This paper considers a family of inductive problems where reasoners must identify familiar categories or features on the basis of limited information. Problems of this kind are encountered, for example, when word learners acquire novel labels for pre-existing concepts. We develop a probabilistic model of identification and evaluate it in three experiments. Our first two experiments explore problems where a single category or feature must be identified, and our third experiment explores cases where participants must combine several pieces of information in order to simultaneously identify a category and a feature. Humans readily solve all of these problems, and we show that our model accounts for human inferences better than several alternat...
Three studies examined how task demands that impact on attention to typical or atypical category fea...
This research’s purpose was to contrast the representations resulting from learning of the same cate...
The purpose of the present study is to propose computational models of human inductive reasoning, us...
This paper considers a family of inductive problems where reasoners must identify familiar categorie...
Inductive inferences about objects, properties, categories, re-lations, and labels have been studied...
inductive inferences about objects, properties, categories, relations, and labels have been studied ...
<p>Inductive inferences about objects, features, categories, and relations have been studied for man...
This thesis examined how task demands shape the category representations formed through classificati...
Abstract Inductive inferences about objects, features, catego-ries, and relations have been studied ...
had criterial features and that category membership could be determined by logical rules for the com...
Four experiments consider the role of semantic category information in word identification using a s...
Progress in studying human categorization has typically in-volved comparing generalization judgments...
Being able to learn from small amounts of data is a key characteristic of human intelligence, but ex...
Prediction is arguably the most fundamental problem that peo-ple face. Having discovered that some o...
Understanding how features are encoded during category acquisition is a fundamental challenge in hum...
Three studies examined how task demands that impact on attention to typical or atypical category fea...
This research’s purpose was to contrast the representations resulting from learning of the same cate...
The purpose of the present study is to propose computational models of human inductive reasoning, us...
This paper considers a family of inductive problems where reasoners must identify familiar categorie...
Inductive inferences about objects, properties, categories, re-lations, and labels have been studied...
inductive inferences about objects, properties, categories, relations, and labels have been studied ...
<p>Inductive inferences about objects, features, categories, and relations have been studied for man...
This thesis examined how task demands shape the category representations formed through classificati...
Abstract Inductive inferences about objects, features, catego-ries, and relations have been studied ...
had criterial features and that category membership could be determined by logical rules for the com...
Four experiments consider the role of semantic category information in word identification using a s...
Progress in studying human categorization has typically in-volved comparing generalization judgments...
Being able to learn from small amounts of data is a key characteristic of human intelligence, but ex...
Prediction is arguably the most fundamental problem that peo-ple face. Having discovered that some o...
Understanding how features are encoded during category acquisition is a fundamental challenge in hum...
Three studies examined how task demands that impact on attention to typical or atypical category fea...
This research’s purpose was to contrast the representations resulting from learning of the same cate...
The purpose of the present study is to propose computational models of human inductive reasoning, us...