memory-based reinforcement learning
Memory-Based Reinforcement Learning: Efficient Computation with Prioritized Sweeping
We present a new algorithm, Prioritized Sweeping, for efficient prediction and control of stochastic Markov systems. Incremental learning methods such as Temporal Differencing and Q-Iearning have fast real time perfor(cid:173) mance. Classical methods are slower, but more accurate, because they make full use of the observations. Prioritized Sweeping aims for the best of both worlds. It uses all previous experiences both to prioritize impor(cid:173) tant dynamic programming sweeps and to guide the exploration of state(cid:173) space.
Memory-Based Reinforcement Learning: Efficient Computation with Prioritized Sweeping
Moore, Andrew W., Atkeson, Christopher G.
We present a new algorithm, Prioritized Sweeping, for efficient prediction and control of stochastic Markov systems. Incremental learning methods such as Temporal Differencing and Q-Iearning have fast real time performance. Classical methods are slower, but more accurate, because they make full use of the observations. Prioritized Sweeping aims for the best of both worlds. It uses all previous experiences both to prioritize important dynamic programming sweeps and to guide the exploration of statespace. We compare Prioritized Sweeping with other reinforcement learning schemes for a number of different stochastic optimal control problems. It successfully solves large state-space real time problems with which other methods have difficulty.
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.15)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.04)
Memory-Based Reinforcement Learning: Efficient Computation with Prioritized Sweeping
Moore, Andrew W., Atkeson, Christopher G.
We present a new algorithm, Prioritized Sweeping, for efficient prediction and control of stochastic Markov systems. Incremental learning methods such as Temporal Differencing and Q-Iearning have fast real time performance. Classical methods are slower, but more accurate, because they make full use of the observations. Prioritized Sweeping aims for the best of both worlds. It uses all previous experiences both to prioritize important dynamic programming sweeps and to guide the exploration of statespace. We compare Prioritized Sweeping with other reinforcement learning schemes for a number of different stochastic optimal control problems. It successfully solves large state-space real time problems with which other methods have difficulty.
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.15)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.04)
Memory-Based Reinforcement Learning: Efficient Computation with Prioritized Sweeping
Moore, Andrew W., Atkeson, Christopher G.
We present a new algorithm, Prioritized Sweeping, for efficient prediction and control of stochastic Markov systems. Incremental learning methods such as Temporal Differencing and Q-Iearning have fast real time performance. Classicalmethods are slower, but more accurate, because they make full use of the observations. Prioritized Sweeping aims for the best of both worlds. It uses all previous experiences both to prioritize important dynamicprogramming sweeps and to guide the exploration of statespace.
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.15)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.04)