November 14 at 11:00 a.m.
              Trivial Mathematics but Deep Statistics: 
              Simpson's Paradox and Its Impact on Your Life
              
             
              Few paradoxes have impacted everyday life 
                more than Simpson's Paradox has. Yet paradoxically, Simpson's 
                paradox is not even a paradox in the mathematical sense. Simple 
                arithmetic can easily show that it is possible for a surgeon to 
                have the highest overall success rate, and yet have the lowest 
                success rates for each type of surgeries he performed. The fact 
                that you may feel this phenomenon counterintuitive is precisely 
                the reason that the Simpson's paradox has led to many erroneous 
                conclusions and decisions that affect people's life, particularly 
                those from social and medical studies, where comparisons using 
                aggregated data are routinely performed. This talk demonstrates 
                the danger of Simpson's paradox via a number of real-life examples, 
                from the famous Berkeley sex bias case to measuring disparity 
                in mental health service based on the recently released National 
                Latino and Asian American Study (NLAAS), and from batting averages 
                and to a recent debate on unemployment rates (Wall Street Journal, 
                December 2, 2009). No statistical background is required to understand 
                this talk, but only some common sense and a desire to think deeply 
                beyond formulas. 
              (This is also G-rated talk because it is a "gadgeted" 
                seminar. Never heard of it? Well, this is your chance 
) 
                
              
            
            
  November 15 at 11:00 a.m.
    Who is crazier: Bayes or Fisher? (slides)
             
              Objective statistical inference has been 
                an object of desire as early as inference itself. Some consider 
                it an illusion; others counter that while mirages may make distant 
                goals appear near, they ultimately reflect reality. Most approaches 
                share a common oddity: in order to obtain "objective" 
                inference, one seems have to do something a bit crazy, at least 
                to those who take probability theory seriously. Objective Bayesians 
                advocate the use of improper prior distributions that have no 
                probabilistic reality, and Fisher's fiducial inference apparently 
                violates the most basic probabilistic laws. But while one illegality 
                (objective Bayes) gains ever greater popularity, fiducial inference 
                still languishes under an old nickname "Fisher's biggest 
                blunder". Does this mean Fisher was crazier than Bayes, or 
                is madness a mask for innovation? If you cannot infer objectively 
                the answer to this non-objective question, this talk will provide 
                a subjective answer from a missing-data perspective. (This is 
                joint work with Keli Liu.) 
            
            
            
Xiao-Li 
              Meng is an award-winning statistician, and the Whipple V. N. Jones 
              Professor of Statistics at Harvard University. He received the COPSS 
              Presidents' Award in 2001. Since 2004 Meng has been Chair of Harvard's 
              Department of Statistics.Meng received his B.Sc. from Fudan University 
              in 1982 and his Ph.D. in statistics from Harvard University in 1990. 
              He was elected a fellow of the Institute of Mathematical Statistics 
              in 1997 and of the American Statistical Association in 2004.
            
            The Distinguished Lecture Series in Statistical Science series was 
            established in 2000 and takes place annually. It consists of two lectures 
            by a prominent statistical scientist. The first lecture is intended 
            for a broad mathematical sciences audience. The series occasionally 
            takes place at a member university and is tied to any current thematic 
            program related to statistical science; in the absence of such a program 
            the speaker is chosen independently of current activity at the Institute. 
            A nominating committee of representatives from the member universities 
            solicits nominations from the Canadian statistical community and makes 
            a recommendation to the Fields Scientific Advisory Panel, which is 
            responsible for the selection of speakers. 
            
Distinguished 
              Lecture Series in Statistical Science Index