Pettis integral
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In mathematics, the Pettis integral or Gelfand–Pettis integral, named after Israel Gelfand, Israel M. Gelfand and Billy James Pettis, extends the definition of the Lebesgue integral to vector-valued functions on a measure space, by exploiting Dual system, duality. The integral was introduced by Gelfand for the case when the measure space is an interval with Lebesgue measure. The integral is also called the weak integral in contrast to the Bochner integral, which is the strong integral.


Definition

Let f : X \to V where (X,\Sigma,\mu) is a measure space and V is a topological vector space (TVS) with a continuous dual space V' that separates points (that is, if x \in Vis nonzero then there is some l \in V' such that l(x) \neq 0), for example, V is a normed space or (more generally) is a Hausdorff locally convex TVS. Evaluation of a functional may be written as a Dual system, duality pairing: \langle \varphi, x \rangle = \varphi[x]. The map f : X \to V is called if for all \varphi \in V', the scalar-valued map \varphi \circ f is a measurable map. A weakly measurable map f : X \to V is said to be if there exists some e \in V such that for all \varphi \in V', the scalar-valued map \varphi \circ f is Lebesgue integrable (that is, \varphi \circ f \in L^1\left( X, \Sigma, \mu \right)) and \varphi(e) = \int_A \varphi(f(x)) \, \mathrm \mu(x). The map f : X \to V is said to be if \varphi \circ f \in L^1\left( X, \Sigma, \mu \right) for all \varphi \in V^ and also for every A \in \Sigma there exists a vector e_A \in V such that \langle \varphi, e_A \rangle = \int_A \langle \varphi, f(x) \rangle \, \mathrm \mu(x) \quad \text \varphi \in V'. In this case, e_A is called the of f on A. Common notations for the Pettis integral e_A include \int_A f \, \mathrm\mu, \qquad \int_A f(x) \, \mathrm\mu(x), \quad \text~ A=X ~ \text \quad \mu[f]. To understand the motivation behind the definition of "weakly integrable", consider the special case where V is the underlying scalar field; that is, where V = \R or V = \Complex. In this case, every linear functional \varphi on V is of the form \varphi(y) = s y for some scalar s \in V (that is, \varphi is just scalar multiplication by a constant), the condition \varphi(e) = \int_A \varphi(f(x)) \, \mathrm \mu(x) \quad\text~ \varphi \in V', simplifies to s e = \int_A s f(x) \, \mathrm \mu(x) \quad\text~ s. In particular, in this special case, f is weakly integrable on X if and only if f is Lebesgue integrable.


Relation to Dunford integral

The map f : X \to V is said to be if \varphi \circ f \in L^1\left( X, \Sigma, \mu \right) for all \varphi \in V^ and also for every A \in \Sigma there exists a vector d_A \in V'', called the of f on A, such that \langle d_A, \varphi \rangle = \int_A \langle \varphi, f(x) \rangle \, \mathrm \mu(x) \quad \text \varphi \in V' where \langle d_A, \varphi \rangle = d_A(\varphi). Identify every vector x \in V with the map scalar-valued functional on V' defined by \varphi \in V' \mapsto \varphi(x). This assignment induces a map called the canonical evaluation map and through it, V is identified as a vector subspace of the double dual V''. The space V is a semi-reflexive space if and only if this map is Surjection, surjective. The f : X \to V is Pettis integrable if and only if d_A \in V for every A \in \Sigma.


Properties

An immediate consequence of the definition is that Pettis integrals are compatible with continuous, linear operators: If \Phi : V_1 \to V_2 is and linear and continuous and f : X \to V_1 is Pettis integrable, then \Phi\circ f is Pettis integrable as well and: \int_X \Phi(f(x))\,d\mu(x) = \Phi \left(\int_X f(x)\,d\mu(x) \right). The standard estimate \left , \int_X f(x)\,d\mu(x) \right , \leq \int_X , f(x), \, d\mu(x) for real- and complex-valued functions generalises to Pettis integrals in the following sense: For all continuous seminorms p:V\to\mathbb and all Pettis integrable f : X \to V, p \left (\int_X f(x)\,d\mu(x) \right ) \leq \underline p(f(x)) \,d\mu(x) holds. The right hand side is the lower Lebesgue integral of a [0,\infty]-valued function, that is, \underline g \,d\mu := \sup \left \. Taking a lower Lebesgue integral is necessary because the integrand p\circ f may not be measurable. This follows from the Hahn-Banach theorem because for every vector v\in V there must be a continuous functional \varphi\in V^\ast such that \varphi(v) = p(v) and for all w \in V, , \varphi(w), \leq p(w). Applying this to v := \int_X f \, d\mu it gives the result.


Mean value theorem

An important property is that the Pettis integral with respect to a finite measure is contained in the closure of the convex hull of the values scaled by the measure of the integration domain: \mu(A) < \infty \text \int_A f\,d\mu \in \mu(A) \cdot \overline This is a consequence of the Hahn-Banach theorem and generalizes the Mean value theorem#Mean value theorems for definite integrals, mean value theorem for integrals of real-valued functions: If V = \R, then closed convex sets are simply intervals and for f : X \to [a, b], the following inequalities hold: \mu(A) a ~\leq~ \int_A f \, d\mu ~\leq~ \mu(A)b.


Existence

If V = \R^n is finite-dimensional then f is Pettis integrable if and only if each of f's coordinates is Lebesgue integrable. If f is Pettis integrable and A\in\Sigma is a measurable subset of X, then by definition f_: A\to V and f \cdot 1_A : X \to V are also Pettis integrable and \int_A f_ \,d\mu = \int_X f \cdot 1_A \,d\mu. If X is a topological space, \Sigma = \mathfrak_X its Borel set, Borel-\sigma-algebra, \mu a Borel measure that assigns finite values to compact subsets, V is Quasi-complete space, quasi-complete (that is, every ''bounded'' Cauchy net converges) and if f is continuous with compact support, then f is Pettis integrable. More generally: If f is weakly measurable and there exists a compact, convex C\subseteq V and a null set N\subseteq X such that f(X \setminus N) \subseteq C, then f is Pettis-integrable.


Law of large numbers for Pettis-integrable random variables

Let (\Omega, \mathcal F, \operatorname P) be a probability space, and let V be a topological vector space with a dual space that separates points. Let v_n : \Omega \to V be a sequence of Pettis-integrable random variables, and write \operatorname E[v_n] for the Pettis integral of v_n (over X). Note that \operatorname E[v_n] is a (non-random) vector in V, and is not a scalar value. Let \bar v_N := \frac \sum_^N v_n denote the sample average. By linearity, \bar v_N is Pettis integrable, and \operatorname E[\bar v_N] = \frac \sum_^N \operatorname E[v_n] \in V. Suppose that the partial sums \frac \sum_^N \operatorname E[\bar v_n] converge absolutely in the topology of V, in the sense that all rearrangements of the sum converge to a single vector \lambda \in V. The weak law of large numbers implies that \langle \varphi, \operatorname E[\bar v_N] - \lambda \rangle \to 0 for every functional \varphi \in V^*. Consequently, \operatorname E[\bar v_N] \to \lambda in the weak topology on X. Without further assumptions, it is possible that \operatorname E[\bar v_N] does not converge to \lambda. To get strong convergence, more assumptions are necessary.


See also

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References

* James K. Brooks, ''Representations of weak and strong integrals in Banach spaces'', Proceedings of the National Academy of Sciences of the United States of America 63, 1969, 266–270
Fulltext
* Israel Gelfand, Israel M. Gel'fand, ''Sur un lemme de la théorie des espaces linéaires'', Commun. Inst. Sci. Math. et Mecan., Univ. Kharkoff et Soc. Math. Kharkoff, IV. Ser. 13, 1936, 35–40 * Michel Talagrand, ''Pettis Integral and Measure Theory'', Memoirs of the AMS no. 307 (1984) * {{Functional analysis Functional analysis Integrals