In
statistics,
decision theory and
economics, a 'loss function' is a function that maps an
event (technically an element of a
sample space) onto a
real number representing the economic cost or regret associated with the event.
Loss functions in economics are typically expressed in monetary terms. For example:
:
Other measures of cost are possible, for example
mortality or
morbidity in the field of
public health or
safety engineering.
Loss functions are complementary to
utility functions which represent benefit and satisfaction. Typically, for
utility ''U'':
:
where ''k'' is some arbitrary constant.
Expected loss
A loss function satisfies the definition of a
random variable so we can establish a
cumulative distribution function and an
expected value. However, more commonly, the loss function is expressed as a function of some other
random variable. For example, the time that a light bulb operates before failure is a
random variable and we can specify the loss, arising from having to cope in the dark and/or replace the bulb, as a function of failure time.
The ''expected loss'' (sometimes known as
risk) is:
:
where:
★ λ(x) = the loss function
★ x = a continuous
random variable
★ f(x)= the
probability density function
Minimum expected loss (or
minimum risk) is widely used as a criterion for choosing between prospects. It is closely related to the criterion of
maximum expected utility.
Loss functions in Bayesian statistics
One of the consequences of
Bayesian inference is that in addition to experimental data, the loss function does not in itself wholly determine a decision. What is important is the relationship between the loss function and the
prior probability. So it is possible to have two different loss functions which lead to the same decision when the prior
probability distributions associated with each compensate for the details of each loss function.
Combining the three elements of the prior probability, the data, and the loss function then allows decisions to be based on maximizing the
subjective expected utility, a concept introduced by
Leonard J. Savage.
Regret
Savage also argued that using non-Bayesian methods such as
minimax, the loss function should be based on the idea of regret, i.e. the loss associated with a decision should be the difference between the consequences of the best decision that could have been taken had the underlying circumstances been known and the decision that was in fact taken before they were known.
See also
★
Decision theory
★
Discounted maximum loss
★
Genichi Taguchi