Publication Date:
2021
abstract:
When analyzing real data sets, observations different from the majority
of the data are sometimes found. These observations are usually called outliers and
can be defined as individual data values that are numerically distant from the rest of
the sample, thus masking its probability distribution. Outliers require special attention
because they can have a significant impact in the concrete strength estimation
process and because they may signal the presence of a different concrete population
that deserves a separate assessment. The two-step process involved in an outlier
analysis (outlier identification and outlier handling) is presented, discussing several
statistical methodologies that are available for its implementation. To illustrate the
application of an outlier analysis, examples involving univariate and multivariate
datasets are presented. Several statistical methodologies are implemented for outlier
identification, while outlier handling is illustrated by using robust statistics, i.e. outlier
accommodation approaches that reduce the effect of existing outliers on the outcomes
of statistical analyses of the data.
Iris type:
02.01 Contributo in volume (Capitolo o Saggio)
Keywords:
outlayers
List of contributors: