Reinforcement learning (RL) algorithms face two distinct challenges: learning effective representations of past and present observations, and determining how actions influence future returns. Both challenges involve modeling long-term dependencies. The transformer architecture has been very successful to solve problems that involve long-term dependencies, including in the RL domain. However, the underlying reason for the strong performance of Transformer-based RL methods remains unclear: is it because they learn effective memory, or because they perform effective credit assignment? After introducing formal definitions of memory length and credit assignment length, we design simple configurable tasks to measure these distinct quantities. Our...
Neuronal systems that are involved in reinforcement learning must solve the temporal credit assignme...
How does the similarity structure of memory influence credit assignment in reinforcement learning? M...
Learning based on reward prediction error (RPE) was originally proposed in the context of nondeclara...
Reinforcement learning (RL) algorithms face two distinct challenges: learning effective representati...
Memory is an important component of effective learning systems and is crucial in non-Markovian as we...
Originally developed for natural language problems, transformer models have recently been widely use...
The transformer architecture and variants presented remarkable success across many machine learning ...
Reinforcement learning, or learning how to map situations to actions that maximise a numerical rewar...
Any reinforcement learning system must be able to identify which past events contributed to observed...
How much credit (or blame) should an action taken in a state get for a future reward? This is the fu...
This work studies a new reinforcement learning method in the framework of Recursive Least-Squares Te...
The Transformer architecture has revolutionized deep learning on sequential data, becoming ubiquitou...
We often need to learn how to move based on a single performance measure that reflects the overall s...
Reinforcement Learning (RL) can be considered as a sequence modeling task: given a sequence of past ...
Transformer-based models show their effectiveness across multiple domains and tasks. The self-attent...
Neuronal systems that are involved in reinforcement learning must solve the temporal credit assignme...
How does the similarity structure of memory influence credit assignment in reinforcement learning? M...
Learning based on reward prediction error (RPE) was originally proposed in the context of nondeclara...
Reinforcement learning (RL) algorithms face two distinct challenges: learning effective representati...
Memory is an important component of effective learning systems and is crucial in non-Markovian as we...
Originally developed for natural language problems, transformer models have recently been widely use...
The transformer architecture and variants presented remarkable success across many machine learning ...
Reinforcement learning, or learning how to map situations to actions that maximise a numerical rewar...
Any reinforcement learning system must be able to identify which past events contributed to observed...
How much credit (or blame) should an action taken in a state get for a future reward? This is the fu...
This work studies a new reinforcement learning method in the framework of Recursive Least-Squares Te...
The Transformer architecture has revolutionized deep learning on sequential data, becoming ubiquitou...
We often need to learn how to move based on a single performance measure that reflects the overall s...
Reinforcement Learning (RL) can be considered as a sequence modeling task: given a sequence of past ...
Transformer-based models show their effectiveness across multiple domains and tasks. The self-attent...
Neuronal systems that are involved in reinforcement learning must solve the temporal credit assignme...
How does the similarity structure of memory influence credit assignment in reinforcement learning? M...
Learning based on reward prediction error (RPE) was originally proposed in the context of nondeclara...