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* = applied session       ! = JSM meeting theme

Activity Details


43 * !
Sun, 8/8/2021, 3:30 PM - 5:20 PM Virtual
Distributed Regressions in Real-World Data — Invited Papers
Section on Statistics in Epidemiology, ENAR, Section for Statistical Programmers and Analysts
Organizer(s): Yong Chen, University of Pennsylvania
Chair(s): Jiayi Tong, University of Pennsylvania
3:35 PM Distributed Privacy-Preserving Estimation of Time-to-Event Models
Chao-Kang Jason Liang, National Institute of Allergy and Infectious Diseases
4:00 PM Combining Cox Regressions Across a Heterogeneous Distributed Research Network Facing Small and Zero Counts
Martijn Schuemie, Janssen R&D
4:25 PM Statistical Inferences with Distributed Estimators
Cheng Yong Tang, Temple University
4:50 PM Distributed Regression: Estimation, Prediction, and Inference
Yong Chen, University of Pennsylvania
5:15 PM Floor Discussion
 
 

220781
Sun, 8/8/2021, 5:00 PM - 6:30 PM
Section for Statistical Programmers and Analysts Business Meeting — Other Cmte/Business
Section for Statistical Programmers and Analysts
Chair(s): Marianne Miller, Eli Lilly and Company
Time: 5:00 PM – 6:30 PM EDT
Join Zoom Meeting
https://udayton.zoom.us/j/89033767469?pwd=dDFtMTJRR0FnczlYcUZzSTNSZWhiUT09

Meeting ID: 890 3376 7469
Password: 129785
 
 

73 * !
Mon, 8/9/2021, 10:00 AM - 11:50 AM Virtual
Data Visualization Game: Who Is Winning? Sponsors, Third Parties, or Someone Else? — Invited Panel
Section for Statistical Programmers and Analysts, Biopharmaceutical Section, Section on Statistical Graphics
Organizer(s): Vipin Arora, Eli Lilly and Company
Chair(s): Vipin Arora, Eli Lilly and Company
10:05 AM Data Visualization Game: Who Is Winning? Sponsors, Third Parties, or Someone Else?
Panelists: Kent Koprowicz, Axio Research
Douglas Landsittel, Indiana University
Neby Bekele, Exelixis Inc
Richard C. Zink, Lexitas Pharma Services, Inc.
Melvin Munsaka, AbbVie Inc
11:40 AM Floor Discussion
 
 

220782
Mon, 8/9/2021, 6:00 PM - 7:00 PM
Section for Statistical Programmers and Analysts Mixer — Other Cmte/Business
Section for Statistical Programmers and Analysts
Chair(s): Marianne Miller, Eli Lilly and Company
Time: 6:00 PM – 7:00 PM EDT
Join Zoom Meeting
https://udayton.zoom.us/j/82236405119?pwd=NUpiTjFyWHVocnU5R1lPMXUzNU9zZz09

Meeting ID: 822 3640 5119
Password: 302428
 
 

160 * !
Tue, 8/10/2021, 10:00 AM - 11:50 AM Virtual
Time Series Methodology: Modern Practices in Seasonal Adjustment and Software — Topic-Contributed Papers
Section for Statistical Programmers and Analysts, Government Statistics Section, Business and Economic Statistics Section
Organizer(s): James A Livsey, U. S. Census Bureau
Chair(s): Vladas Pipiras, University of North Carolina at Chapel Hill
10:05 AM Adapting the Seasonal Adjustment of Local Area Unemployment Statistics to the COVID-19 Pandemic
Richard Tiller, Bureau of Labor Statistics; Jennifer Oh, Bureau of Labor Statistics; Lizhi Liu, Bureau of Labor Statistics
10:25 AM New Seasonal Adjustment and Signal Extraction Methods in the Manufacturers’ Shipments, Inventories, and Orders (M3) Survey
James A Livsey, U. S. Census Bureau; Colt Viehdorfer, US Census Bureau
10:45 AM Toward a New Paradigm for Scanner Data Price Indices: Applying Big Data Techniques to Big Data
Jens Mehrhoff, Deutsche Bundesbank
11:05 AM Recent Advances in Count Time Series Models
Stefanos Kechagias, SAS Institute; Vladas Pipiras, University of North Carolina at Chapel Hill; James A Livsey, U. S. Census Bureau; Robert Lund, UC Santa Cruz; Yisu Jia, University of North Florida
11:25 AM Review of Available Programs for Seasonal Adjustment of Weekly Data Presentation
Thomas Evans, Bureau of Labor Statistics; Brian C Monsell, U.S. Bureau of Labor Statistics; Michael Sverchkov, Bureau of Labor Statistics
11:45 AM Floor Discussion
 
 

262 * !
Wed, 8/11/2021, 1:30 PM - 3:20 PM Virtual
Emerging Statistical Theory and Methods in Deep Learning — Invited Papers
Section for Statistical Programmers and Analysts, Section on Statistical Learning and Data Science, Health Policy Statistics Section
Organizer(s): Ping Ma, University of Georgia
Chair(s): Ping Ma, University of Georgia
1:35 PM Probabilistic Connection Importance Inference and Lossless Compression of Deep Neural Networks
Xin (Shayne) Xing, Virginia Tech
2:05 PM Causal Inference via Artificial Neural Networks: From Prediction to Causation
Shujie Ma, University of California, Riverside; Xiaohong Chen, Yale University; Ying Liu, University of California, Riverside; Zheng Zhang, Renmin University of China
2:35 PM Sufficient Dimension Reduction for Classification Using Principal Optimal Transport Direction
Cheng Meng, Institute of Statistics and Big Data, Renmin University of China; Jun Yu, School of Mathematics and Statistics, Beijing Institute of Technology; Jingyi Zhang, Center for Statistical Science, Tsinghua University; Ping Ma, University of Georgia; Wenxuan Zhong, University of Georgia
3:15 PM Floor Discussion
 
 

347 !
Thu, 8/12/2021, 10:00 AM - 11:50 AM Virtual
Recent Advances in Clustering and Mixture Models Analysis — Topic-Contributed Papers
Section for Statistical Programmers and Analysts, IMS, Section on Statistical Learning and Data Science, International Chinese Statistical Association
Organizer(s): Anderson Ye Zhang, University of Pennsylvania
Chair(s): Anderson Ye Zhang, University of Pennsylvania
10:05 AM Structures of Local Minima in K-Means and the Likelihood of Mixture Models
Yudong Chen, School of ORIE, Cornell University; Xumei Xi, School of ORIE, Cornell University
10:25 AM Causal Inference for Randomized Experiments in Social Networks
David Choi, Carnegie Mellon University
10:45 AM Learning Mixtures of Permutations: Groups of Pairwise Comparisons and Combinatorial Method of Moments Presentation
Cheng Mao, Georgia Institute of Technology; Yihong Wu, Yale
11:05 AM Efficient Clustering for Stretched Mixtures: Landscape and Optimality
Kaizheng Wang, Columbia University; Yuling Yan, Princeton University; Mateo Diaz, Cornell University
11:25 AM Sparse Topic Modeling: Computational Efficiency and Near-Optimal Algorithms
Ruijia Wu, Department of Statistics, University of Pennsylvania; Linjun Zhang, Rutgers University; Tony Cai, University of Pennsylvania
11:45 AM Floor Discussion