| Assistive Technology for Cognition AI techniques
can be used in a variety of ways within technology that enables people with
cognitive impairment to live more autonomously. We have
employed automated planning, temporal reasoning, machine learning, and
probabilistic inference techniques to design and investigate systems that assist
cognitively impaired people by providing them with flexibly timed reminders of daily activities; we are also exploring systems that can do continuous, naturalistic assessment of
functional performance.
Selected Papers:
M. R. Hodges and M. E. Pollack, "An
‘Object-Use Fingerprint’: The Use of Electronic Sensors for Human
Identification,” 9th International Conference on Ubiquitous
Computing, Sept. 2007.
M. E. Pollack, "Intelligent
Technology for an Aging Population: The Use of AI to Assist Elders with
Cognitive Impairment," AI Magazine, 26(2):9-24, 2005.
M. Rudary, S. Singh, and M. E. Pollack, "Adaptive
Cognitive Orthotics: Combining Reinforcement Learning and Constraint-Based
Temporal Reasoning," 21st International Conference on
Machine Learning, July 2004.
This work has primarily been funded by the NSF and the Intel Corp.
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Constraint-Based Temporal Reasoning
Many important applications involve reasoning about time.
Constraint-satisfaction processing provides a flexible and powerful framework
for formalizing temporal reasoning. We study richly expressive models
that permit the representation of disjunction, temporal and causal uncertainty,
soft constraints (preferences), and hybrid (temporal and finite-domain)
constraints and we develop efficient algorithms for performing inference with them.
Selected Papers:
M. D. Moffitt and M. E. Pollack, "Generalizing Temporal Controllability,"
Proceedings of the 20th International Joint Conference on
Artificial Intelligence, Jan. 2007.
M. D. Moffitt and M. E. Pollack, "Temporal Preference Optimization as
Weighted Constraint Satisfaction," Proceedings of the 21st National Conference on Artificial Intelligence,
July 2006.
H. Sheini, B. Peintner, K. Sakallah, and M. E. Pollack, “On Solving Soft Temporal
Constraints using SAT Techniques,” Proceedings of the 11th International Conference on
Principles and Practice of Constraint Programming, Oct. 2005.
This work has primarily been funded by AFOSR, DARPA, and the NSF.
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| Adaptive Interfaces
for Interactive Systems We are applying machine learning and
constraint-satisfaction techniques to develop computer interfaces that adapt to
the needs and preferences of their users. A central challenge arises from
the fact that in an interactive system, training examples cannot constructed
arbitrarily; instead, naturally occurring interactions must be exploited to
balance learning convergence speed with user satisfaction.
Selected Papers:
J. S. Weber and M. E. Pollack, "Entropy-Driven Online Active Learning for
Interactive Calendar Management," Proceedings of the 10th
International Conference on Intelligent User Interfaces, Jan. 2007.
K. Myers, P. Berry, J. Blythe, K. Conley, M. Gervasio, D. McGuinness, D.
Morley, A. Pfeffer, M. Pollack, and M. Tambe, "An Intelligent Personal Assistant
for Task and Time Management," AI Magazine, 2007.
M. T. Gervasio, M. D. Moffitt, M. E. Pollack, J. M. Taylor,
and T. E. Uribe, "Active Preference
Learning for Personalized Calendar Scheduling Assistance,"
International Conference on Intelligent User Interfaces, January 2005.
This work has primarily been funded by DARPA.
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Other Work In
the past, I have worked on a variety of other topics in Artificial Intelligence,
including:
- Discourse analysis for natural-language processing
- Computational models of rationality (BDI models)
- Automated plan generation and execution
- Software testing using planning models
See my publications for more information.
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