Definition (Intrinsic Model)
In a Sequential system let there be N decision makers. ## 1. Measurable Spaces: We define a collection of measurable spaces {(Ω,F),(Ui,Ui),(Yi,Yi),i∈N}where: - (Ω,F) denotes the system’s distinguishable events. - (Ui,Ui) denotes the control space for DM i. - (Yi,Yi) denotes the space of observations for DM i. ## 2. Measurement Constraint: Then, there is a measurement constraint which establishes the connection between the observation variables (in (Yi,Yi)) and the system’s distinguishable events (in (Ω,F)). Any Yi-valued observation variable is given by yi=ηi(ω,u[1,i−1])whereu[1,i−1]={uk,k≤i−1}where ηi are measurable functions and uk denotes the action of DM k.
Hence, the information variable, yi, (or information signal) induces a σ-algebra, σ(Ii) over Ω×∏k=1i−1Uk (where Ii denotes the information available to DM i).
The collection η:={η1,…,ηN}is called the Information Structure of the system. ## 3. Design Constraint: A design constraint which restricts the set of admissible N−tuple control policies to the set of all measurable control functions, so that ui=γi(yi)with yi=ηi(ω,u[1,i−1])with ui,yi measurable.
Let Γi be the set of all admissible policies for DM i and let Γ=∏kΓk. ## 4. Probability Measure: A probability measure P defined on (Ω,F), which describes the measures on the random events of the model.