- Sample|Efficient Evolutionary Function Approximation for ...🔍
- Sample|Efficient Evolutionary Function Approximation ...🔍
- Sample|Efficient Evolutionary Function Approximation🔍
- [PDF] Sample|Efficient Evolutionary Function Approximation for ...🔍
- Sample|efficient evolutionary function approximation for ...🔍
- Evolutionary Function Approximation for Reinforcement Learning🔍
- Improving Sample Efficiency in Evolutionary RL Using Off|Policy ...🔍
- An Efficient Evolutionary Algorithm for Minimum Cost Submodular ...🔍
Sample|Efficient Evolutionary Function Approximation
Sample-Efficient Evolutionary Function Approximation for ...
evolutionary function approximation sample-efficient. In domains with large or continuous state spaces, the value function cannot be represented in a table.
Sample-Efficient Evolutionary Function Approximation for ...
A recently developed approach called evolutionary function approximation uses evolutionary computation to automate the search for effective ...
Sample-Efficient Evolutionary Function Approximation ... - CiteSeerX
evolutionary function approximation sample-efficient. In domains with large or continuous state spaces, the value function cannot be represented in a table.
Sample-Efficient Evolutionary Function Approximation | SpringerLink
As mentioned in Section 4.3, evolutionary function approximation suffers from one important disadvantage: high sample complexity.
[PDF] Sample-Efficient Evolutionary Function Approximation for ...
This work presents an enhancement to evolutionary function approximation that makes it much more sample-efficient by exploiting the off-policy nature of ...
Sample-Efficient Evolutionary Function Approximation - SpringerLink
As mentioned in Section 4.3, evolutionary function approximation suffers from one important disadvantage: high sample complexity.
Sample-efficient evolutionary function approximation for ...
A recently developed approach called evolutionary function approximation uses evolutionary computation to automate the search for effective ...
Evolutionary Function Approximation for Reinforcement Learning
This paper investigates evolutionary function approximation, a novel approach to automatically selecting function approximator representations that enable ...
Evolutionary Function Approximation for Reinforcement Learning
function approximator representations that enable efficient individual learning. Thus, this method evolves individuals that are better able to learn. This ...
Sample-Efficient Evolutionary Function Approximation for ... - dblp
Bibliographic details on Sample-Efficient Evolutionary Function Approximation for Reinforcement Learning.
Evolutionary Function Approximation for Reinforcement Learning
This paper investigates evolutionary function approximation, a novel approach to automatically selecting function approximator representations that enable ...
Improving Sample Efficiency in Evolutionary RL Using Off-Policy ...
To improve sample efficiency, we propose a novel off-policy alternative for ranking, based on a local approximation for the fitness function.
Evolutionary Function Approximation for Reinforcement Learning
However, using function approximators requires manually making crucial representational decisions. This paper investigates evolutionary function approximation, ...
(PDF) Evolutionary value function approximation | Mohsen ...
... function. download Download PDF View PDFchevron_right. Free PDF. Sample-efficient evolutionary function approximation for reinforcement learning Cover Page.
An Efficient Evolutionary Algorithm for Minimum Cost Submodular ...
first polynomial-time evolutionary approximation algorithm for Minimum Cost ... Maximizing submodular functions under ma- troid constraints by multi-objective ...
An Efficient Evolutionary Algorithm for Subset Selection with General ...
Iyer and Bilmes (2013) proposed several algorithms with bounded approximation guarantees by using suitable surro- gate functions for f and c to optimize over.
Value-Evolutionary-Based Reinforcement Learning
The metric is more sample-efficient for population evaluation than cumulative ... function approximation. Additionally, VEB-RL enables elites of the ...
Evolutionary Function Approximation for Reinforcement Learning
evolutionary function approximation, a novel approach to automatically selecting function approximator representations that enable efficient in- dividual ...
Evolutionary Function Approximation for Reinforcement Learning.
This paper investigates evolutionary function approximation, a novel approach to automatically selecting function approximator representations that enable ...
Evolutionary Function Approximation - Peter Stone - Academia.edu
In practice, the success of function approximators depends on the ability of the human designer to select an appropriate representation for the value function.