A Dynkin system,[1] named after Eugene Dynkin, is a collection of subsets of another universal set satisfying a set of axioms weaker than those of 𝜎-algebra. Dynkin systems are sometimes referred to as 𝜆-systems (Dynkin himself used this term) or d-system.[2] These set families have applications in measure theory and probability.

A major application of 𝜆-systems is the π-𝜆 theorem, see below.

Definition

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Let   be a nonempty set, and let   be a collection of subsets of   (that is,   is a subset of the power set of  ). Then   is a Dynkin system if

  1.  
  2.   is closed under complements of subsets in supersets: if   and   then  
  3.   is closed under countable increasing unions: if   is an increasing sequence[note 1] of sets in   then  

It is easy to check[proof 1] that any Dynkin system   satisfies:

  1.  
  2.   is closed under complements in  : if   then  
    • Taking   shows that  
  3.   is closed under countable unions of pairwise disjoint sets: if   is a sequence of pairwise disjoint sets in   (meaning that   for all  ) then  
    • To be clear, this property also holds for finite sequences   of pairwise disjoint sets (by letting   for all  ).

Conversely, it is easy to check that a family of sets that satisfy conditions 4-6 is a Dynkin class.[proof 2] For this reason, a small group of authors have adopted conditions 4-6 to define a Dynkin system.

An important fact is that any Dynkin system that is also a π-system (that is, closed under finite intersections) is a 𝜎-algebra. This can be verified by noting that conditions 2 and 3 together with closure under finite intersections imply closure under finite unions, which in turn implies closure under countable unions.

Given any collection   of subsets of   there exists a unique Dynkin system denoted   which is minimal with respect to containing   That is, if   is any Dynkin system containing   then     is called the Dynkin system generated by   For instance,   For another example, let   and  ; then  

Sierpiński–Dynkin's π-λ theorem

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Sierpiński-Dynkin's π-𝜆 theorem:[3] If   is a π-system and   is a Dynkin system with   then  

In other words, the 𝜎-algebra generated by   is contained in   Thus a Dynkin system contains a π-system if and only if it contains the 𝜎-algebra generated by that π-system.

One application of Sierpiński-Dynkin's π-𝜆 theorem is the uniqueness of a measure that evaluates the length of an interval (known as the Lebesgue measure):

Let   be the unit interval [0,1] with the Lebesgue measure on Borel sets. Let   be another measure on   satisfying   and let   be the family of sets   such that   Let   and observe that   is closed under finite intersections, that   and that   is the 𝜎-algebra generated by   It may be shown that   satisfies the above conditions for a Dynkin-system. From Sierpiński-Dynkin's π-𝜆 Theorem it follows that   in fact includes all of  , which is equivalent to showing that the Lebesgue measure is unique on  .

Application to probability distributions

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The π-𝜆 theorem motivates the common definition of the probability distribution of a random variable   in terms of its cumulative distribution function. Recall that the cumulative distribution of a random variable is defined as   whereas the seemingly more general law of the variable is the probability measure   where   is the Borel 𝜎-algebra. The random variables   and   (on two possibly different probability spaces) are equal in distribution (or law), denoted by   if they have the same cumulative distribution functions; that is, if   The motivation for the definition stems from the observation that if   then that is exactly to say that   and   agree on the π-system   which generates   and so by the example above:  

A similar result holds for the joint distribution of a random vector. For example, suppose   and   are two random variables defined on the same probability space   with respectively generated π-systems   and   The joint cumulative distribution function of   is  

However,   and   Because   is a π-system generated by the random pair   the π-𝜆 theorem is used to show that the joint cumulative distribution function suffices to determine the joint law of   In other words,   and   have the same distribution if and only if they have the same joint cumulative distribution function.

In the theory of stochastic processes, two processes   are known to be equal in distribution if and only if they agree on all finite-dimensional distributions; that is, for all    

The proof of this is another application of the π-𝜆 theorem.[4]

See also

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  • Algebra of sets – Identities and relationships involving sets
  • δ-ring – Ring closed under countable intersections
  • Field of sets – Algebraic concept in measure theory, also referred to as an algebra of sets
  • Monotone class – theorem
  • π-system – Family of sets closed under intersection
  • Ring of sets – Family closed under unions and relative complements
  • σ-algebra – Algebraic structure of set algebra
  • 𝜎-ideal – Family closed under subsets and countable unions
  • 𝜎-ring – Family of sets closed under countable unions

Notes

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  1. ^ A sequence of sets   is called increasing if   for all  

Proofs

  1. ^ Assume   satisfies (1), (2), and (3). Proof of (5) :Property (5) follows from (1) and (2) by using   The following lemma will be used to prove (6). Lemma: If   are disjoint then   Proof of Lemma:   implies   where   by (5). Now (2) implies that   contains   so that (5) guarantees that   which proves the lemma. Proof of (6) Assume that   are pairwise disjoint sets in   For every integer   the lemma implies that   where because   is increasing, (3) guarantees that   contains their union   as desired.  
  2. ^ Assume   satisfies (4), (5), and (6). proof of (2): If   satisfy   then (5) implies   and since   (6) implies that   contains   so that finally (4) guarantees that   is in   Proof of (3): Assume   is an increasing sequence of subsets in   let   and let   for every   where (2) guarantees that   all belong to   Since   are pairwise disjoint, (6) guarantees that their union   belongs to   which proves (3). 
  1. ^ Dynkin, E., "Foundations of the Theory of Markov Processes", Moscow, 1959
  2. ^ Aliprantis, Charalambos; Border, Kim C. (2006). Infinite Dimensional Analysis: a Hitchhiker's Guide (Third ed.). Springer. ISBN 978-3-540-29587-7. Retrieved August 23, 2010.
  3. ^ Sengupta. "Lectures on measure theory lecture 6: The Dynkin π − λ Theorem" (PDF). Math.lsu. Retrieved 3 January 2023.
  4. ^ Kallenberg, Foundations Of Modern Probability, p. 48

References

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This article incorporates material from Dynkin system on PlanetMath, which is licensed under the Creative Commons Attribution/Share-Alike License.