Relational reasoning is central to many cognitive processes, ranging from “lower” processes like object recognition to “higher” processes such as analogy-making and sequential decision-making. The first chapter of this thesis gives an overview of relational reasoning and the computational demands that it imposes on a system that performs relational reasoning. These demands are characterized in terms of the binding problem in neural networks. There has been a longstanding debate in the literature regarding whether neural network models of cognition are, in principle, capable of relation-base processing. In the second chapter I investigated the relational reasoning capabilities of the Story Gestalt model (St. John, 1992), a classic conn...
How a system represents information tightly constrains the kinds of problems it can solve. Humans ro...
Evidence from both educational and cognitive psychology shows that people have trouble learning abst...
A key property of human cognition is its ability to generate novel predictions about unfamiliar situ...
Whether neural networks can capture relational knowledge is a matter of long-standing controversy. R...
It is proposed that the distinction between basic and higher cognitive processes can be captured by ...
Humans perceive the world in terms of objects and relations between them. In fact, for any given pai...
Humans regularly reason from visual information, engaging in simple object search in a scene to ab...
People readily generalize knowledge to novel domains and stimuli. We present a theory, instantiated ...
Connectionist architectures constitute a popular method for modelling animal associative learning pr...
International audienceAssociative memories are devices capable of retrieving previously stored messa...
In the research tradition called “contextual behavioral science” (Zettle, Hayes, & Barnes-Holmes...
In the last decade, connectionist models have been proposed that can process structured information ...
ABSTRACT—Human mental representations are both flexi-ble and structured—properties that, together, p...
Despite its successes, Deep Reinforcement Learning (DRL) yields non-interpretable policies. Moreover...
It is argued that abstract cognitive processes entail the processing of relations, which differ fro...
How a system represents information tightly constrains the kinds of problems it can solve. Humans ro...
Evidence from both educational and cognitive psychology shows that people have trouble learning abst...
A key property of human cognition is its ability to generate novel predictions about unfamiliar situ...
Whether neural networks can capture relational knowledge is a matter of long-standing controversy. R...
It is proposed that the distinction between basic and higher cognitive processes can be captured by ...
Humans perceive the world in terms of objects and relations between them. In fact, for any given pai...
Humans regularly reason from visual information, engaging in simple object search in a scene to ab...
People readily generalize knowledge to novel domains and stimuli. We present a theory, instantiated ...
Connectionist architectures constitute a popular method for modelling animal associative learning pr...
International audienceAssociative memories are devices capable of retrieving previously stored messa...
In the research tradition called “contextual behavioral science” (Zettle, Hayes, & Barnes-Holmes...
In the last decade, connectionist models have been proposed that can process structured information ...
ABSTRACT—Human mental representations are both flexi-ble and structured—properties that, together, p...
Despite its successes, Deep Reinforcement Learning (DRL) yields non-interpretable policies. Moreover...
It is argued that abstract cognitive processes entail the processing of relations, which differ fro...
How a system represents information tightly constrains the kinds of problems it can solve. Humans ro...
Evidence from both educational and cognitive psychology shows that people have trouble learning abst...
A key property of human cognition is its ability to generate novel predictions about unfamiliar situ...