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                    THE 
                      FIELDS INSTITUTE FOR RESEARCH IN MATHEMATICAL SCIENCES 
                    
                       
                         
                           
                            
                               
                                 
                                   
                                     
                                      
                                         
                                          Thematic 
                                            Program on Statistical Inference, 
                                            Learning, and Models for Big Data 
                                             
                                            January to June, 2015 | 
                                         
                                         
                                          | Organizing 
                                            Committee | 
                                         
                                         
                                          Nancy 
                                            Reid (Toronto) 
                                            Yoshua Bengio (Montréal) 
                                            Hugh Chipman (Acadia) 
                                            Sallie Keller (Virginia Tech) 
                                           | 
                                          
                                Lisa 
                                  Lix (Manitoba) 
                                  Richard Lockhart (Simon Fraser) 
                                  Ruslan Salakhutdinov (Toronto) 
                                   | 
                                         
                                         
                                           
                                            
                                               
                                                | International 
                                                  Advisory Committee | 
                                               
                                               
                                                Constantine 
                                                  Gatsonis (Brown) 
                                                  Susan Holmes (Stanford)  
                                                  Snehelata Huzurbazar (Wyoming) 
                                                  Nicolai Meinshausen (ETH Zurich) 
                                                   | 
                                                Dale 
                                                  Schuurmans (Alberta) 
                                                  Robert Tibshirani (Stanford) 
                                                   
                                                  Bin Yu (UC Berkeley) | 
                                               
                                             
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  Overview   
   
  This thematic program emphasizes both applied and theoretical aspects of 
    statistical inference, learning and models in big data. The opening conference 
    will serve as an introduction to the program, concentrating on overview lectures 
    and background preparation. Workshops throughout the year will emphasize deep 
    learning, statistical learning, visualization, networks, health and social 
    policy, and physical sciences. A number of allied activities at PIMS, CRM 
    and AARMS are also planned, and listed at the bottom of this page. This thematic 
    program is taking place with the cooperation of the new Canadian Statistical 
    Sciences Institute (CANSSI).  
    It is expected that all activities will be webcast using the FieldsLive system 
    to permit wide participation.  
   
  Conferences and Workshops 
   
  
    - January 12  23, 2015
 
      Opening Conference and 
      Boot Camp 
      Organizing committee: Nancy Reid (Chair), Sallie Keller, Lisa Lix, Bin Yu 
       
       
     
    - January 26  30, 2015 
 
      Workshop on Big Data and Statistical Machine Learning 
      Organizing committee: Ruslan Salakhutdinov (Chair), Dale Schuurmans, Yoshua 
      Bengio, Hugh Chipman, Bin Yu  
       
     
    - February 9  11 , 2015
 
      Workshop on Optimization and Matrix Methods in Big 
      Data 
      Organizing Committee: Stephen Vavasis Chair; Anima Anandkumar, Petros Drineas, 
      Michael Friedlander, Nancy Reid, Martin Wainwright.  
       
     
    - February 23  27, 2015 
 
      Workshop on Visualization for Big Data: Strategies 
      and Principles 
      Organizing Committee: Nancy Reid (Chair), Susan Holmes, Snehelata Huzurbazar, 
      Hadley Wickham, Leland Wilkinson  
       
     
    -  March 23-27, 2015 
 
      Workshop on Big Data in Health Policy 
      Organizing Committee: Lisa Lix (Chair), Constantine Gatsonis, Sharon-Lise 
      Normand, Therese Stukel 
       
       
    - April 13  16, 2015
 
      Workshop on Big Data for Social Policy 
      Organizing Committee: Sallie Keller (chair), Robert Groves, Mary Thompson 
       
       
     
    -  June 12 13, 2015
 
      Closing Conference  
      Organizing Committee: Nancy Reid (Chair), Sallie Keller, Lisa Lix, Hugh 
      Chipman, Rus Salakhutdinov, Yoshua Bengio, Richard Lockhart  
      to be held at AARMS of Dalhousie University, 
      Held in conjunction with the Annual Meeting of the Canadian Statistical 
      Sciences Institute, in the two days preceding the Annual Meeting of the 
      Statistical Society of Canada. Overview lectures by members of the organizing 
      committee will highlight the research generated by the thematic program. 
       
       
   
  Training 
   
   
    Graduate Course on Large Scale Machine Learning 
       
      Monday, 11 a.m. -2 p.m, January 5 to March 30 ( no classes Feb 16-20), Stewart 
      Library, Fields Institute 
      Instructor: Russ Salakhutdinov, Departments of Computer Science and Statistical 
      Sciences, University of Toronto  
   
  
     
      Description: Statistical machine learning is a very dynamic field that 
        lies at the intersection of statistics and computational sciences. The 
        goal of statistical machine learning is to develop algorithms that can 
        "learn" from data using statistical and computational methods. Over the 
        last decade, driven by rapid advances in numerous fields, such as computational 
        biology, neuroscience, data mining, signal processing, and finance, applications 
        that involve large amounts of high-dimensional data are not that uncommon. 
        The goal of this course is to introduce core concepts of large-scale machine 
        learning and discuss scalable techniques for analyzing large amounts of 
        data. Both theoretical and practical aspects will be discussed.  
       
     
   
   
    Graduate Course on Topics in Inference for Big Data  
      For more detail see http://fields2015bigdata2inference.weebly.com/ 
      Friday, 1 p.m. -4 p.m, January 9 to March 27 ( no classes Feb 16-20), Stewart 
      Library, Fields Institute 
      Instructors: Nancy Reid, Department of Statistical Sciences, University 
      of Toronto; Mu Zhu, Department of Statistics and Actuarial Science, University 
      of Waterloo  
   
  
     
      Description: This course will introduce students to the topics under 
        discussion during the thematic program on Statistical Inference in Big 
        Data, with a mix of background lectures and guest lectures. The goal is 
        to prepare students, postdoctoral fellows, and other interested participants 
        to benefit from upcoming workshops in the thematic program, and to provide 
        a venue for further discussion of keynote presentations after the workshops. 
       
     
    Short Course on Latent Tree graphical models 
       
      April 27, 2015 at 10:00 a.m. - 12:00 p.m. 
      April 28, 2015 at 10:00 a.m. - 12:00 p.m.  
      April 29, 2015 at 10:00 a.m. - 11:00 a.m.  
     
      Stewart Library, The Fields Institute 
      Instructor: Piotr Zwiernik, University of Genoa 
     
    
       
        Description: 
           
          1. Trees, tree metrics and the space of trees. 
          I will introduce basic graph-theoretic tree concepts, tree metrics 
          andother tree spaces that arise naturally in the study of latent treegraphical 
          models. 
        2. Latent tree graphical models. 
          I will define the model and discuss the basic links to Bayesian 
          networks and undirected graphical models on trees. I will present somebasic 
          results concerning identifiability and moment structure. 
        3. Inference. 
          In many application the main interest is in learning the underlying 
          tree. I will give an overview of some methods of learning the tree and 
          show how the idea of tree metrics provides a natural estimator. 
        4. Parameter estimation. 
          I will introduce the structural EM algorithm for the MLE estimation 
          and discuss some other approximate methods. 
        5. Special submodels: Hidden Markov model, symmetric models and 
          models 
          used in phylogenetics. 
          Many popular models arise as special cases of latent tree Graphicalmodels. 
          In this lecture I discuss these examples. 
       
     
   
  Postdoctoral Fellows and Program Visitors
  
    The Thematic Program on Statistical Inference, Learning, and Models for 
      Big Data is pleased to welcome the following 
      Postdoctoral Fellows to the Program  
   
  
    
       
         
           
            
               
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                   Postdoctoral Fellows  
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                |  
                    Fuqi Chen 
                    PhD, University of Windsor 
                   
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                   Armin Hatefi 
                    PhD, University of Manitoba 
                    Fields-Ontario 
                    Postdoctoral Fellow 
                   
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                   Einat Gil 
                    PhD, University of Haifa 
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                   Roger Grosse 
                    PhD, Massachusetts Institute of Technology  
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                   Alexander Schwing 
                    PhD, ETH Zurich 
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                   Cathal Smyth 
                    PhD, University of Toronto  
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   Allied Activity 
  
    
       
        |  
           January - April, 2015 
            Joint 
            Big Data Program-Statistics Department Colloquia 
          July 21  August 15, 2014 
            Summer School: Statistical 
            Learning in Big Data 
            Instructors: Hugh Chipman, Acadia; Sunny Wang, St. Francis Xavier 
            held at AARMS  
           
          April 7-9, 2015  
            Coxeter 
            Lecture Series 
            Michael Jordan (University of California, Berkeley)  
            Room 230, Fields Institute 
             
            April 9-10, 2015  
            Distinguished 
            Lecture Series in Statistical Science 
            Terry Speed (Walter and Eliza Hall Institute for Medical Research, 
            Melbourne)  
            Room 230, Fields Institute 
           
          April 20 24, 2015  
            Workshop 
            Statistical Inference for Large Scale Data 
            with Richard Lockhart (Chair), Nicolai Meinshausen 
            held at PIMS, Simon Fraser  
          April 23-24, 2015 
            Distinguished 
            Lecture Series in Statistical Science 
            Bin Yu, University of California, Berkeley  
            Room 230, Fields Institute 
             
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           April 21-24, 2015  
            CANSSI 
            Workshop on Complex spatio-temporal data structures: 
            Methods and applications 
            held at the Fields Institutue  
             
            April 29-30, 2015 
            Big 
            Data in Commercial and Retail Banking  
            with Mark Reesor, (Western); Matt Davison, (Western); Adam Metzler, 
            (Wilfrid Laurier ) 
            held at the Fields Institutue  
             
            May 4  8, 2015  
            Workshop 
            and Short Course on Statistical and computational challenges in networks, 
            web mining and cybersecurity:  
            with Hugh Chipman (Chair), François Théberge (U Ottawa) 
            held at CRM, Montreal  
             
            May 1115, 2015 
            Workshop 
            on Big Data in Environmental Science 
            with Richard Lockhart (Chair), James Zidek (UBC)  
            held at PIMS, University of British Columbia 
             
            July 31- August 9, 2015 
            Deep 
            Learning Summer School 
            https://sites.google.com/site/deeplearningsummerschool/ 
            Organizing Committee: Yoshua Bengio, Chair  
            held at CRM, Montreal  
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