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Probability Approximations and Beyond (Lecture Notes in Statistics: Proceedings, Vol. 205) First Edition
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In June 2010, a conference, Probability Approximations and Beyond, was held at the National University of Singapore (NUS), in honor of pioneering mathematician Louis Chen. Chen made the first of several seminal contributions to the theory and application of Stein’s method. One of his most important contributions has been to turn Stein’s concentration inequality idea into an effective tool for providing error bounds for the normal approximation in many settings, and in particular for sums of random variables exhibiting only local dependence. This conference attracted a large audience that came to pay homage to Chen and to hear presentations by colleagues who have worked with him in special ways over the past 40+ years.
The papers in this volume attest to how Louis Chen’s cutting-edge ideas influenced and continue to influence such areas as molecular biology and computer science. He has developed applications of his work on Poisson approximation to problems of signal detection in computational biology. The original papers contained in this book provide historical context for Chen’s work alongside commentary on some of his major contributions by noteworthy statisticians and mathematicians working today.
- ISBN-101461419654
- ISBN-13978-1461419655
- EditionFirst Edition
- PublisherSpringer
- Publication dateDecember 7, 2011
- LanguageEnglish
- Dimensions6.1 x 0.4 x 9.25 inches
- Print length173 pages
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From the Back Cover
In June 2010, a conference, Probability Approximations and Beyond, was held at the National University of Singapore (NUS), in honor of pioneering mathematician Louis Chen. Louis is perhaps best known for his elegant Poisson approximation method, developed from Stein’s original approach to normal approximation. Another of his important contributions has been to turn Stein’s concentration inequality idea into an effective tool for providing error bounds for the normal approximation in many settings, and in particular for sums of random variables exhibiting only local dependence. The conference attracted a large audience that came to pay homage to Louis, and to hear presentations by colleagues who have worked with him in special ways over the past 40 years.
The papers in this volume attest to how Louis Chen’s ideas have influenced and continue to influence such diverse areas as molecular biology and computer science. He himself has developed applications of his work on Poisson approximation to problems of signal detection in computational biology. The original papers contained in this book provide historical context for Louis’s work, alongside commentary on some of his major contributions by noteworthy statisticians and mathematicians working today.
The papers in this volume attest to how Louis Chen’s ideas have influenced and continue to influence such diverse areas as molecular biology and computer science. He himself has developed applications of his work on Poisson approximation to problems of signal detection in computational biology. The original papers contained in this book provide historical context for Louis’s work, alongside commentary on some of his major contributions by noteworthy statisticians and mathematicians working today.
Product details
- Publisher : Springer; First Edition (December 7, 2011)
- Language : English
- Paperback : 173 pages
- ISBN-10 : 1461419654
- ISBN-13 : 978-1461419655
- Item Weight : 8.8 ounces
- Dimensions : 6.1 x 0.4 x 9.25 inches
- Best Sellers Rank: #10,786,730 in Books (See Top 100 in Books)
- #2,342 in Stochastic Modeling
- #11,672 in Statistics (Books)
- #20,140 in Probability & Statistics (Books)
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