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In statistics, the standard score is the (signed) number of standard deviations an observation or datum is above the mean. Thus, a positive standard score represents a datum above the mean, while a negative standard score represents a datum below the mean. It is a dimensionless quantity obtained by subtracting the population mean from an individual raw score and then dividing the difference by the population standard deviation. This conversion process is called standardizing or normalizing (however, "normalizing" can refer to many types of ratios; see normalization (statistics) for more).
Standard scores are also called zvalues, zscores, normal scores, and standardized variables; the use of "Z" is because the normal distribution is also known as the "Z distribution". They are most frequently used to compare a sample to a standard normal deviate (standard normal distribution, with μ = 0 and σ = 1), though they can be defined without assumptions of normality.
The zscore is only defined if one knows the population parameters; if one only has a sample set, then the analogous computation with sample mean and sample standard deviation yields the Student's tstatistic.
The standard score is not the same as the zfactor used in the analysis of highthroughput screening data though the two are often conflated.
The standard score of a raw score x ^{[1]} is
where:
The absolute value of z represents the distance between the raw score and the population mean in units of the standard deviation. z is negative when the raw score is below the mean, positive when above.
A key point is that calculating z requires the population mean and the population standard deviation, not the sample mean or sample deviation. It requires knowing the population parameters, not the statistics of a sample drawn from the population of interest. But knowing the true standard deviation of a population is often unrealistic except in cases such as standardized testing, where the entire population is measured. In cases where it is impossible to measure every member of a population, the standard deviation may be estimated using a random sample.
It measures the sigma distance of actual data from the average.
The Z value provides an assessment of how offtarget a process is operating.
The zscore is often used in the ztest in standardized testing – the analog of the Student's ttest for a population whose parameters are known, rather than estimated. As it is very unusual to know the entire population, the ttest is much more widely used.
Also, standard score can be used in the calculation of prediction intervals. A prediction interval [L,U], consisting of a lower endpoint designated L and an upper endpoint designated U, is an interval such that a future observation X will lie in the interval with high probability , i.e.
For example .
For the standard score Z of X it gives:^{[2]}
By determining the quantile z such that
it follows:
In mathematical statistics, a random variable X is standardized by subtracting its expected value and dividing the difference by its standard deviation
If the random variable under consideration is the sample mean of a random sample of X:
then the standardized version is
See normalization (statistics) for other forms of normalization.
