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Research page updates
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@ -13,10 +13,25 @@ design and implement artificial intelligent agents using computational logic. I'
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- Explainability through verifiable chains of inference
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- Defeasible reasoning under uncertainty
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- Reasoning about agents and their cognitive states
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- Automated planning under ethical constraints
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[Notes on Automated Theorem Proving](atp)
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## Integrated Planning and Reinforcement Learning
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Working with [Junkyu Lee](https://researcher.ibm.com/researcher/view.php?person=ibm-Junkyu.Lee),
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[Michael Katz](https://researcher.watson.ibm.com/researcher/view.php?person=ibm-Michael.Katz1),
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and [Shirin Sohrabi](https://researcher.watson.ibm.com/researcher/view.php?person=us-ssohrab)
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on extending and relaxing assumptions within their existing
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[Planning Annotated Reinforcement Learning Framework](https://prl-theworkshop.github.io/prl2021/papers/PRL2021_paper_36.pdf) developed at IBM Research.
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In this framework, automated planning is used on a higher-level version of the overall
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problem with a surjective function mapping RL states to AP states. The agent is
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based on the options framework in Hiearchical Reinforcement Learning where options
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are defined as the grounded actions in the planning model.
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More to come...
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## Symbolic Methods for Cryptography
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Working with [Dr. Andrew Marshall](https://www.marshallandrew.net/) and others in applying term reasoning within computational logic
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towards cryptography. This collaboration was previously funded under an ONR grant. We are interested in applying techniques such
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