On Decomposable Measures Induced by Metrics
Abstract
We prove that for a given normalized compact metric space it can induce a σ-max-superdecomposable measure, by constructing a Hausdorff pseudometric on its power set. We also prove that the restriction of this set function to the algebra of all measurable sets is a σ-max-decomposable measure. Finally we conclude this paper with two open problems.
1. Introduction
The classical measure theory is one of the most important theories in mathematics, and it was extended, generalized, and deeply examined in many directions [1]. Nonadditive measure [2, 3] is an extension of the measure in the sense that the additivity of the measure is replaced with a weaker condition, the monotonicity. There are many kinds of nonadditive measures [1, 4]: the Choquet capacity, the decomposable measure [5, 6], the λ-additive measure, the belief measure, the plausibility measure, and so fourth. Many important types of nonadditive measures occur in various branches of mathematics, such as potential theory [7], harmonic analysis, fractal geometry [8], functional analysis [9], the theory of nonlinear differential equations, and in optimization [1, 4, 10]. The Hausdorff distance introduced by Felix Hausdorff in the early 20th century as a way to measure the distance has many applications [8, 11–13]. In this paper, we will give a method for inducing a σ-max-superdecomposable measure from a given normalized compact metric space, by defining a Hausdorff pseudometric on the power set. Furthermore, we will prove that the restriction of the σ-max-superdecomposable measure to the algebra of all measurable sets is a σ-max-decomposable measure.
2. Preliminaries
Most notations and results on metric space and measure theory which are used in this paper can be found in [4, 14]. For simplicity, we consider only the normalized metric spaces (X, d), that is, diam X = sup {d(x, y) : x, y ∈ X} = 1. But it is not difficult to generalize the results obtained in this paper to the bounded metric spaces. Let P(X) be the space of all subsets of X. A distance function, called the Hausdorff distance, on P(X) is defined as follows.
Definition 2.1 (see [14].)Let (X, d) be a normalized metric space, and let A and B be elements in P(X).
- (i)
If x ∈ X, the “distance” from x to B is
()with the convention (x, ∅) = 1. - (ii)
The “distance” from A to B is
()with the convention d(∅, B) = 0. - (iii)
The Hausdorff distance, h(A, B), between A and B is
()
A nonempty subset R of P(X) is called an algebra if for every E, F ∈ R, E ∪ F ∈ R and EC ∈ R, where EC is the complement of E. A σ-algebra is an algebra which is closed under the formation of countable unions [4].
Definition 2.2. Let R be an algebra. A set function μ : R → [0,1] with μ(∅) = 0 and μ(X) = 1 is:
- (1)
a max-decomposable measure, if and only if μ(A ∪ B) = max {μ(A), μ(B)}, for each pair (A, B) of disjoint elements of R (see [6]);
- (2)
a σ-max-decomposable measure, if and only if
()for each sequence (Ai) i∈ℕ of disjoint elements of R (see [6]); - (3)
a max-superdecomposable measure if and only if μ(A ∪ B) ≥ max {μ(A), μ(B)};
- (4)
a σ-max-superdecomposable measure if and only if
()
3. Main Results
Theorem 3.1. Let (X, d) be a normalized metric space. Then (P(X), h) is a normalized pseudometric space.
Proof. It follows from Definition 2.1 that h(∅, ∅) = 0 and h(∅, A) = 1 for all nonempty subset A ∈ P(X). Then it is clear that h(A, A) = 0 and h(A, B) = h(B, A) ≤ 1 for all A, B ∈ P(X).
Let A, B, C ∈ P(X). If at least one of the three sets is empty, then one can easily prove the triangle inequality. Thus, without loss of generality, suppose that the three sets are not empty. For any three points x0 ∈ A, y0 ∈ B, and z0 ∈ C, we have that
Let μ be a normalized measure on an algebra R⊆P(X) and μ* be the outer measure induced by μ. Let ρ : P(X) × P(X) → ℝ+ be defined by the equation ρ(A, B) = μ*(AΔB), where the symmetric difference of A and B is defined by AΔB = (A∩BC)∪(AC∩B). Then (P(X), ρ) is a normalized pseudometric space and μ*(A) = ρ(A, ∅) for all A ∈ P(X) [15]. Now, we consider the converse of this process for the normalized pseudometric space (P(X), h). Since h(A, ∅) = 1 for all nonempty subset A ∈ P(X), it would not get any nontrivial results if the set function μ is defined by μ(A) = h(A, ∅). Thus, we give the following definition.
Definition 3.2. Let (X, d) be a normalized metric space. Now, we define a set function μ on P(X) by
Theorem 3.3. Let (X, d) be a normalized metric space. Then the set function μ is a max-superdecomposable measure on P(X).
Proof. It is easy to see μ(∅) = 0 and μ(X) = 1. Let A, B ∈ P(X) with A⊆B. By the definition of μ, we have that
Theorem 3.4. Let (X, d) be a normalized metric space. Then the set function μ is a σ-max-superdecomposable measure on P(X).
Proof. Due to the monotonicity of μ, for each sequence (Ai) i∈ℕ of elements of P(X) and every positive integer n, by mathematical induction we have that
Lemma 3.5. Let (X, d) be a normalized metric space. If (Ai) i∈ℕ is an increasing sequence in P(X) such that , then lim i→∞d(x, Ai) = d(x, A) for any point x ∈ X.
Proof. Since Ai⊆A, it follows from Definition 2.1 that . If lim i→∞d(x, Ai) = a > b = d(x, A), then for the decreasing sequence (d(x, Ai)) i∈ℕ, we have d(x, y) ≥ a for all y ∈ Ai, i ∈ ℕ.
On the other hand, from d(x, A) = inf y∈Ad(x, y) = b, it follows that there exists a point y0 ∈ A such that d(x, y0)≤(a + b)/2. Since , there exists a positive integer i0 such that . Thus we get that d(x, y0) ≥ a which contradicts d(x, y0)≤(a + b)/2. We conclude that lim i→∞d(x, Ai) = d(x, A) for any point x ∈ X.
Lemma 3.6. Let (X, d) be a normalized compact metric space. If (Ai) i∈ℕ is an increasing sequence in P(X) such that , then lim i→∞h(Ai, A) = 0.
Proof. Since Ai⊆A, it follows from Definition 2.1 that
Lemma 3.7. Let (X, d) be a normalized compact metric space. If (Ai) i∈ℕ is an increasing sequence in P(X) such that , then μ is continuous from below, that is, lim i→∞μ(Ai) = μ(A).
Proof. By the definition of μ, we have that
Definition 3.8. A set E in P(X) is μ-measurable if, for every set A in P(X),
Theorem 3.9. If 𝕊 is the class of all μ-measurable sets, then 𝕊 is an algebra.
Proof. It is easy to see that ∅, X ∈ 𝕊, and that if E ∈ 𝕊 then EC ∈ 𝕊. Let E, F ∈ 𝕊 and A ∈ P(X). It follows that
Theorem 3.10. The restriction of set function μ to 𝕊, μ|𝕊, is a σ-max-decomposable measure.
Proof. Let E1, E2 be two disjoint sets in 𝕊. It follows that
4. Concluding Remarks
For any given normalized compact metric space, we have proved that it can induce a σ-max-superdecomposable measure, by constructing a Hausdorff pseudometric on its power set. We have also proved that the restriction of the set function to the algebra of all measurable sets is a σ-max-decomposable measure. However, the following problems remain open.
Problem 1. Is μ a σ-subadditive measure on P(X)?
Problem 2. Is the class of all μ-measurable sets a σ-algebra?
Acknowledgments
The authors thank the anonymous reviewers for their valuable comments. This work was supported by The Mathematical Tianyuan Foundation of China (Grant no. 11126087) and The Science and Technology Research Program of Chongqing Municipal Educational Committee (Grant no. KJ100518).