Prediction-driven word processing defines the human ability to anticipate upcoming input words in recognition. From this perspective, input word forms need to be processed as quickly and efficiently as possible. Under the reasonable assumption that spoken words are memorized and processed as word trees (e.g. Marslen-Wilson's "cohorts"), the larger the size of the cohort of an input word at a certain point in time (and the later its uniqueness point), the harder and slower to process the word is. Regularly and irregularly inflected verb forms have different stem family sizes and different uniqueness points. Using a Recurrent Neural Network (RNN) as a computational model of the human lexical proces- sor, we explore here how their distributional and structural properties may affect (optimal) processing strategies.

An information-theoretic analysis of the inflectional regular-irregular gradient for optimal processing units

Marzi C
Primo
;
Pirrelli V
Ultimo
2022

Abstract

Prediction-driven word processing defines the human ability to anticipate upcoming input words in recognition. From this perspective, input word forms need to be processed as quickly and efficiently as possible. Under the reasonable assumption that spoken words are memorized and processed as word trees (e.g. Marslen-Wilson's "cohorts"), the larger the size of the cohort of an input word at a certain point in time (and the later its uniqueness point), the harder and slower to process the word is. Regularly and irregularly inflected verb forms have different stem family sizes and different uniqueness points. Using a Recurrent Neural Network (RNN) as a computational model of the human lexical proces- sor, we explore here how their distributional and structural properties may affect (optimal) processing strategies.
Campo DC Valore Lingua
dc.authority.orgunit Istituto di linguistica computazionale "Antonio Zampolli" - ILC en
dc.authority.people Marzi C en
dc.authority.people Pirrelli V en
dc.collection.id.s 69aaa6b3-f0f0-47c1-b9a1-040bae867ec3 *
dc.collection.name 04.02 Abstract in Atti di convegno *
dc.contributor.appartenenza Istituto di linguistica computazionale "Antonio Zampolli" - ILC *
dc.contributor.appartenenza.mi 918 *
dc.date.accessioned 2024/11/29 19:04:23 -
dc.date.available 2024/11/29 19:04:23 -
dc.date.firstsubmission 2024/09/26 15:05:34 *
dc.date.issued 2022 -
dc.date.submission 2024/09/30 16:42:36 *
dc.description.abstracteng Prediction-driven word processing defines the human ability to anticipate upcoming input words in recognition. From this perspective, input word forms need to be processed as quickly and efficiently as possible. Under the reasonable assumption that spoken words are memorized and processed as word trees (e.g. Marslen-Wilson's "cohorts"), the larger the size of the cohort of an input word at a certain point in time (and the later its uniqueness point), the harder and slower to process the word is. Regularly and irregularly inflected verb forms have different stem family sizes and different uniqueness points. Using a Recurrent Neural Network (RNN) as a computational model of the human lexical proces- sor, we explore here how their distributional and structural properties may affect (optimal) processing strategies. -
dc.description.affiliations Istituto di Linguistica Computazionale - CNR en
dc.description.allpeople Marzi, C; Pirrelli, V -
dc.description.allpeopleoriginal Marzi C., Pirrelli V. en
dc.description.fulltext open en
dc.description.numberofauthors 2 -
dc.identifier.uri https://hdl.handle.net/20.500.14243/415389 -
dc.identifier.url https://archive.nytud.hu/imm20/abstracts/main.pdf en
dc.language.iso eng en
dc.relation.conferencedate 01-04/09/2022 en
dc.relation.conferencename 20th International Morphology Meeting - (Dedicated to the memory of Ferenc Kiefer) en
dc.relation.conferenceplace Budapest en
dc.relation.firstpage 50 en
dc.relation.ispartofbook Book of Abstracts of the 20th International Morphology Meeting - Dedicated to the memory of Ferenc Kiefer en
dc.relation.lastpage 51 en
dc.relation.medium ELETTRONICO en
dc.relation.numberofpages 2 en
dc.subject.keywordseng Morphological inflection -
dc.subject.keywordseng prediction-driven processing -
dc.subject.keywordseng discriminability -
dc.subject.keywordseng non-linearity -
dc.subject.keywordseng learnability -
dc.subject.singlekeyword Morphological inflection *
dc.subject.singlekeyword prediction-driven processing *
dc.subject.singlekeyword discriminability *
dc.subject.singlekeyword non-linearity *
dc.subject.singlekeyword learnability *
dc.title An information-theoretic analysis of the inflectional regular-irregular gradient for optimal processing units en
dc.type.circulation Internazionale en
dc.type.driver info:eu-repo/semantics/conferenceObject -
dc.type.full 04 Contributo in convegno::04.02 Abstract in Atti di convegno it
dc.type.invited contributo en
dc.type.miur 274 -
dc.type.referee Comitato scientifico en
dc.ugov.descaux1 471259 -
iris.mediafilter.data 2025/04/16 03:57:24 *
iris.orcid.lastModifiedDate 2024/12/06 16:20:04 *
iris.orcid.lastModifiedMillisecond 1733498404219 *
iris.sitodocente.maxattempts 1 -
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