An Approximation of Surprise Index as a Measure of Confidence

Zagorecki, Adam (Cranfield University and Defence Academy of the United Kingdom) | Kozniewski, Marcin (University of Pittsburgh) | Druzdzel, Marek (University of Pittsburgh)

AAAI Conferences 

Probabilistic graphical models, such as Bayesian networks, are intuitive and theoretically sound tools for modeling uncertainty. A major problem with applying Bayesian networks in practice is that it is hard to judge whether a model fits well a case that it is supposed to solve. One way of expressing a possible dissonance between a model and a case is the {\em surprise index}, proposed by Habbema, which expresses the degree of surprise by the evidence given the model. While this measure reflects the intuition that the probability of a case should be judged in the context of a model, it is computationally intractable. In this paper, we propose an efficient way of approximating the surprise index.

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