as knowledge based systems and as knowledge systems) and related disciplines. These include: Expertise and related topics such as knowledge acquisition via elicitation or machine learning knowledge representation and human decision making. Software engineering for such systems and related topics such as neural nets genetic algorithms intelligent agents decision support systems and some aspects of intelligent user modelling. Case studies and analyses of successful and unsuccessful stystem use and factors affecting the acceptance of such systems. Please click here for the Expert Systems home page.