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Identification of Multivariate Outliers
Details
Outliers, or unusually extreme values, have
traditionally been viewed as a nuisance to
researchers. Classical statistical analysis can lead
to completely opposite conclusions if outliers
are present or absent. Such points can, however,
alert the researcher to unexpected features hidden
within in a data set, and lead down paths of
surprising discovery. Outliers could even be the
primary purpose of the investigation. Credit card
fraud, electronic network intrusions, and
unusual stock characteristics preceding a large move,
for instance, can all be seen as outliers whose
presence is important to establish as quickly as
possible. Several methods have been
proposed to identify outliers, but many of these are
not computationally suitable for large data sets.
This book presents a review of multivariate outlier
identification with particular emphasis on large data
sets, and investigates a new method. The intended
audience is statistics practitioners and data
analysts who wish to detect outliers, as well as
those interested in the historical development of the
field. Basic familiarity with statistical concepts is
assumed.
Autorentext
Mark Werner holds a Ph.D from the University of Colorado atDenver in Applied Mathematics/Statistics, and a B.Sc. and M.Sc.from the University of Stellenbosch, South Africa, in AppliedMathematics. His research interests include robust statistics,exploratory data analysis, quantitative finance and statisticaleducation.
Klappentext
Outliers, or unusually extreme values, havetraditionally been viewed as a nuisance toresearchers. Classical statistical analysis can leadto completely opposite conclusions if outliersare present or absent. Such points can, however,alert the researcher to unexpected features hiddenwithin in a data set, and lead down paths ofsurprising discovery. Outliers could even be theprimary purpose of the investigation. Credit cardfraud, electronic network intrusions, andunusual stock characteristics preceding a large move,for instance, can all be seen as outliers whosepresence is important to establish as quickly aspossible. Several methods have beenproposed to identify outliers, but many of these arenot computationally suitable for large data sets.This book presents a review of multivariate outlieridentification with particular emphasis on large datasets, and investigates a new method. The intendedaudience is statistics practitioners and dataanalysts who wish to detect outliers, as well asthose interested in the historical development of thefield. Basic familiarity with statistical concepts isassumed.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783639142778
- Sprache Englisch
- Größe H220mm x B220mm
- Jahr 2013
- EAN 9783639142778
- Format Kartonierter Einband (Kt)
- ISBN 978-3-639-14277-8
- Titel Identification of Multivariate Outliers
- Autor Mark Werner
- Untertitel A review and empirical investigation to locate potentially informative data points
- Herausgeber VDM Verlag Dr. Müller e.K.
- Anzahl Seiten 240
- Genre Mathematik