Most approaches for goal recognition rely on specifications of the possible dynamics of the actor in the environment when pursuing a goal. These specifications suffer from two key issues. First, encoding these dynamics requires careful design by a domain expert, which is often not robust to noise at recognition time. Second, existing approaches often need costly real-time computations to reason about the likelihood of each potential goal. In this paper, we develop a framework that combines model-free reinforcement learning and goal recognition to alleviate the need for careful, manual domain design, and the need for costly online executions. This framework consists of two main stages: Offline learning of policies or utility functions for ea...
A method is presented for training an Input-Output Hidden Markov Model (IOHMM) to identify a player'...
Reinforcement learning is defined as the problem of an agent that learns to perform a certain task t...
The objective of goal localizationHELM based reinforcement learning for goal localization is to find...
Many applications of reinforcement learning can be formalized as goal-conditioned environments, wher...
The problem of probabilistic goal recognition consists of automatically inferring a probability dist...
abstract: In this project, the use of deep neural networks for the process of selecting actions to e...
Currently, artificial intelligence is in an important period of growth. Due to the technology boom, ...
This paper revisits probabilistic, model-based goal recognition to study the implications of the use...
Goal recognition aims to recognize the set of candidate goals that are compatible with the observed ...
Goal Recognition concerns the problem of determining an agent's final goal, deduced from the plan th...
Reinforcement learning relies on the association between a goal and a scalar signal, interpreted as ...
Goal recognition is the task of inferring users’ goals from sequences of observed actions. By ...
In psychology, goal-setting theory, which has been studied by psychologists for over 35 years, revea...
Scalable and Adaptive Goal Recognition by Neal Lesh Chairperson of Supervisory Committee: Professor ...
Recent approaches to goal recognition have progressively relaxed the assumptions about the amount an...
A method is presented for training an Input-Output Hidden Markov Model (IOHMM) to identify a player'...
Reinforcement learning is defined as the problem of an agent that learns to perform a certain task t...
The objective of goal localizationHELM based reinforcement learning for goal localization is to find...
Many applications of reinforcement learning can be formalized as goal-conditioned environments, wher...
The problem of probabilistic goal recognition consists of automatically inferring a probability dist...
abstract: In this project, the use of deep neural networks for the process of selecting actions to e...
Currently, artificial intelligence is in an important period of growth. Due to the technology boom, ...
This paper revisits probabilistic, model-based goal recognition to study the implications of the use...
Goal recognition aims to recognize the set of candidate goals that are compatible with the observed ...
Goal Recognition concerns the problem of determining an agent's final goal, deduced from the plan th...
Reinforcement learning relies on the association between a goal and a scalar signal, interpreted as ...
Goal recognition is the task of inferring users’ goals from sequences of observed actions. By ...
In psychology, goal-setting theory, which has been studied by psychologists for over 35 years, revea...
Scalable and Adaptive Goal Recognition by Neal Lesh Chairperson of Supervisory Committee: Professor ...
Recent approaches to goal recognition have progressively relaxed the assumptions about the amount an...
A method is presented for training an Input-Output Hidden Markov Model (IOHMM) to identify a player'...
Reinforcement learning is defined as the problem of an agent that learns to perform a certain task t...
The objective of goal localizationHELM based reinforcement learning for goal localization is to find...