Introduction to Generalized Linear Modelling
نویسنده
چکیده
Preliminary statement. When I first wrote my lecture notes for the Part II course, Sarah Shea–Simonds very kindly typed the core notes in TeX, and I added to them bit by bit, again in TeX. However, my style was still rather like a telegram, partly as I was trying to save on paper. Now that I am retired, I have time to retype the notes in LaTeX. I have tried to make the style rather more ‘flowing’, and have included more various graphs, exercises, Tripos questions and solutions. This editing process is quite enjoyable but rather slow. I’ll put the revisions on my webpage from time to time, and of course would appreciate comments and suggestions. Special thanks are due to Professor Yuri Suhov for his comments and suggestions.
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