{标题}

发布时间:{发布时间(yyyy-MM-dd)} 来源: {文章来源}

/gspdx/list.htm 高水平大学 ${c.iconUrl} ${c.pictureUrl} /rczp/list.htm 人才招聘 ${c.iconUrl} ${c.pictureUrl} /gzzd/list.htm 规章制度 ${c.iconUrl} ${c.pictureUrl} /wlwywlgcyjy/list.htm 物联网与物流工程研究院 ${c.iconUrl} ${c.pictureUrl}
首页  资讯中心  通知

智能科学与工程学院系列学术讲座

2019-12-11

智能科学与工程学院


报告题目:How to use statistical analysis methods in enhancing the quality of your scientific publications

报告人:Jane Zhang 博士

主持人: 屈挺 教授

时  间:201912112030-2200

地  点: 行政楼617


报告内容:

The use of statistical methods for analyzing data has become a common practice in virtually all scientific disciplines including engineering and life sciences. This talk will provide an introduction to statistical analysis methods frequently used by practitioners and how they can be used to improve the quality of scientific publications.  The topics include:

1) Descriptive statistics,

2) Distributions and Estimation statistics include point and interval estimates,

3) Statistical testing methods for laboratory data,

4) How to select the most appropriate method,   

5) How to evaluate and compare the performance of different methods, and

6) Methods for testing superiority vs testing for similarity.  


嘉宾简介:

Dr. Jane Zhang is the Head of Translational and Early Development Biostatistics, Sanofi. She has over 20 years of pharmaceutical industry experiences at Merck and Sanofi, respectively. She has led many projects that successfully yielded drugs that help patients with multiple sclerosis, asthma, immuno-diseases, diabetes and cancers. She has also led the developments of a number of automated big data analytical tools that are used worldwide within companies at different sites. She has more than 40 publications in peer reviewed statistical and scientific journals. She received bachelor degree in Electronics from Shandong University and MA and Ph.D. from Rutgers University in Statistics. She also taught various undergraduate and graduate courses at the City College of New York (CCNY) and Rutgers University.  



欢迎各位老师同学莅临参加!





广东省珠海市前山路206号 邮编:519070