{"dcterms:modified":"2024-03-19","dcterms:creator":"DataverseNO","@type":"ore:ResourceMap","@id":"https://dataverse.no/api/datasets/export?exporter=OAI_ORE&persistentId=https://doi.org/10.18710/GVUZWI","ore:describes":{"grantNumber":[{"citation:grantNumberAgency":"Spanish Ministry of Science and Innovation","citation:grantNumberValue":"PID2020-118143GA-I00"},{"citation:grantNumberAgency":"Xunta de Galicia","citation:grantNumberValue":"ED431C2021/52"}],"citation:datasetContact":{"citation:datasetContactName":"Tizón-Couto, David","citation:datasetContactAffiliation":"University of Vigo","citation:datasetContactEmail":"davidtizon@uvigo.es"},"timePeriodCovered":{"citation:timePeriodCoveredStart":"1964","citation:timePeriodCoveredEnd":"2019"},"citation:keyword":[{"citation:keywordValue":"English"},{"citation:keywordValue":"particle alternation"},{"citation:keywordValue":"probabilistic grammar"},{"citation:keywordValue":"conventionalization"},{"citation:keywordValue":"entrenchment"},{"citation:keywordValue":"horror aequi"}],"publication":{"publicationCitation":"TIZÓN-COUTO, D. (2022). A multivariate account of particle alternation after bare-form try in native varieties of English. English Language and Linguistics, 1-32. doi:10.1017/S1360674321000393","publicationIDType":"doi","publicationIDNumber":"10.1017/S1360674321000393","publicationURL":"https://doi.org/10.1017/S1360674321000393"},"geospatial:geographicCoverage":[{"geospatial:country":"Australia"},{"geospatial:country":"Canada"},{"geospatial:country":"Ireland"},{"geospatial:country":"New Zealand"},{"geospatial:country":"United Kingdom"},{"geospatial:country":"United States"}],"author":{"citation:authorName":"Tizón-Couto, David","citation:authorAffiliation":"University of Vigo","authorIdentifierScheme":"ORCID","authorIdentifier":"0000-0003-0788-7954"},"citation:dateOfCollection":{"citation:dateOfCollectionStart":"2019-01-01","citation:dateOfCollectionEnd":"2021-01-01"},"citation:producer":{"citation:producerName":"University of Vigo","citation:producerURL":"https://lvtc.uvigo.es/"},"citation:dsDescription":[{"citation:dsDescriptionValue":"[Dataset abstract] This is the data and code from a multifactorial study reviewing the determinants of particle alternation after uninflected try in native varieties of English. The effects of a number of previously discussed and novel predictors (see Section 3.1 of the paper) are probed in data from well-known corpora (ICE, GloWbE, BNC and COCA). The paper is published in English Language and Linguistics (https://www.doi.org/10.1017/S1360674321000393). I used R (R Core Team 2021) for all data analyses, hence the code can best be replicated in R.","citation:dsDescriptionDate":"2021-09-17"},{"citation:dsDescriptionValue":"[Article abstract] This multifactorial study reviews the determinants of particle alternation after uninflected try in varieties where English is native. The effects of a number of previously discussed and novel predictors are probed in data from well-known corpora. The results confirm the inclinations of North American varieties (try to) in contrast with those of the Australasian, British and Irish varieties (try and in speech but try to in writing). The previously reported general effects of the tense of try, mode and horror aequi are also corroborated. As regards the effect of register, the study contributes the finding that following Latin-based infinitives favor try to in most varieties, especially in writing. The paper discusses the status of the substantiated effects with respect to the notions of conventionalization and entrenchment: crucially, the higher degree of conventionalization of try to in North American varieties (a) makes the use of this variant less conditional on the sequential need to license euphony and (b) neutralizes the general contextual/register distinction for the alternation. From a usage-based viewpoint, the findings suggest that the higher frequency of a multiword sequence in a specific variety, and the higher degree of activation in the language users’ minds, can make it less contingent on general probabilistic constraints.","citation:dsDescriptionDate":"2021-09-17"}],"software":[{"citation:softwareName":"R studio","citation:softwareVersion":"1.2.1335"},{"citation:softwareName":"R","citation:softwareVersion":"4.0.3"},{"citation:softwareName":"brms: Bayesian Regression Models using 'Stan'","citation:softwareVersion":"2.16.1"}],"citation:distributor":{"citation:distributorName":"The Tromsø Repository of Language and Linguistics (TROLLing)","citation:distributorAbbreviation":"TROLLing","citation:distributorURL":"https://trolling.uit.no/"},"dataSources":["BNC: British National Corpus. Available online at http://www.natcorp.ox.ac.uk/.\n
","COCA: Corpus of Contemporary American English. Davies, Mark. (2008-) The Corpus of Contemporary American English (COCA). Available online at https://www.english-corpora.org/coca/.\n","GloWbE: Davies, Mark. (2013) Corpus of Global Web-Based English. Available online at https://www.english-corpora.org/glowbe/.\n","ICE: The International Corpus of English. Available at https://www.ice-corpora.uzh.ch/en.html. Including the following components:\nThis dataset, \"Replication Data for: A multivariate account of particle alternation after bare-form try in native varieties of English\" (henceforth: \"Dataset\"), may be reused according to the Creative Commons Attribution-NonCommercial 4.0 International (CC BY-NC 4.0) license as described here: https://creativecommons.org/licenses/by-nc/4.0.\n
\nThis Dataset contains data from the following sources:
\n\nBNC: The British National Corpus. Examples of usage taken from the British National Corpus were obtained under the terms of the BNC End User Licence (see http://www.natcorp.ox.ac.uk/docs/licence.html or the file \"BNC_End_User_Licence.pdf\" included in this Dataset. Copyright in the individual texts cited resides with the original IPR holders. For information and licensing conditions relating to the BNC, please see the Terms tab on the landing page of the Dataset, and the BNC web site at http://www.natcorp.ox.ac.uk/.
\n\n\nSection \"2 Terms of the Licence Granted to the Licensee\" of the BNC End User Licence states among otherthings that \"(f) [t]here is no restriction on the use of the Licensee's Results except that the Licensee may not publish in print or electronic form or exploit commercially in any form whatsoever any extracts from the BNC Processed Material other than those permitted under the fair dealings provision of copyright law.\"
\n\nIn this Dataset, the data file \"bnc.csv\" contains the following information:
\n\n
This means that the file does not contain any coherent (parts of) utterances which the keywords were found in as all context was removed from the data file. Therefore, publishing this data file is considered to be permitted under the fair dealings provision of copyright law; see details in section \"Fair dealing\" below.
\n\nCOCA: Corpus of Contemporary American English. COCA does not provide an (openly accessible) end user license agreement. However, on their webpage (cf. https://www.english-corpora.org/copyright.asp; see also the file \"COCA_Note_on_Copyright.pdf\" included in this Dataset), they mention that the use of their source texts is \"strictly for academic research, and is purely non-commercial\". This may be interpreted as also the reuse of text from COCA being allowed for non-commercial purposes only. On the same webpage, COCA also provides evidence of their use and dissemination of the text sources being within the bounds of US Fair Use Law.\n
\nIn this Dataset, the data file \"coca.csv\" contains the following information:
\n\n
This means that the file does not contain any coherent (parts of) utterances which the keywords were found in as all context was removed from the data file. Therefore, publishing this data file is considered to be permitted under the fair dealings provision of copyright law; see details in section \"Fair use\" below.
\n\nGloWbE: Corpus of Global Web-Based English. GloWbE does not provide an (openly accessible) end user license agreement. However, on their webpage (cf. https://www.english-corpora.org/copyright.asp; see also the file \"COCA_Note_on_Copyright.pdf\" included in this Dataset), they mention that the use of their source texts is \"strictly for academic research, and is purely non-commercial\". This may be interpreted as also the reuse of text from GloWbE being allowed for non-commercial purposes only. On the same webpage, GloWbE also provides evidence of their use and dissemination of the text sources being within the bounds of US Fair Use Law.\n
\nIn this Dataset, the data file \"glowbe.csv\" contains the following information:
\n\n
This means that the file does not contain any coherent (parts of) utterances which the keywords were found in as all context was removed from the data file. Therefore, publishing this data file is considered to be permitted under the fair dealings provision of copyright law; see details in section \"Fair use\" below.
\n\nICE: The International Corpus of English, including the following components:\n
ICE-CAN and ICE-IRE were used under the general ICE License Agreement; see https://www.ice-corpora.uzh.ch/dam/jcr:7ae594b2-ee97-4935-8022-7d2d91b60be4/ICElicence_UZH.pdf or the file \"ICE_License_Agreement.pdf\" included in this Dataset.
\n\nICE-GB was used under the ICE-GB License Agreement; see the file \"ICE-GB_License_Agreement.pdf\" included in this Dataset.
\n\nICE-NZ was used under the ICE-NZ License Agreement; see the file \"ICE-NZ_License_Agreement.pdf\" included in this Dataset.
\n\nThe ICE license agreements mentioned above include the following conditions (here cited according to the general ICE License Agreement):\n\n
In this Dataset, the data file \"ice.csv\" contains the following information:
\n\n
This means that the file only contains very limited excerpts from the works that are the bases for the ICE components that were used. Therefore, publishing this data file is considered to be permitted under the fair dealings provision of copyright law; see details in section \"Fair dealing\" below.
\n\nWhile no explicit, separate license agreement for ICE-AUS exists, its use and the publication of data from ICE-AUS as represented in this Dataset correspond to the use and publication of the data extracted from the other ICE components, and thus are considered as qualifying as fair dealing.\n
\nFair dealing:
\nAccording to UK Copyright Law (cf. https://www.gov.uk/guidance/exceptions-to-copyright#fair-dealing), “[f]actors that have been identified by the courts as relevant in determining whether a particular dealing with a work is fair include:
\nThe corpus extracts used in this Dataset may be said to represent fair dealing according to both of these factors:
Fair use:
\nAccording to US Copyright Act (cf. https://www.copyright.gov/fair-use/more-info.html), \"Fair use is a legal doctrine that promotes freedom of expression by permitting the unlicensed use of copyright-protected works in certain circumstances\". The Corpus of Contemporary American English (COCA; cf. https://www.english-corpora.org/copyright.asp; see also the file \"COCA_Note_on_Copyright.pdf\" included in this Dataset) provides an extended discussion of why they believe that their use of the texts in COCA is within the bounds of US Fair Use Law. These arguments may also be applied to other corpora that have been used in this Dataset. Below, the discussion by COCA is adapted to the data files included in this Dataset:\n
\nThe following are the four criteria used to determine whether materials fall under the provisions of the Fair Use Law:
\n\nCriteria: The amount and substantiality of the portion taken
\nCriteria: The purpose and character of the use
\nCriteria: The nature of the copyrighted work
\nCriteria: The effect of the use upon the potential market
\nNote: No datasets will be curated/published from March 22 to April 1, 2024. More info.
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