久久久成人毛片无码,成人做爰A片免费看黄冈美女直播,精品国产乱码久久久久久1区2区 ,精品偷拍被偷拍在线观看

X
...

通知公告

學(xué)術(shù)報(bào)告通知(編號(hào):2018-38)

發(fā)布時(shí)間:2018-11-27 瀏覽次數(shù):

報(bào)告題目:Data driven causal relationship exploration and applications

報(bào)告人:Jiuyong Li

單位:University of South Australia

報(bào)告時(shí)間:2018-11-29上午9:00-9:50

報(bào)告地點(diǎn):翡翠湖校區(qū)科教大樓第一會(huì)議室

報(bào)告摘要:

Various machine learning methods make use of association relationships for classification and decision making. An association shows that two variables exhibit the same (or opposite) trend but may not indicate that the two variables have an inherent relationship. In other words, an association relationship can be spurious and/or conditional. Causal relationship discovery is to find the inherent relationships where the change of one variable leads to the change of another. The identification of casual relationships is crucial for understanding data and supports evidence based decision making. Causal discovery is a central task for science, health, economy and nearly all areas of studies. In this talk, I will discuss our work in the area and applications.

報(bào)告人簡介:

Dr Jiuyong Li is a Professor and an Associate Head of School at the School of Information Technology and Mathematical Sciences of University of South Australia. He leads the Data Analytics Group in the School. His main research interests are in data mining, bioinformatics, and data privacy. His research work has been supported by Australian Research Council and Cooperative Research Centre for many years. He has published more than 100 papers, mostly in leading journals and conferences in the areas. He is a member of the Australian Computer Society National Committee for Artificial Intelligence.

學(xué)院地址:安徽省合肥市蜀山區(qū)丹霞路485號(hào)(太陽集團(tuán)tyc5997翡翠湖校區(qū))
郵編:230601 聯(lián)系電話:0551-6290 1380
Copyright @ 2023 中國·太陽集團(tuán)tyc5997(股份)有限公司 皖公網(wǎng)安備 34011102000080號(hào) 皖I(lǐng)CP備05018251號(hào)-1
TOP