Markov decision processes capture sequential decision making under uncertainty, where an agent must choose actions so as to optimize long term reward. The paper studies ef-ficient reasoning mechanisms for Relational Markov Decision Processes (RMDP) where world states have an internal relational structure that can be naturally described in terms of objects and relations among them. Two contributions are presented. First, the paper develops First Order Decision Diagrams (FODD), a new compact representation for func-tions over relational structures, together with a set of operators to combine FODDs, and novel reduction techniques to keep the representation small. Second, the paper shows how FODDs can be used to develop solutions for RMDPs, whe...
We present a dynamic programming approach for the solution of first-order Markov decisions processes...
Recent developments in the area of relational reinforcement learning (RRL) have resulted in a numbe...
A longstanding goal in planning research is the ability to generalize plans developed for some set o...
First order decision diagrams (FODD) were recently introduced as a compact knowledge representation ...
Relational Markov Decision Processes (MDP) are a useful abstraction for stochastic planning problems...
Relational Markov Decision Processes (MDP) are a use-ful abstraction for stochastic planning problem...
We consider the general framework of first-order decision-theoretic planning in structured relationa...
Many tasks in AI require representation and manipulation of complex functions. First-Order Decision ...
Broadly, my current research focuses on two areas. One area is Knowledge Representation. I co-invent...
Markov Decision Processes(MDPs) are the standard for sequential decision making. Comprehensive theor...
AbstractMany traditional solution approaches to relationally specified decision-theoretic planning p...
We present a new paradigm for planning by learning, where the planner is given a model of the world ...
Learning and reasoning in large, structured, probabilistic worlds is at the heart of artificial inte...
AbstractMany tasks in AI require representation and manipulation of complex functions. First-Order D...
Partially-observable Markov decision processes (POMDPs) provide a powerful model for sequential deci...
We present a dynamic programming approach for the solution of first-order Markov decisions processes...
Recent developments in the area of relational reinforcement learning (RRL) have resulted in a numbe...
A longstanding goal in planning research is the ability to generalize plans developed for some set o...
First order decision diagrams (FODD) were recently introduced as a compact knowledge representation ...
Relational Markov Decision Processes (MDP) are a useful abstraction for stochastic planning problems...
Relational Markov Decision Processes (MDP) are a use-ful abstraction for stochastic planning problem...
We consider the general framework of first-order decision-theoretic planning in structured relationa...
Many tasks in AI require representation and manipulation of complex functions. First-Order Decision ...
Broadly, my current research focuses on two areas. One area is Knowledge Representation. I co-invent...
Markov Decision Processes(MDPs) are the standard for sequential decision making. Comprehensive theor...
AbstractMany traditional solution approaches to relationally specified decision-theoretic planning p...
We present a new paradigm for planning by learning, where the planner is given a model of the world ...
Learning and reasoning in large, structured, probabilistic worlds is at the heart of artificial inte...
AbstractMany tasks in AI require representation and manipulation of complex functions. First-Order D...
Partially-observable Markov decision processes (POMDPs) provide a powerful model for sequential deci...
We present a dynamic programming approach for the solution of first-order Markov decisions processes...
Recent developments in the area of relational reinforcement learning (RRL) have resulted in a numbe...
A longstanding goal in planning research is the ability to generalize plans developed for some set o...