Computing Statistics under Interval and Fuzzy Uncertainty von Hung T. Nguyen | Applications to Computer Science and Engineering | ISBN 9783642249044

Computing Statistics under Interval and Fuzzy Uncertainty

Applications to Computer Science and Engineering

von Hung T. Nguyen, Vladik Kreinovich, Berlin Wu und Gang Xiang
Mitwirkende
Autor / AutorinHung T. Nguyen
Autor / AutorinVladik Kreinovich
Autor / AutorinBerlin Wu
Autor / AutorinGang Xiang
Buchcover Computing Statistics under Interval and Fuzzy Uncertainty | Hung T. Nguyen | EAN 9783642249044 | ISBN 3-642-24904-3 | ISBN 978-3-642-24904-4

From the reviews:

“This book is a research exposition by Kreinovich and coworkers. … The main goal is to present algorithms for computation of statistical characteristics (like variance) but under interval and fuzzy uncertainty of the available data. In this book, fuzzy uncertainty is reduced to interval uncertainty by alpha-cutwise consideration of (convex) fuzzy uncertainty. … For increase of readability, mathematical proofs are presented always at the end of the chapters.” (Wolfgang Näther, Zentralblatt MATH, Vol. 1238, 2012)

Computing Statistics under Interval and Fuzzy Uncertainty

Applications to Computer Science and Engineering

von Hung T. Nguyen, Vladik Kreinovich, Berlin Wu und Gang Xiang
Mitwirkende
Autor / AutorinHung T. Nguyen
Autor / AutorinVladik Kreinovich
Autor / AutorinBerlin Wu
Autor / AutorinGang Xiang

In many practical situations, we are interested in statistics characterizing a population of objects: e. g. in the mean height of people from a certain area.

 

Most algorithms for estimating such statistics assume that the sample values are exact. In practice, sample values come from measurements, and measurements are never absolutely accurate. Sometimes, we know the exact probability distribution of the measurement inaccuracy, but often, we only know the upper bound on this inaccuracy. In this case, we have interval uncertainty: e. g. if the measured value is 1.0, and inaccuracy is bounded by 0.1, then the actual (unknown) value of the quantity can be anywhere between 1.0 - 0.1 = 0.9 and 1.0 + 0.1 = 1.1. In other cases, the values are expert estimates, and we only have fuzzy information about the estimation inaccuracy.

 

This book shows how to compute statistics under such interval and fuzzy uncertainty. The resulting methods are applied to computer science (optimal scheduling of different processors), to information technology (maintaining privacy), to computer engineering (design of computer chips), and to data processing in geosciences, radar imaging, and structural mechanics.