ku酷游app入口,亚博app,皇冠hg666体育

书记信箱 校长信箱 学生邮件 教工邮件
信息公开 综合信息网 网站地图 English
您当前所在位置: 首页 > 讲座报告 > 正文
讲座报告

ku酷游app入口,亚博app,皇冠hg666体育:Large-Scale Datastreams Surveillance via Pattern-Oriented-Sampling

来源:数学与统计ku酷游app入口,亚博app,皇冠hg666体育          点击:
报告人 邹长亮 教授 时间 9月10日10:00
地点 腾讯皇冠hg666体育议直播 报告时间

讲座名称:Large-Scale Datastreams Surveillance via Pattern-Oriented-Sampling

讲座时间:2020-09-10 10:00

讲座人:邹长亮 教授

讲座地点:腾讯皇冠hg666体育议直播(ID:230 606 623)


讲座人介绍:

邹长亮,南开大学统计与数据科学ku酷游app入口,亚博app,皇冠hg666体育教授,副院长。2008年毕业于南开大学获博士学位,随后留校任教。主要从事统计学及其与数据科学领域的交叉研究和实际应用。研究兴趣包括:高维数据统计推断、大规模数据流分析、变点和异常点检测等,在Ann. Stat.、Biometrika、J. Am. Stat. Asso.、Math. Program.、Technometrics、IISE Tran.等统计学和工业工程领域权威期刊上发表论文几十篇。


讲座内容:

Monitoring large-scale datastreams with limited resources has become increasingly important for real-time detection of abnormal activities in many applications. Despite the availability of large datasets, the challenges associated with designing an efficient change-detection when clustering or spatial pattern exists are not yet well addressed. In this talk, I will introduce a design-adaptive testing procedure when only a limited number of streaming observations can be accessed at each time. We derive an optimal sampling strategy, the pattern-oriented-sampling, with which the proposed test possesses asymptotically and locally best power under alternatives. Then, a sequential change-detection procedure is proposed by integrating this test with generalized likelihood ratio approach. Benefiting from dynamically estimating the optimal sampling design, the proposed procedure can improve the sensitivity in detecting clustered changes compared with existing procedures. Its advantages are demonstrated in numerical simulations and a real data example. Ignoring the neighboring information of spatially structured data will tend to diminish the detection effectiveness of traditional detection procedures.


主办单位:数学与统计ku酷游app入口,亚博app,皇冠hg666体育

长安校区地址:陕西省西安市西沣路兴隆段266号

邮编:710126

雁塔校区地址:陕西省西安市太白南路2号

邮编:710071

访问量:

版权所有:ku酷游app入口,亚博app,皇冠hg666体育    建设与运维:信息网络技术中心     陕ICP备05016463号    陕公网安备61019002002681号

ku酷游app入口(宜昌)有限公司