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Witsenhausen's Intrinsic Model

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Definition
StochasticControl

Definition (Intrinsic Model)

In a Sequential system let there be NN decision makers. ## 1. Measurable Spaces: We define a collection of measurable spaces {(Ω,F),(Ui,Ui),(Yi,Yi),iN}\{(\Omega,\mathcal{F}),(\mathbb{U}^{i},\mathcal{U}^{i}),(\mathbb{Y}^{i},\mathcal{Y}^{i}),i\in\mathcal{N}\}where: - (Ω,F)(\Omega,\mathcal{F}) denotes the system’s distinguishable events. - (Ui,Ui)(\mathbb{U}^{i},\mathcal{U}^{i}) denotes the control space for DM i\text{DM}\ i. - (Yi,Yi)(\mathbb{Y}^{i},\mathcal{Y}^{i}) denotes the space of observations for DM i\text{DM} \ i. ## 2. Measurement Constraint: Then, there is a measurement constraint which establishes the connection between the observation variables (in (Yi,Yi)(\mathbb{Y}^{i},\mathcal{Y}^{i})) and the system’s distinguishable events (in (Ω,F)(\Omega,\mathcal{F})). Any Yi\mathbb{Y}^{i}-valued observation variable is given by yi=ηi(ω,u[1,i1])y^{i}=\eta^{i}(\omega,\mathbf{u}^{[1,i-1]}) whereu[1,i1]={uk,ki1} \mathbf{u}^{[1,i-1]}=\{ u^{k},k\le i-1 \}where ηi\eta^{i} are measurable functions and uku^{k} denotes the action of DM k\text{DM}\ k.

Hence, the information variable, yiy^{i}, (or information signal) induces a σ-algebra, σ(Ii)\sigma(\mathcal{I}^{i}) over Ω×k=1i1Uk\Omega \times \prod_{k=1}^{i-1}\mathbb{U}^{k} (where Ii\mathcal{I}^{i} denotes the information available to DM i\text{DM}\ i).

The collection η:={η1,,ηN}\underline{\eta}:=\{ \eta^{1},\dots,\eta^{N} \}is called the Information Structure of the system. ## 3. Design Constraint: A design constraint which restricts the set of admissible NN-tuple control policies to the set of all measurable control functions, so that ui=γi(yi)u^{i}=\gamma^{i}(y^{i})with yi=ηi(ω,u[1,i1])y^{i}=\eta^{i}(\omega,\mathbf{u}^{[1,i-1]})with ui,yiu^{i},y^{i} measurable.

Let Γi\Gamma^{i} be the set of all admissible policies for DM i\text{DM}\ i and let Γ=kΓk\mathbf{\Gamma}=\prod_{k}\Gamma^{k}. ## 4. Probability Measure: A probability measure PP defined on (Ω,F)(\Omega,\mathcal{F}), which describes the measures on the random events of the model.

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