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Information Processing Technology Office Learning Workshop April 12, 2004 Seedling Overview

Information Processing Technology Office Learning Workshop April 12, 2004 Seedling Overview Learning in the Large MIT CSAIL PIs: Leslie Pack Kaelbling, Tomás Lozano-Pérez, Tommi Jaakkola . Three Subprojects. Learning to behave in huge domains

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Information Processing Technology Office Learning Workshop April 12, 2004 Seedling Overview

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  1. Information Processing Technology Office Learning Workshop April 12, 2004 Seedling Overview Learning in the Large MIT CSAIL PIs: Leslie Pack Kaelbling, Tomás Lozano-Pérez, Tommi Jaakkola

  2. Three Subprojects • Learning to behave in huge domains • Transfer of learned knowledge across problems and domains • Learning to recognize objects and interpret scenes

  3. Three Subprojects • Learning to behave in huge domains • Transfer of learned knowledge across problems and domains • Learning to recognize objects and interpret scenes

  4. Learning Objective • Learn to act effectively in highly complex dynamic domains • Learn models of complex world dynamics involving objects, properties, and relations • Learn “meta-cognition” strategies for deciding how to focus computational attention for action selection • Learning is crucial for both problems because human designers are unable to build appropriate models by hand

  5. What Is Being Learned? • Learning probabilistic dynamic rules pickup(X):on(X,Y), clear(X), table(Z), inhand-nil 0.8 : inhand(X), ¬on(X,Y), clear(Y), ¬clear(X) ¬inhand-nil 0.2:¬on(X,Y), clear(Y), on(X,Z) • Important goal is to learn partial models: some aspects will be easy to learn to predict, others will take longer • Take advantage of partial models as soon as they’re learned

  6. How is it Being Learned? • Search in rule space • logic-based methods for learning structure • convex optimization for probabilities • Effectiveness of learned models tested using planner to select actions • Learning is automatic • Amount of data needed depends on the frequency and reliability of phenomenon being modeled

  7. How is the Knowledge Represented? • Probabilistic dynamics rules • No background knowledge currently, but it would be easy to build in some rules • Knowledge is task-independent (though we may use utility to focus learning) • Models can account for only parts of the state evolution; and they’re probabilistic • Currently, no

  8. What is the Domain? • Currently: physics simulator of blocks world • Would like simulation of more complex environment, e.g., • battlefield • disaster relief • making breakfast

  9. How is Progress Being Measured? • First, human inspection of rules for plausibility • Second by performance of agent using rules for planning • Nothing changes in the experimental set-up except the learned rules • Metrics: • utility gained by the agent • computation speed • Easily done overnight on a workstation

  10. What are the Technical Milestones? • Defined by model sophistication rather than overt performance in the task • Learn rules with quantifiers • Learn to ground symbolic predicates in perception • Learn rules in partially observable environments • Postulate hidden causes • Focus rule-learning based on utility

  11. What is Being Learned? • Learning to formulate small planning problem, from a huge state space and competing goals • what are useful subgoals? • when is it appropriateto ignore certain aspectsof the domain? learninginferenceplanning perception action

  12. How is it Being Learned? • Learning parameters in abstract models • partial observability makes it hard • gradient descent works, but may be weak • take advantage of Russell’s methods? • Compare speed and utility of resulting action-selection system • Learning is automatic • Amount of data needed depends on the frequency and reliability of phenomenon being modeled

  13. How is the Knowledge Represented? • Parameters in strategies for building abstractions • Currently most of the abstraction structure is hand-coded • The knowledge depends on the distribution of problems an agent has to solve, but not on particular low-level tasks • Uncertainty isn’t represented explicitly, but is handled implicitly in statistical learning • We are learning at multiple levels of abstraction

  14. What is the Domain? • Nethack • Would like more complex simulated domain

  15. What are the Technical Milestones? • Meta-learning • Learn parameters in hand-built abstractions for MDPs • Learn new abstractions for MDPs • Learn to compose abstractions • Do it all for POMDPs

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