Kittur, Hummel and Holyoak (2004) showed that people have great difficulty learning relation-based categories with a probabilistic (i.e., family resemblance) structure. In Experiment 1, we investigated interventions hypothesized to facilitate learning family-resemblance relational categories. Changing the description of the task from learning about categories to choosing the “winning” object in each stimulus had the greatest impact on subjects’ ability to learn probabilistic relation-based categories. Experiment 2 tested two hypotheses about how the “who’s winning” task works. The results are consistent with the hypothesis that the task invokes a “winning” schema that encourages learners to discover a higher-order relation that remains inva...
This paper studies the connections between relational probabilistic models and reference classes, wi...
Relational categories are structure-based categories, defined not only by their internal properties ...
Relational learning refers to learning from data that have a complex structure. This structure may ...
Relation-based category learning is based on very different principles than feature-based category l...
Higher-order relations are important for various cognitive tasks, such as analogical transfer. The c...
Five experiments were performed to test whether participants induced a coherent representation of th...
My primary research motivation is the development of a truly generic Machine Learning engine. Toward...
This thesis represents a synthesis of relational learning and causal discovery, two subjects at the ...
textThe field of category learning is replete with theories that detail how similarity and compariso...
textThe field of category learning is replete with theories that detail how similarity and compariso...
AbstractThis paper studies the connections between relational probabilistic models and reference cla...
Evidence from both educational and cognitive psychology shows that people have trouble learning abst...
How do humans acquire relational concepts such as larger, which are essential for analogical inferen...
Snoddy and Kurtz (2020) demonstrated spontaneous transfer of relational categories to new learning. ...
Most models of categorization learn categories defined by characteristic features but some categorie...
This paper studies the connections between relational probabilistic models and reference classes, wi...
Relational categories are structure-based categories, defined not only by their internal properties ...
Relational learning refers to learning from data that have a complex structure. This structure may ...
Relation-based category learning is based on very different principles than feature-based category l...
Higher-order relations are important for various cognitive tasks, such as analogical transfer. The c...
Five experiments were performed to test whether participants induced a coherent representation of th...
My primary research motivation is the development of a truly generic Machine Learning engine. Toward...
This thesis represents a synthesis of relational learning and causal discovery, two subjects at the ...
textThe field of category learning is replete with theories that detail how similarity and compariso...
textThe field of category learning is replete with theories that detail how similarity and compariso...
AbstractThis paper studies the connections between relational probabilistic models and reference cla...
Evidence from both educational and cognitive psychology shows that people have trouble learning abst...
How do humans acquire relational concepts such as larger, which are essential for analogical inferen...
Snoddy and Kurtz (2020) demonstrated spontaneous transfer of relational categories to new learning. ...
Most models of categorization learn categories defined by characteristic features but some categorie...
This paper studies the connections between relational probabilistic models and reference classes, wi...
Relational categories are structure-based categories, defined not only by their internal properties ...
Relational learning refers to learning from data that have a complex structure. This structure may ...