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Tech Report kmi-97-09 Abstract


Discovering Bayesian Networks in Incomplete Databases
Techreport ID: kmi-97-09
Date: 1997
Author(s): Marco Ramoni and Paola Sebastiani
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Bayesian Belief Networks (BBNs) are becoming increasingly popular in the Knowledge Discovery and Data Mining community. A BBN is defined by a graphical structure of conditional dependencies among the domain variables and a set of probability distributions defining these dependencies. In this way, BBNs provide a compact formalism - grounded in the well-developed mathematics of probability theory - able to predict variable values, explain observations, and visualize dependencies among variables. During the past few years, several efforts have been addressed to develop methods able to extract both the graphical structure and the conditional probabilities of a BBN from a database. All these methods share the assumption that the database at hand is complete, that is, it does not report any entry as unknown. When this assumption fails, these methods have to resort to expensive iterative procedures which are infeasible for large databases. This paper describes a new Knowledge Discovery system based on an efficient method able to extract the graphical structure and the probability distributions of a BBN from possibly incomplete databases. An application using a large real-world database will illustrate methods and concepts underlying the system and will assess its advantages as a Knowledge Discovery system. 1. Knowledge Media Institute, The Open University. 2. Department of Actuarial Science and Statistics, City University.
 
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Future Internet is...


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:

  • Scalability in the face of peer-to-peer traffic, decentralisation, and increased openness

  • Trust when government, medical, financial, personal data are increasingly trusted to the cloud, and middleware will increasingly use dynamic service selection

  • Interoperability of semantic data and metadata, and of services which will be dynamically orchestrated

  • Pervasive usability for users of mobile devices, different languages, cultures and physical abilities

  • Mobility for users who expect a seamless experience across spaces, devices, and velocities