Weight function
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A weight function is a mathematical device used when performing a sum, integral, or average in order to give some elements more of a "weight" than others. They occur frequently in statistics and analysis, and are closely related to the concept of a measure. Weight functions can be constructed in both discrete and continuous settings.
[edit] Discrete weights
In the discrete setting, a weight function is a positive function defined on a discrete set A, which is typically finite or countable. The weight function w(a): = 1 corresponds to the unweighted situation in which all elements have equal weight. One can then apply this weight to various concepts.
If
is a real-valued function, then the unweighted sum of f on A is
;
but for a weight function
,
the weighted sum is
.
One common application of weighted sums arises in numerical integration.
If B is a finite subset of A, one can replace the unweighted cardinality |B| of B by the weighted cardinality
If A is a finite non-empty set, one can replace the unweighted mean or average
by the weighted mean or weighted average
.
In this case only the relative weights are relevant. Weighted means are commonly used in statistics to compensate for the presence of bias.
The terminology weight function arises from mechanics: if one has a collection of n objects on a lever, with weights
(where weight is now interpreted in the physical sense) and locations
,
then the lever will be in balance if the fulcrum of the lever is at the center of mass
,
which is also the weighted average of the positions xi.
[edit] Continuous weights
In the continuous setting, a weight is a positive measure such as w(x) dx on some domain Ω, which is typically a subset of an Euclidean space , for instance Ω could be an interval [a,b]. Here dx is Lebesgue measure and
is a non-negative measurable function. In this context, the weight function w(x) is sometimes referred to as a density.
- If
is a real-valued function, then the unweighted integral
can be generalized to the weighted integral
. Note that one may need to require f to be absolutely integrable with respect to the weight w(x) dx in order for this integral to be finite.
- If E is a subset of Ω, then the volume vol(E) of E can be generalized to the weighted volume
.
- If Ω has finite non-zero weighted volume, then we can replace the unweighted average
by the weighted average
- If
and
are two functions, one can generalize the unweighted inner product
to a weighted inner product
. See the entry on Orthogonality for more details.