Three experiments compared the learning of lower-dimensional family resemblance categories (4 dimensions) with the learning of higher-dimensional ones (8 dimensions). Category-learning models incorporating error-driven learning, hypothesis testing, or limited capacity attention predict that additional dimensions should either increase learning difficulty or decrease learning of individual features. Contrary to these predictions, the experiments showed no slower learning of high-dimensional categories; instead, subjects learned more features from high-dimensional categories than from low-dimensional categories. This result obtained both in standard learning with feedback and in noncontingent, observational learning. These results show that r...
had criterial features and that category membership could be determined by logical rules for the com...
Many naturally occurring categories vary across multiple stimulus dimensions (e.g. size, color, text...
Many theories of category learning assume that learning is driven by a need to minimize classificati...
The curse of dimensionality, which has been widely studied in statistics and machine learning, occur...
The curse of dimensionality, which has been widely studied in statistics and machine learning, occur...
Two experiments explored the different strategies used by children and adults when learning new perc...
Categories that have a strong family-resemblance structure should be learned more easily than catego...
examined the modes of processing used by children and adults in learning family-resemblance categori...
Ideal observer models have proven useful in investigating as-sumptions about human information proce...
Attempts to reconcile the ease with which young children naturally learn everyday categories with th...
Learning to categorize requires distinguishing category members from non-members by detecting the fe...
Learning to categorize requires distinguishing category members from non-members by detecting the fe...
Much categorization behavior can be explained by family resemblance: New items are classified by com...
Recent studies have suggested a profound influence of category learning on visual perception, result...
conducted. Forty years of research has assumed that category learning often involves learning to sel...
had criterial features and that category membership could be determined by logical rules for the com...
Many naturally occurring categories vary across multiple stimulus dimensions (e.g. size, color, text...
Many theories of category learning assume that learning is driven by a need to minimize classificati...
The curse of dimensionality, which has been widely studied in statistics and machine learning, occur...
The curse of dimensionality, which has been widely studied in statistics and machine learning, occur...
Two experiments explored the different strategies used by children and adults when learning new perc...
Categories that have a strong family-resemblance structure should be learned more easily than catego...
examined the modes of processing used by children and adults in learning family-resemblance categori...
Ideal observer models have proven useful in investigating as-sumptions about human information proce...
Attempts to reconcile the ease with which young children naturally learn everyday categories with th...
Learning to categorize requires distinguishing category members from non-members by detecting the fe...
Learning to categorize requires distinguishing category members from non-members by detecting the fe...
Much categorization behavior can be explained by family resemblance: New items are classified by com...
Recent studies have suggested a profound influence of category learning on visual perception, result...
conducted. Forty years of research has assumed that category learning often involves learning to sel...
had criterial features and that category membership could be determined by logical rules for the com...
Many naturally occurring categories vary across multiple stimulus dimensions (e.g. size, color, text...
Many theories of category learning assume that learning is driven by a need to minimize classificati...