Abstract The value of the environment determines animals’ motivational states and sets expectations for error-based learning1–3. How are values computed? Reinforcement learning systems can store or cache values of states or actions that are learned from experience, or they can compute values using a model of the environment to simulate possible futures3. These value computations have distinct trade-offs, and a central question is how neural systems decide which computations to use or whether/how to combine them4–8. Here we show that rats use distinct value computations for sequential decisions within single trials. We used high-throughput training to collect statistically powerful datasets from 291 rats performing a temporal wagering task w...
In our everyday lives, we must learn and utilize context-specific information to inform our decision...
In many daily tasks we make multiple decisions before reaching a goal. In order to learn such sequen...
The ability to make optimal decisions depends on evaluating the expected rewards associated with dif...
Many of the decisions we make in our everyday lives are sequential and entail sparse rewards. While ...
Understanding how animals update their decision-making behavior over time is an important problem in...
We studied the effects of past choices and rewards in decision-making. Reinforcement learning paradi...
Reinforcement learning, the process by which an organism flexibly adapts behavior in response to rew...
To flexibly adapt to the demands of their environment, animals are constantly exposed to the conflic...
International audienceA fundamental question in neuroscience is what type of internal representation...
One characteristic of natural environments is that outcomes vary across time. Animals need to adapt ...
It has been proposed that the striatum plays a crucial role in learning to select appropriate action...
Finding the right amount of deliberation, between insufficient and excessive, is a hard decision mak...
Reinforcement learning describes the process by which during a series of trial-and-error attempts, a...
Animals repeat rewarded behaviors, but the physiological basis of reward-based learning has only bee...
The computational framework of reinforcement learning (RL) has allowed us to both understand biologi...
In our everyday lives, we must learn and utilize context-specific information to inform our decision...
In many daily tasks we make multiple decisions before reaching a goal. In order to learn such sequen...
The ability to make optimal decisions depends on evaluating the expected rewards associated with dif...
Many of the decisions we make in our everyday lives are sequential and entail sparse rewards. While ...
Understanding how animals update their decision-making behavior over time is an important problem in...
We studied the effects of past choices and rewards in decision-making. Reinforcement learning paradi...
Reinforcement learning, the process by which an organism flexibly adapts behavior in response to rew...
To flexibly adapt to the demands of their environment, animals are constantly exposed to the conflic...
International audienceA fundamental question in neuroscience is what type of internal representation...
One characteristic of natural environments is that outcomes vary across time. Animals need to adapt ...
It has been proposed that the striatum plays a crucial role in learning to select appropriate action...
Finding the right amount of deliberation, between insufficient and excessive, is a hard decision mak...
Reinforcement learning describes the process by which during a series of trial-and-error attempts, a...
Animals repeat rewarded behaviors, but the physiological basis of reward-based learning has only bee...
The computational framework of reinforcement learning (RL) has allowed us to both understand biologi...
In our everyday lives, we must learn and utilize context-specific information to inform our decision...
In many daily tasks we make multiple decisions before reaching a goal. In order to learn such sequen...
The ability to make optimal decisions depends on evaluating the expected rewards associated with dif...