Robert J. Elliott

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Robert James Elliott (born 1940) is a British-Canadian mathematician, known for his contributions to control theory, game theory, stochastic processes and mathematical finance.

He was schooled at Swanwick Hall Grammar School in Swanwick, Derbyshire and studied mathematics in which he earn a B.A. (1961) and M.A. (1965) at the University of Oxford, as well as a Ph.D (thesis Some results in spectral synthesis advised by John Hunter Williamson, 1965) [1] and Sc.D. (1983) from the University of Cambridge. [2]

He taught and conducted research at University of Newcastle (1964), Yale University (1965–66), University of Oxford (1966–68), University of Warwick (1969–73), Northwestern University (1972–73), University of Hull (1973–86), University of Alberta (1985-2001), University of Calgary (2001-2009) and University of Adelaide (2009-2013).

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