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Marek J. Druzdzel, Air Force Office of Scientific
Research (AFOSR), "Canonical Probability Distributions
for Model Building, Learning, and Inference", 2003--2005
(three years), total amount $381,883
The project is a continuation of a New World Vistas
projects funded by AFOSR that resulted in theoretical
contributions as well as the development of a general
purpose environment for decision-theoretic modeling,
SMILE and its Windows user interface, GeNIe (available
for download at http://www.sis.pitt.edu/~genie). Development
of the software, used in a number of academic and industrial
centers across the world, has contributed to a popularity
of the decision-theoretic methods in intelligent systems.
At the moment, a major obstacle to wide dissemination
of these methods is the considerable effort that goes
into constructing probabilistic models. Full
specification of a general discrete conditional probability
distribution of a node N in a network requires a multitude
of numerical parameters that grows exponentially with
the number of parents of N. One effective way
of dealing with this problem is through use of parametric
distributions that are capable of approximating conditional
probability distributions with fewer parameters. And
so, existing Noisy-OR or Noisy-MAX parametric distributions,
while offering very good approximations, reduce the
number of parameters from exponential to linear in
the number of parents. We focus on (1) studying
and refining existing parametric probability distributions,
such as Noisy-OR and Noisy-MAX distributions, (2) developing
other intuitive parametric probability distributions,
(3) studying how the parametric distributions can be
used in learning discrete conditional probability distributions
from data, (4) studying how belief updating algorithms
for Bayesian networks can take advantage of parametric
probability distributions, (5) continuing our previous
work on efficient stochastic sampling algorithms, (6)
developing special features that will support diagnostic
applications, and (7) demonstrating the power of the
modeling environment in practical applications involving
diagnosis of complex systems, such as medical diagnosis
and diagnosis of engineering devices. Our theoretical
contributions will be implemented in SMILE and GeNIe.
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