Location Parameter
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In
statistics Statistics (from German language, German: ', "description of a State (polity), state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of data. In applying statistics to a s ...
, a location parameter of a
probability distribution In probability theory and statistics, a probability distribution is a Function (mathematics), function that gives the probabilities of occurrence of possible events for an Experiment (probability theory), experiment. It is a mathematical descri ...
is a scalar- or vector-valued
parameter A parameter (), generally, is any characteristic that can help in defining or classifying a particular system (meaning an event, project, object, situation, etc.). That is, a parameter is an element of a system that is useful, or critical, when ...
x_0, which determines the "location" or shift of the distribution. In the literature of location parameter estimation, the probability distributions with such parameter are found to be formally defined in one of the following equivalent ways: * either as having a probability density function or probability mass function f(x - x_0); or * having a cumulative distribution function F(x - x_0); or * being defined as resulting from the random variable transformation x_0 + X, where X is a random variable with a certain, possibly unknown, distribution. See also . A direct example of a location parameter is the parameter \mu of the normal distribution. To see this, note that the probability density function f(x , \mu, \sigma) of a normal distribution \mathcal(\mu,\sigma^2) can have the parameter \mu factored out and be written as: : g(x' = x - \mu , \sigma) = \frac \exp\left(-\frac\left(\frac\right)^2\right) thus fulfilling the first of the definitions given above. The above definition indicates, in the one-dimensional case, that if x_0 is increased, the probability density or mass function shifts rigidly to the right, maintaining its exact shape. A location parameter can also be found in families having more than one parameter, such as location–scale families. In this case, the probability density function or probability mass function will be a special case of the more general form :f_(x) = f_\theta(x-x_0) where x_0 is the location parameter, ''θ'' represents additional parameters, and f_\theta is a function parametrized on the additional parameters.


Definition

Source: Let f(x) be any probability density function and let \mu and \sigma > 0 be any given constants. Then the function g(x, \mu, \sigma)= \fracf\left(\frac\right) is a probability density function. The location family is then defined as follows: Let f(x) be any probability density function. Then the family of probability density functions \mathcal = \ is called the location family with standard probability density function f(x) , where \mu is called the location parameter for the family.


Additive noise

An alternative way of thinking of location families is through the concept of additive noise. If x_0 is a constant and ''W'' is random
noise Noise is sound, chiefly unwanted, unintentional, or harmful sound considered unpleasant, loud, or disruptive to mental or hearing faculties. From a physics standpoint, there is no distinction between noise and desired sound, as both are vibrat ...
with probability density f_W(w), then X = x_0 + W has probability density f_(x) = f_W(x-x_0) and its distribution is therefore part of a location family.


Proofs

For the continuous univariate case, consider a probability density function f(x , \theta), x \in , b\subset \mathbb, where \theta is a vector of parameters. A location parameter x_0 can be added by defining: : g(x , \theta, x_0) = f(x - x_0 , \theta), \; x \in + x_0, b + x_0 it can be proved that g is a p.d.f. by verifying if it respects the two conditions g(x , \theta, x_0) \ge 0 and \int_^ g(x , \theta, x_0) dx = 1. g integrates to 1 because: : \int_^ g(x , \theta, x_0) dx = \int_^ g(x , \theta, x_0) dx = \int_^ f(x - x_0 , \theta) dx now making the variable change u = x - x_0 and updating the integration interval accordingly yields: : \int_^ f(u , \theta) du = 1 because f(x , \theta) is a p.d.f. by hypothesis. g(x , \theta, x_0) \ge 0 follows from g sharing the same image of f, which is a p.d.f. so its range is contained in , 1/math>.


See also

* Central tendency * Location test * Invariant estimator * Scale parameter * Two-moment decision models


References


General references

* {{DEFAULTSORT:Location Parameter Summary statistics Statistical parameters