Absolutely constant measure

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The concept of absolutely continuous measure relates the zero sets of different measures in measure theory . Absolutely continuous measures are closely related to the absolutely continuous functions of analysis and the absolutely continuous distributions of probability theory .

definition

It is a measuring room and and two ( signed , complex or positive) dimensions on .

The measure is called absolutely continuous with respect to (also -continuous ), in characters , if every -null set is also a -null set.

For any measurable amount therefore follows from well . Conversely, one then says that measure dominates . Through one is quasi-ordering on the set of dimensions to explain.

Examples

The zero measure, which assigns the measure to every quantity , is naturally dominated by every measure.

Let the counting measure on the natural numbers , more precisely on the measuring room . Then each measure on respect. Absolutely continuous, because the only -null is the empty set .

The probability measure of the standard normal distribution has a probability density with respect to the Lebesgue measure , because for every Lebesgue measurable set applies

.

It follows from this that every Lebesgue null set of is also assigned the probability , that is . For example is .

The last example can be generalized. Suppose a measure can be represented by a density function with respect to another measure , so it applies to every set from the σ-algebra . Then is , because the integral over a null set is always .

The reverse is generally not true . Thus the Lebesgue measure with regard to the counting measure is absolutely continuous, but has no density. For certain special cases, however, a reversal can be specified (see below ).

Characterizations

In certain cases, properties of dimensions can be specified that are equivalent to the definition above. Let be a positive measure and a finite or complex measure on the same measurement space, so in particular be . The following sentence then applies:

The measure is exactly then absolutely continuous wrt. When each one is, such that for all with valid .

If on the other hand , the first part no longer implies the second.

Denote again the Lebesgue measure on the real line and another measure . The distribution function of is defined as

The measure is exactly then absolutely continuous wrt. When any limitation of a finite interval an absolutely continuous function on is.

The first characterization shows that absolute continuity is actually a concept of continuity for dimensions. The second characterization motivates the designation.

Equivalence of dimensions

Since there is a quasi-order, one can get through

define an equivalence relation on the set of all measures on . For equivalent dimensions, the zero quantities match exactly. The equivalence classes are semi-ordered by .

This equivalence explains many useful properties, for example of σ-finite measures, because:

If σ-finite, then it is equivalent to a finite measure; even if .

In addition, there is an integrated function , so that for everyone . The equivalent finite measure is then given by, i.e. H. is the density of . If this is not the zero dimension, you can choose that . The measure is then even equivalent to a probability measure.

In fact, the above sentence can be reinforced as follows:

If s-finite and , then it is equivalent to a probability measure.

This is a real generalization, since σ-finite measures are always s-finite, but not vice versa.

σ-finite measures

Due to the equivalence described above, absolute continuity is often discussed in the context of σ-finite measures. For example , distribution classes dominated in mathematical statistics are dealt with. A dominated class is the totality of all probability measures that are absolutely continuous with respect to a common σ-finite measure. Furthermore, the following fundamental theorems apply to σ-finite measures.

Radon-Nikodým theorem

The set of Radon Nikodým versa, the above example to the density function.

If σ-finite, then the following applies for a further measure if and only if a density has re.

Lebesgue decomposition theorem

The decomposition theorem of Lebesgue provides the existence of a decomposition of a -endlichen measure in an absolutely continuous and a singular component.

If there are two σ-finite measures, then there are two more σ-finite measures and with , so that and .

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