How do people decide how long to continue in a task, when to switch, and to which other task? It is known that task interleaving adapts situationally, showing sensitivity to changes in expected rewards, costs, and task boundaries. However, the mechanisms that underpin the decision to stay in a task versus switch away are not thoroughly understood. Previous work has explained task interleaving by greedy heuristics and a policy that maximizes the marginal rate of return. However, it is unclear how such a strategy would allow for adaptation to environments that offer multiple tasks with complex switch costs and delayed rewards. Here, we develop a hierarchical model of supervisory control driven by reinforcement learning (RL). The core assumpti...
We investigate how the rewards of individual tasks dictate a priori how easy it is to interleave two...
We investigate how the rewards of individual tasks dictate a priori how easy it is to interleave two...
Reinforcement learning constitutes a valuable framework for reward-based decision making in humans, ...
Funding Information: Open access funding provided by Swiss Federal Institute of Technology Zurich. T...
Funding Information: Open access funding provided by Swiss Federal Institute of Technology Zurich. T...
Although cognitive control and reinforcement learning have been researched extensively over the last...
Humans have the fascinating ability to achieve goals in a complex and constantly changing world, sti...
The ability to transfer knowledge across tasks and generalize to novel ones is an important hallmark...
SummaryHuman behavior displays hierarchical structure: simple actions cohere into subtask sequences,...
In our everyday lives, we must learn and utilize context-specific information to inform our decision...
Pursuing goals requires us to be flexible. When engaged in goal-directed behaviour, such flexibility...
SummaryHuman behavior displays hierarchical structure: simple actions cohere into subtask sequences,...
Human flexible behaviour is often seen in everyday life tasks. These tasks (e.g., making coffee) are...
We investigate how the rewards of individual tasks dictate a priori how easy it is to interleave two...
We investigate how the rewards of individual tasks dictate a priori how easy it is to interleave two...
We investigate how the rewards of individual tasks dictate a priori how easy it is to interleave two...
We investigate how the rewards of individual tasks dictate a priori how easy it is to interleave two...
Reinforcement learning constitutes a valuable framework for reward-based decision making in humans, ...
Funding Information: Open access funding provided by Swiss Federal Institute of Technology Zurich. T...
Funding Information: Open access funding provided by Swiss Federal Institute of Technology Zurich. T...
Although cognitive control and reinforcement learning have been researched extensively over the last...
Humans have the fascinating ability to achieve goals in a complex and constantly changing world, sti...
The ability to transfer knowledge across tasks and generalize to novel ones is an important hallmark...
SummaryHuman behavior displays hierarchical structure: simple actions cohere into subtask sequences,...
In our everyday lives, we must learn and utilize context-specific information to inform our decision...
Pursuing goals requires us to be flexible. When engaged in goal-directed behaviour, such flexibility...
SummaryHuman behavior displays hierarchical structure: simple actions cohere into subtask sequences,...
Human flexible behaviour is often seen in everyday life tasks. These tasks (e.g., making coffee) are...
We investigate how the rewards of individual tasks dictate a priori how easy it is to interleave two...
We investigate how the rewards of individual tasks dictate a priori how easy it is to interleave two...
We investigate how the rewards of individual tasks dictate a priori how easy it is to interleave two...
We investigate how the rewards of individual tasks dictate a priori how easy it is to interleave two...
Reinforcement learning constitutes a valuable framework for reward-based decision making in humans, ...