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Tech Report kmi-96-09 Abstract


Robust Parameter Learning in Bayesian Networks with Missing Data
Techreport ID: kmi-96-09
Date: 1996
Author(s): Marco Ramoni and Paola Sebastiani
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Bayesian belief Networks (BBNs) are a powerful formalism for knowledge representation and reasoning under uncertainty. During the past few years, Artificial Intelligence met Statistics in the quest to develop effective methods to learn BBNs directly from real-world databases. Unfortunately, real-world databases include missing and/or unreported data whose presence challenges traditional learning techniques, from both the theoretical and computational point of view. This paper outlines a new method to learn the probabilities defining a BBNs from incomplete databases. The basic assumption of this method is that the BBN generated by the learning process should enable the problem solver to reason and make decisions on the basis of the currently available information. This assumption requires the learning method to return results whose precision is a monotonic increasing function of the available information. The intuition behind our method is close to the robust sensitivity analysis interpretation of probability: the method computes the convex set of possible distributions defined by the available information and proceeds by refining this set as more information becomes available. Finally, experimental results will be presented comparing this approach to a popular Monte Carlo method. 1. Knowledge Media Institute, The Open University. 2. Department of Actuarial Science and Statistics, City University.
 
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Future Internet
With over a billion users, today's Internet is arguably the most successful human artifact ever created. The Internet's physical infrastructure, software, and content now play an integral part of the lives of everyone on the planet, whether they interact with it directly or not. Now nearing its fifth decade, the Internet has shown remarkable resilience and flexibility in the face of ever increasing numbers of users, data volume, and changing usage patterns, but faces growing challenges in meetings the needs of our knowledge society. Globally, many major initiatives are underway to address the need for more scientific research, physical infrastructure investment, better education, and better utilisation of the Internet. Within Japan, USA and Europe major new initiatives have begun in the area.

To succeed the Future Internet will need to address a number of cross-cutting challenges including:

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