6533b855fe1ef96bd12b0078

RESEARCH PRODUCT

The formation of structurally relevant units in artificial grammar learning

Chantal PacteauPierre PerruchetAnnie VinterJorge Gallego

subject

AdultMaleMatching (statistics)Artificial grammar learningmedia_common.quotation_subject050109 social psychologyExperimental and Cognitive Psychologycomputer.software_genre050105 experimental psychologyTask (project management)PhoneticsReading (process)HumansComputer Simulation0501 psychology and cognitive sciencesGeneral Psychologymedia_commonCognitive sciencePsycholinguisticsParsingGrammarbusiness.industry05 social sciencesString (computer science)Verbal LearningContent-addressable memoryMemory Short-TermReadingFemaleArtificial intelligencePsychologybusinesscomputerNatural language processing

description

A total of 78 adult participants were asked to read a sample of strings generated by a finite state grammar and, immediately after reading each string, to mark the natural segmentation positions with a slash bar. They repeated the same task after a phase of familiarization with the material, which consisted, depending on the group involved, of learning items by rote, performing a short term matching task, or searching for the rules of the grammar. Participants formed the same number of cognitive units before and after the training phase, thus indicating that they did not tend to form increasingly large units. However, the number of different units reliably decreased, whatever the task that participants had performed during familiarization. This result indicates that segmentation was increasingly consistent with the structure of the grammar. A theoretical account of this phenomenon, based on ubiquitous principles of associative memory and learning, is proposed. This account is supported by the ability of a computer model implementing those principles, PARSER, to reproduce the observed pattern of results. The implications of this study for developmental theories aimed at accounting for how children become able to parse sensory input into physically and linguistically relevant units are discussed.

https://doi.org/10.1080/02724980143000451