
TL;DR
This paper compares the expected payoffs of different observers with varying information levels in stochastic environments, analyzing the advantage gained from additional information and deriving prophet-type inequalities.
Contribution
It introduces a framework for comparing payoffs across different information levels and characterizes the advantage of increased information in stochastic settings.
Findings
Characterization of information set differences
Derivation of prophet-type inequalities
Quantitative comparison of information advantages
Abstract
Given a sequence of random variables suppose the aim is to maximize one's return by picking a `favorable' . Obviously, the expected payoff crucially depends on the information at hand. An optimally informed person knows all the values and thus receives . We will compare this return to the expected payoffs of a number of observers having less information, in particular , the value of the sequence to a person who only knows the first moments of the random variables. In general, there is a stochastic environment (i.e. a class of random variables ), and several levels of information. Given some , an observer possessing information obtains . We are going to study `information sets' of the form $$ R_{\cal C}^{j,k} = \{ (x,y) | x = r_j({\bf X}), y=r_k({\bf X}), {\bf X} \in…
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