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Dive into the research topics where Anthony R. Cassandra is active.

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Featured researches published by Anthony R. Cassandra.


Artificial Intelligence | 1998

Planning and acting in partially observable stochastic domains

Leslie Pack Kaelbling; Michael L. Littman; Anthony R. Cassandra

In this paper, we bring techniques from operations research to bear on the problem of choosing optimal actions in partially observable stochastic domains. We begin by introducing the theory of Markov decision processes (mdps) and partially observable MDPs (pomdps). We then outline a novel algorithm for solving pomdps off line and show how, in some cases, a finite-memory controller can be extracted from the solution to a POMDP. We conclude with a discussion of how our approach relates to previous work, the complexity of finding exact solutions to pomdps, and of some possibilities for finding approximate solutions.


intelligent robots and systems | 1996

Acting under uncertainty: discrete Bayesian models for mobile-robot navigation

Anthony R. Cassandra; Leslie Pack Kaelbling; James Kurien

Discrete Bayesian models have been used to model uncertainty for mobile-robot navigation, but the question of how actions should be chosen remains largely unexplored. This paper presents the optimal solution to the problem, formulated as a partially observable Markov decision process. Since solving for the optimal control policy is intractable, in general, it goes on to explore a variety of heuristic control strategies. The control strategies are compared experimentally, both in simulation and in runs on a robot.


KI '95 Proceedings of the 19th Annual German Conference on Artificial Intelligence: Advances in Artificial Intelligence | 1995

Partially Observable Markov Decision Processes for Artificial Intelligence

Leslie Pack Kaelbling; Michael L. Littman; Anthony R. Cassandra

In this paper, we bring techniques from operations research to bear on the problem of choosing optimal actions in partially observable stochastic domains. In many cases, we have developed new ways of viewing the problem that are, perhaps, more consistent with the AI perspective. We begin by introducing the theory of Markov decision processes (Mdps) and partially observable Markov decision processes Pomdps. We then outline a novel algorithm for solving Pomdps off line and show how, in many cases, a finite-memory controller can be extracted from the solution to a Pomdp. We conclude with a simple example.


national conference on artificial intelligence | 1994

Acting optimally in partially observable stochastic domains

Anthony R. Cassandra; Leslie Pack Kaelbling; Michael L. Littman


international conference on machine learning | 1995

Learning policies for partially observable environments: scaling up

Michael L. Littman; Anthony R. Cassandra; Leslie Pack Kaelbling


uncertainty in artificial intelligence | 1997

Incremental pruning: a simple, fast, exact method for partially observable Markov decision processes

Anthony R. Cassandra; Michael L. Littman; Nevin Lianwen Zhang


Archive | 1998

Exact and approximate algorithms for partially observable markov decision processes

Leslie Pack Kaelbling; Anthony R. Cassandra


uncertainty in artificial intelligence | 1999

Solving POMDPs by searching the space of finite policies

Nicolas Meuleau; Kee-Eung Kim; Leslie Pack Kaelbling; Anthony R. Cassandra


Archive | 1994

Optimal Policies for Partially Observable Markov Decision Processes

Anthony R. Cassandra


Archive | 1995

Efficient dynamic-programming updates in partially observable Markov decision processes

Michael L. Littman; Anthony R. Cassandra; Leslie Pack Kaelbling

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Leslie Pack Kaelbling

Massachusetts Institute of Technology

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Nevin Lianwen Zhang

Hong Kong University of Science and Technology

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