亿酷棋牌世界官方下载-娱乐休闲棋牌游戏

學術交流
位置: 首頁 > 學術交流 > 正文

Xiao Fang: Use-inspired AI and Computational Design Science Research in Information Systems

時間:2023-07-14來源:管理學院

報告時間:2023年07月14日(星期五)10:00-12:00

報告地點:第三報告廳

:Xiao Fang 教授

工作單位:美國特拉華大學商學院

舉辦單位:管理學院

報告簡介

The US National Science Foundation (NSF) classifies AI research into two categories: fundamental AI research and use-inspired AI research. The former aims to develop theory and methods that are independent of any particular domain of application whereas the latter seeks new methods and understanding in AI by situating the research in a domain of application to simultaneously inform progress in AI and solve particular use cases. NSF emphasizes that use-inspired AI is not applied AI because it develops novel AI algorithms and methods inspired by important business, societal, scientific, and engineering problems. Positioned at the intersection of technology and business, researchers in the field of Information Systems (IS) are well-suited to carry out use-inspired AI research. In particular, computational design science research, which is concerned with solving business and societal problems by developing novel computational algorithms and methods, is use-inspired AI research in the IS field. In this talk, I will discuss what computational design science research is and why it is unique (especially in comparison to machine learning research in the field of Computer Science). I will also illustrate computational design science research with an example.

報告人簡介

Xiao Fang is Professor of MIS at Lerner College of Business, University of Delaware. He also holds appointments at Department of Computer Science as well as Department of Electrical and Computer Engineering, University of Delaware. His current research focuses on financial technology, social network analytics and health care analytics with methods and tools drawn from reference disciplines including computer science (e.g., machine learning) and management science (e.g., optimization). He has published in business journals including MS, OR, MISQ and ISR as well as computer science outlets such as ACM TOIS and IEEE TKDE. Professor Fang co-founded INFORMS Workshop on Data Science in 2017. He was an associate editor for MIS Quarterly and currently serves on the editorial board of Information Systems Research, INFORMS Journal on Data Science, and Service Science (INFORMS)。

關閉

聯系我們:安徽省合肥市屯溪路193號(230009)  郵編:230009

Copyright ? 2019 合肥工業大學    皖公網安備 34011102000080號 皖ICP備05018251號-1  

本網站推薦1920*1080分辨率瀏覽

立博百家乐的玩法技巧和规则 | 百家乐官网顶路| 新世纪娱乐城信誉怎么样| 侯马市| 百家乐庄闲出现几率| 棋牌中心| AG百家乐官网大转轮| 乐宝百家乐的玩法技巧和规则| 澳门百家乐官网赢钱技术| 极速百家乐真人视讯| 百家乐官网庄家出千内幕| rmb百家乐的玩法技巧和规则| 游戏百家乐官网的玩法技巧和规则 | 百家乐官网是个什么样的游戏| 大发888-娱乐网| 最好的百家乐论坛| 平南县| 百家乐游戏网上投注| 澳门百家乐官网网上直赌| 如何胜百家乐的玩法技巧和规则 | 潢川县| 威尼斯人娱乐棋牌| 百家乐官网九| 德州扑克 规则| 玩百家乐是否有技巧| 百家乐官网信誉好的平台| 大连百家乐商场| 任我赢百家乐自动投注分析系统| 百家乐官网十佳投庄闲法| 龙博| 百家乐怎么稳赢| 保单机百家乐破解方法| 百家乐官网真人现场| 玩百家乐官网最好方法| 百家乐平注常赢玩法技巧| 在线棋牌游戏| 百家乐路珠多少钱| 赌博百家乐玩法| 百家乐官网评级网站| 棋牌游戏源码| fl水果机教程|