
From the reviews:
„... The book is excellent.“ (Short Book Reviews of the ISI, June 2006)
„Now we have All of Nonparametric Statistics … the writing is excellent and the author is to be congratulated on the clarity achieved. … the book is excellent.“ (N. R. Draper, Short Book Reviews, 26:1, 2006)
"Overall, I enjoyed reading this book very much. I like Wasserman's intuitive explanations and careful insights into why one path or approach is taken over another. Most of all, I am impressed with the wealth of information on the subject of asymptotic nonparametric inferences.„ (Stergios B. Fotopoulos for Technometrics, 49:1, February 2007)
“The intention of this book is to give a single source with brief accounts of modern topics in nonparametric inference. … The text is a mixture of theory and applications, and there are lots of examples … . The text is also illustrated with many informative figures. … this book covers many topics of modern nonparametric methods, with focus on estimation and on the construction of confidence sets. It should be a useful reference for anyone interested in the theories and methods of this area.„ (Andreas Karlsson, Statistical Papers, 48, 2006)
“...ANPS provides an excellent complement or a complete course textbook with a mixture of theoretical and computational exercises. ... For a book in a rapidly evolving field, the content and references are quit eup to date. ... As advertised, it offers a well-written, albeit brief account of numerous topics in modern nonparametric inference.„ (Greg Ridgeway, Journal of the American Statistical Association, Vol. 102, No. 477, 2007)
“This is a nicely written textbook oriented mainly to master level statistics and computer science students. The author provides wide a coverage of modern nonparametric methods … . the key ideas and basic proofs are carefully explained. Bibliographic remarks point the reader to references that containfurther details. Each chapter is finished with useful exercises … . The book is also suitable for researchers in statistics, machine learning, and data mining." (Oleksandr Kukush, Zentralblatt MATH, Vol. 1099 (1), 2007)