ASTM E2586-12
Standard Practice for Calculating and Using Basic Statistics

Standard No.
ASTM E2586-12
Release Date
2012
Published By
American Society for Testing and Materials (ASTM)
Status
Replace By
ASTM E2586-12a
Latest
ASTM E2586-19e1
Scope

This practice provides approaches for characterizing a sample of n observations that arrive in the form of a data set. Large data sets from organizations, businesses, and governmental agencies exist in the form of records and other empirical observations. Research institutions and laboratories at universities, government agencies, and the private sector also generate considerable amounts of empirical data.

A data set containing a single variable usually consists of a column of numbers. Each row is a separate observation or instance of measurement of the variable. The numbers themselves are the result of applying the measurement process to the variable being studied or observed. We may refer to each observation of a variable as an item in the data set. In many situations, there may be several variables defined for study.

The sample is selected from a larger set called the population. The population can be a finite set of items, a very large or essentially unlimited set of items, or a process. In a process, the items originate over time and the population is dynamic, continuing to emerge and possibly change over time. Sample data serve as representatives of the population from which the sample originates. It is the population that is of primary interest in any particular study.

The data (measurements and observations) may be of the variable type or the simple attribute type. In the case of attributes, the data may be either binary trials or a count of a defined event over some interval (time, space, volume, weight, or area). Binary trials consist of a sequence of 0s and 1s in which a 1 indicates that the inspected item exhibited the attribute being studied and a 0 indicates the item did not exhibit the attribute. Each inspection item is assigned either a 0 or a 1. Such data are often governed by the binomial distribution. For a count of events over some interval, the number of times the event is observed on the inspection interval is recorded for each of n inspection intervals. The Poisson distribution often governs counting events over an interval.

For sample data to be used to draw conclusions about the population, the process of sampling and data collection must be considered, at least potentially, repeatable. Descriptive statistics are calculated using real sample data that will vary in repeating the sampling process. As such, a statistic is a random variable subject to variation in its own right. The sample statistic usually has a corresponding parameter in the population that is unknown (see Section 5). The point of using a statistic is to summarize the data set and estimate a corresponding population characteristic or parameter.

Descriptive statistics consider numerical, tabular, and graphical methods for summarizing a set of data. The methods considered in this practice are used for summarizing the observations from a single variable.

The descriptive statistics described in this practice are:

Mean, median, min, max, range, mid range, order statistic, quartile, empirical percentile, quantile, interquartile range, variance, standard deviation, Z-score, coefficient of variation, skewness and kurtosis, and standard error.

Tabular methods described in this practice are:

Frequency distribution, relative frequency distribution, cumulative frequency distribution, and cumulative relative frequency distribution.

Graphical methods described in this practice are:

Histogram, ogive, boxplot, dotplot, normal probability plot, and q-q ......

ASTM E2586-12 history

  • 2019 ASTM E2586-19e1 Standard Practice for Calculating and Using Basic Statistics
  • 2019 ASTM E2586-19 Standard Practice for Calculating and Using Basic Statistics
  • 2018 ASTM E2586-18 Standard Practice for Calculating and Using Basic Statistics
  • 2016 ASTM E2586-16 Standard Practice for Calculating and Using Basic Statistics
  • 2014 ASTM E2586-14 Standard Practice for Calculating and Using Basic Statistics
  • 2013 ASTM E2586-13 Standard Practice for Calculating and Using Basic Statistics
  • 2012 ASTM E2586-12b Standard Practice for Calculating and Using Basic Statistics
  • 2012 ASTM E2586-12a Standard Practice for Calculating and Using Basic Statistics
  • 2012 ASTM E2586-12 Standard Practice for Calculating and Using Basic Statistics
  • 2010 ASTM E2586-10a Standard Practice for Calculating and Using Basic Statistics
  • 2010 ASTM E2586-10 Standard Practice for Calculating and Using Basic Statistics
  • 2007 ASTM E2586-07 Standard Practice for Calculating and Using Basic Statistics



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