Humans are remarkably adept at generalizing knowledge between experiences in a way that can be difficult for computers. Often, this entails generalizing constituent pieces of experiences that do not fully overlap, but nonetheless share useful similarities with, previously acquired knowledge. However, it is often unclear how knowledge gained in one context should generalize to another. Previous computational models and data suggest that rather than learning about each individual context, humans build latent abstract structures and learn to link these structures to arbitrary contexts, facilitating generalization. In these models, task structures that are more popular across contexts are more likely to be revisited in new contexts. However, th...
Learning transferable knowledge across similar but different settings is a fundamental component of ...
How do people generalize and explore structured spaces? We study human behavior on a multi-armed ban...
Meta-reinforcement learning enables artificial agents to learn from related training tasks and adapt...
Humans are remarkably adept at generalizing knowledge between experiences in a way that can be diffi...
To what extent do human reward learning and decision-making rely on the ability to represent and gen...
Humans routinely face novel environments in which they have to generalize in order to act adaptively...
People can easily evoke previously encountered concepts, compose them, and apply the result to novel...
Real-world tasks often exhibit a compositional structure that contains a sequence of simpler sub-tas...
What role do generative models play in generalization of learning in humans? Our novel multi-task pr...
Multitask learning algorithms are typically designed assuming some fixed, a priori known latent stru...
Relations between task elements often follow hidden underlying structural forms such as periodicitie...
Learning is often understood as an organism's gradual acquisition of the association between a given...
Learning is often understood as an organism's gradual acquisition of the association between a given...
We tackle real-world problems with complex structures beyond the pixel-based game or simulator. We f...
Network structure learning algorithms have aided net-work discovery in fields such as bioinformatics...
Learning transferable knowledge across similar but different settings is a fundamental component of ...
How do people generalize and explore structured spaces? We study human behavior on a multi-armed ban...
Meta-reinforcement learning enables artificial agents to learn from related training tasks and adapt...
Humans are remarkably adept at generalizing knowledge between experiences in a way that can be diffi...
To what extent do human reward learning and decision-making rely on the ability to represent and gen...
Humans routinely face novel environments in which they have to generalize in order to act adaptively...
People can easily evoke previously encountered concepts, compose them, and apply the result to novel...
Real-world tasks often exhibit a compositional structure that contains a sequence of simpler sub-tas...
What role do generative models play in generalization of learning in humans? Our novel multi-task pr...
Multitask learning algorithms are typically designed assuming some fixed, a priori known latent stru...
Relations between task elements often follow hidden underlying structural forms such as periodicitie...
Learning is often understood as an organism's gradual acquisition of the association between a given...
Learning is often understood as an organism's gradual acquisition of the association between a given...
We tackle real-world problems with complex structures beyond the pixel-based game or simulator. We f...
Network structure learning algorithms have aided net-work discovery in fields such as bioinformatics...
Learning transferable knowledge across similar but different settings is a fundamental component of ...
How do people generalize and explore structured spaces? We study human behavior on a multi-armed ban...
Meta-reinforcement learning enables artificial agents to learn from related training tasks and adapt...