Learning accurate models of agent behaviours is crucial for the purpose of controlling systems where the agents' and environment's dynamics are unknown. This is a challenging problem, but structural assumptions can be leveraged to tackle it effectively. In particular, many systems exhibit mixed observability, when observations of some system components are essentially perfect and noiseless, while observations of other components are imperfect, aliased or noisy. In this paper we present a new model learning framework, the mixed observability predictive state representation (MO-PSR), which extends the previously known predictive state representations to the case of mixed observability systems. We present a learning algorithm that is scalable ...
Learning agents that interact with complex environments often cannot predict the exact outcome of th...
In applying reinforcement learning to agents acting in the real world we are often faced with tasks ...
Predictive state representations (PSRs) model dynamical systems using appropriately chosen predictio...
The ability of an agent to detect changes in an environment is key to successful adaptation. This ab...
Predictive state representations (PSR) have emerged as a powerful method for modelling partially obs...
Predictive state representations (PSRs) are a method of modeling dynam-ical systems using only obser...
Predictive state representations (PSRs) are a recently proposed way of modeling controlled dynamical...
Predictive state representations (PSRs) are a recently-developed way to model discretetime, controll...
Models of agent-environment interaction that use predictive state representations (PSRs) have mainly...
<p>State estimation and tracking (also known as filtering) is an integral part of any system perform...
We address the problem of optimally controlling stochastic environments that are partially observ-ab...
Models of agent-environment interaction that use predic-tive state representations (PSRs) have mainl...
When faced with the problem of learning a model of a high-dimensional environment, a common approach...
Predictive State Representations (PSRs) have been proposed as an alternative to partially observable...
Predictive state representations (PSRs) offer an expressive framework for modelling par-tially obser...
Learning agents that interact with complex environments often cannot predict the exact outcome of th...
In applying reinforcement learning to agents acting in the real world we are often faced with tasks ...
Predictive state representations (PSRs) model dynamical systems using appropriately chosen predictio...
The ability of an agent to detect changes in an environment is key to successful adaptation. This ab...
Predictive state representations (PSR) have emerged as a powerful method for modelling partially obs...
Predictive state representations (PSRs) are a method of modeling dynam-ical systems using only obser...
Predictive state representations (PSRs) are a recently proposed way of modeling controlled dynamical...
Predictive state representations (PSRs) are a recently-developed way to model discretetime, controll...
Models of agent-environment interaction that use predictive state representations (PSRs) have mainly...
<p>State estimation and tracking (also known as filtering) is an integral part of any system perform...
We address the problem of optimally controlling stochastic environments that are partially observ-ab...
Models of agent-environment interaction that use predic-tive state representations (PSRs) have mainl...
When faced with the problem of learning a model of a high-dimensional environment, a common approach...
Predictive State Representations (PSRs) have been proposed as an alternative to partially observable...
Predictive state representations (PSRs) offer an expressive framework for modelling par-tially obser...
Learning agents that interact with complex environments often cannot predict the exact outcome of th...
In applying reinforcement learning to agents acting in the real world we are often faced with tasks ...
Predictive state representations (PSRs) model dynamical systems using appropriately chosen predictio...