We consider the problem of constructing a symbolic description of a continuous, low-level environment for use in planning. We show that symbols that can represent the preconditions and effects of an agent's actions are both necessary and sufficient for high-level planning. This eliminates the symbol design problem when a representation must be constructed in advance, and in principle enables an agent to autonomously learn its own symbolic representations. The resulting representation can be converted into PDDL, a canonical high-level planning representation that enables very fast planning
This report illustrates how new methods and techniques from the area of knowledge representation and...
An autonomous agent should make good decisions quickly. These two considerations --- effectiveness a...
This thesis demonstrates how the power of symbolic processing can be exploited in the learning of lo...
We consider the problem of constructing a symbolic description of a continuous, low-level environmen...
We consider the problem of how to plan efficiently in low-level, continuous state spaces with tempor...
One of the main challenges in AI is performing dynamic tasks by using approaches that efficiently pr...
One of the main challenges in Artificial Intelligence is the problem of abstracting high-level model...
Symbolic representations have been used successfully in off-line planning algorithms for Markov deci...
Symbolic representations have been used successfully in off-line planning algorithms for Markov deci...
The Planning Domain Definition Language (PDDL) successfully encodes classical planning tasks by easi...
The Planning Domain Definition Language (PDDL) is a formal specification language for symbolic plann...
Current research in planning focuses mainly on so called domain independent models using the Plan-ni...
Current domain-independent, classical planners require symbolic models of the problem domain and ins...
We introduce a framework that enables an agent to autonomously learn its own symbolic representation...
Several real world applications require planners that deal with non-deterministic domains and with t...
This report illustrates how new methods and techniques from the area of knowledge representation and...
An autonomous agent should make good decisions quickly. These two considerations --- effectiveness a...
This thesis demonstrates how the power of symbolic processing can be exploited in the learning of lo...
We consider the problem of constructing a symbolic description of a continuous, low-level environmen...
We consider the problem of how to plan efficiently in low-level, continuous state spaces with tempor...
One of the main challenges in AI is performing dynamic tasks by using approaches that efficiently pr...
One of the main challenges in Artificial Intelligence is the problem of abstracting high-level model...
Symbolic representations have been used successfully in off-line planning algorithms for Markov deci...
Symbolic representations have been used successfully in off-line planning algorithms for Markov deci...
The Planning Domain Definition Language (PDDL) successfully encodes classical planning tasks by easi...
The Planning Domain Definition Language (PDDL) is a formal specification language for symbolic plann...
Current research in planning focuses mainly on so called domain independent models using the Plan-ni...
Current domain-independent, classical planners require symbolic models of the problem domain and ins...
We introduce a framework that enables an agent to autonomously learn its own symbolic representation...
Several real world applications require planners that deal with non-deterministic domains and with t...
This report illustrates how new methods and techniques from the area of knowledge representation and...
An autonomous agent should make good decisions quickly. These two considerations --- effectiveness a...
This thesis demonstrates how the power of symbolic processing can be exploited in the learning of lo...