|
|
Decision Theory and Adaptive Systems
The Decision Theory & Adaptive Systems Group (DTAS) is focused
on extending the flexibility and responsiveness of operating systems, databases,
information systems, and user interfaces. Areas of attention include automated reasoning
and inference under uncertainty, data
mining and knowledge discovery in databases, learning models from data, , information
retrieval, automated diagnosis and decision support, and automated learning for
custom-tailoring software to user work patterns and preferences.
The group is focused on investigating the use of probability and utility theory to
enhance computer applications and platforms. Explicit consideration of user preferences
and key uncertainties associated with particular tasks and contexts is a central element
of DTAS projects.
- Information access and management. We are pursuing principles and
applications of technologies that allow users to access, filter, and manage information.
As part of our early work in this area, DTAS developed the algorithms and assessment
methods used in the Answer Wizard, a free-text help
facility unveiled in Office '95 products.
- Intelligent user interfaces.
DTAS is working on methods, languages, and
architectures for integrating multiple sources of information to enhance user interfaces.
DTAS' Lumiere Project has focused on the construction
and integration of Bayesian models of a user's needs for assistance. Lumiere research led to the Office Assistant, a Bayesian help
system in Office '97. Ongoing work on
intelligent user interfaces includes integrating consideration of acoustic and visual
events into analyses of user goals.
- Data mining and knowledge
discovery in databases. We are investigating methods, tools, and applications
of data mining and discovery in databases (KDD) for
discovering useful relationships in large datasets.
- Diagnostics and troubleshooting.
We have developed and applied diagnostic
reasoning methods to a range of problems, extending from software debugging to
troubleshooting software and hardware systems. In our collaboration with Microsoft
Technical Support, we have developed decision-theoretic troubleshooters that are available
via the worldwide web. Visit Microsoft
Technical Support Troubleshooters to access several decision-theoretic troubleshooters
that have been deployed in an operational setting. Another diagnostics project, named
Aladdin, has explored the application of decision-theoretic case-based reasoning to
troubleshooting and customer support, the result of a collaboration between DTAS and Microsoft Technical Support.
- Learning models from data.
Several research and development efforts focus on
the development of methods for building predictive models from data. Some of this work
builds on foundations of Bayesian statistics.
- Optimization of computational processes.
We are exploring the use of flexible
computational methods and decision theory to identify bottlenecks, and to optimize the
functionality of operating systems and applications.
- Special Issue on Bayesian Networks: Communications of the ACM.,
March, 1995, vol 38, no. 3.
- Special Issue on Data Mining:
Communications of the ACM., November, 1996, vol 39, no. 11.
- Data Mining and Knowledge Discovery, a
technical journal, Kluwer Academic Publishers.
- J. Breese, D. Heckerman. Decision-theoretic
case-based reasoning. Technical Report MSR-TR-95-03, Microsoft Research, November,
1994.
- D. Heckerman, D. Geiger, D. Chickering. Learning
Bayesian networks: The Combination of Knowledge and Statistical Data. Technical Report
MSR-TR-94-09, Microsoft Research, March, 1994 (revised December, 1994).
- D. Heckerman. A tutorial on learning Bayesian
networks. Technical Report MSR-TR-95-06, Microsoft Research, March, 1995.
- E. Horvitz and M. Barry. Display of Information for
Time-Critical Decision Making. Proceedings of the Eleventh Conference on Uncertainty
in Artificial Intelligence, August 1995.
- E. Horvitz, J. Breese, D. Heckerman, D. Hovel, and K. Rommelse. The Lumiere Project: Bayesian User Modeling for Inferring the
Goals and Needs of Software Users. Proceedings of the Fourteenth Conference on
Uncertainty in Artificial Intelligence, July 1998.
The Decision Theory & Adaptive Systems Group at Microsoft Research has created a
Windows application for Bayesian belief network construction and inference tool called Microsoft Belief Networks, or MSBN. This software is free for
non-commercial purposes.
DTAS researchers are active in several research communities including Uncertainty and
Artificial Intelligence (UAI), Institute for Operations Research and the Management
Sciences (INFORMS), American Association for Artificial Intelligence (AAAI), International
Society for Bayesian Analysis (ISBA), Knowledge Discovery and Datamining (KDD), and
American Statistics Association (ASA). Here are some relevant links to these communities:
Last updated: August 1998
Microsoft Research Decision Theory & Adaptive Systems Group / dtg@microsoft.com
|