We propose a framework for modeling and estimating the state of controlled dynamical systems, where an agent can affect the system through actions and receives partial observations. Based on this framework, we propose Predictive State Representation with Random Fourier Features (RFF-PSR). A key property in RFF-PSRs is that the state estimate is represented by a conditional distribution of future observations given future actions. RFFPSRs combine this representation with moment-matching, kernel embedding, and local optimization to achieve a method that enjoys several favorable qualities: It can represent controlled environments which can be affected by actions, it has an efficient and theoretically justified learning algorithm, it uses a non...
Reinforcement Learning for control of dynamical systems is popular due to the ability to learn contr...
Abstract. This paper presents local methods for modeling and control of discrete-time unknown nonlin...
Predictive state representations (PSRs) are models of dynamical systems that represent state as a ve...
Models of agent-environment interaction that use predictive state representations (PSRs) have mainly...
Predictive state representations (PSRs) are a recently proposed way of modeling controlled dynamical...
Models of agent-environment interaction that use predic-tive state representations (PSRs) have mainl...
Predictive state representations (PSRs) are a recently-developed way to model discretetime, controll...
<p>Predictive State Representations (PSRs) are an expressive class of models for controlled stochast...
Abstract Controlling nonlinear dynamical systems is a central task in many different areas of scienc...
Predictive state representations (PSRs) are a method of modeling dynam-ical systems using only obser...
Predictive state representations (PSRs) model dynamical systems using appropriately chosen predictio...
Predictive state representations (PSR) have emerged as a powerful method for modelling partially obs...
This paper presents local methods for modelling and control of discrete-time unknown non-linear dyna...
A computationally efficient method for online joint state inference and dynamical model learning is ...
Predictive state representations (PSRs) offer an expressive framework for modelling par-tially obser...
Reinforcement Learning for control of dynamical systems is popular due to the ability to learn contr...
Abstract. This paper presents local methods for modeling and control of discrete-time unknown nonlin...
Predictive state representations (PSRs) are models of dynamical systems that represent state as a ve...
Models of agent-environment interaction that use predictive state representations (PSRs) have mainly...
Predictive state representations (PSRs) are a recently proposed way of modeling controlled dynamical...
Models of agent-environment interaction that use predic-tive state representations (PSRs) have mainl...
Predictive state representations (PSRs) are a recently-developed way to model discretetime, controll...
<p>Predictive State Representations (PSRs) are an expressive class of models for controlled stochast...
Abstract Controlling nonlinear dynamical systems is a central task in many different areas of scienc...
Predictive state representations (PSRs) are a method of modeling dynam-ical systems using only obser...
Predictive state representations (PSRs) model dynamical systems using appropriately chosen predictio...
Predictive state representations (PSR) have emerged as a powerful method for modelling partially obs...
This paper presents local methods for modelling and control of discrete-time unknown non-linear dyna...
A computationally efficient method for online joint state inference and dynamical model learning is ...
Predictive state representations (PSRs) offer an expressive framework for modelling par-tially obser...
Reinforcement Learning for control of dynamical systems is popular due to the ability to learn contr...
Abstract. This paper presents local methods for modeling and control of discrete-time unknown nonlin...
Predictive state representations (PSRs) are models of dynamical systems that represent state as a ve...