ABSTRACT—Human mental representations are both flexi-ble and structured—properties that, together, present challenging design requirements for a model of human thinking. The Learning and Inference with Schemas and Analogies (LISA) model of analogical reasoning aims to achieve these properties within a neural network. The model represents both relations and objects as patterns of activation distributed over semantic units, integrating these representations into propositional structures using synchrony of firing. The resulting propositional structures serve as a natural basis for memory retrieval, analogical mapping, analogical inference, and schema induction.The model also provides an a priori account of the limitations of human working memo...
It is proposed that the distinction between basic and higher cognitive processes can be captured by ...
Many tasks that are easy for humans are difficult for machines. Particularly, while humans excel at ...
Connectionist architectures constitute a popular method for modelling animal associative learning pr...
ABSTRACT—Human mental representations are both flexi-ble and structured—properties that, together, p...
Many computational models of reasoning rely on explicit relation representations to account for huma...
We present a theory of how relational inference and generalization can be accomplished within a cogn...
Human reasoning under uncertainty is conjectured to use Mental Models as a representation format. Ea...
The aim of this thesis is to develop an artificial neutral network model that specifically addresses...
We present a PDP model of binary choice verbal analogy problems (A:B as C:[D1|D2], where D1 and D2 r...
A key property of human cognition is its ability to generate novel predictions about unfamiliar situ...
Empirical findings indicate that humans draw infer- ences about spatial arrangements by constructing...
The development of analogical reasoning has traditionally been understood in terms of theories of ad...
Analogical cognition refers to the ability to detect, process, and learn from relational similaritie...
In real-world applications, the effective integration of learning and reasoning in a cognitive agent...
We have previously reported results showing that when children can identify the critical structural ...
It is proposed that the distinction between basic and higher cognitive processes can be captured by ...
Many tasks that are easy for humans are difficult for machines. Particularly, while humans excel at ...
Connectionist architectures constitute a popular method for modelling animal associative learning pr...
ABSTRACT—Human mental representations are both flexi-ble and structured—properties that, together, p...
Many computational models of reasoning rely on explicit relation representations to account for huma...
We present a theory of how relational inference and generalization can be accomplished within a cogn...
Human reasoning under uncertainty is conjectured to use Mental Models as a representation format. Ea...
The aim of this thesis is to develop an artificial neutral network model that specifically addresses...
We present a PDP model of binary choice verbal analogy problems (A:B as C:[D1|D2], where D1 and D2 r...
A key property of human cognition is its ability to generate novel predictions about unfamiliar situ...
Empirical findings indicate that humans draw infer- ences about spatial arrangements by constructing...
The development of analogical reasoning has traditionally been understood in terms of theories of ad...
Analogical cognition refers to the ability to detect, process, and learn from relational similaritie...
In real-world applications, the effective integration of learning and reasoning in a cognitive agent...
We have previously reported results showing that when children can identify the critical structural ...
It is proposed that the distinction between basic and higher cognitive processes can be captured by ...
Many tasks that are easy for humans are difficult for machines. Particularly, while humans excel at ...
Connectionist architectures constitute a popular method for modelling animal associative learning pr...