Partial n-Ary relation instances on food packaging composition and permeability extracted from scientific publication tables
This dataset is dedicated to text mining and is composed of partial n-Ary relation instances concerning food packaging composition and gas permeability. It was created from 31 tables derived from 10 English-language scientific articles in html format from several international journals hosted on the ScienceDirect website. This dataset includes two sets of data: manual table annotation results and automatic data extraction results. The tables were first annotated by one annotator and cross-curated by three different annotators. The annotation task aimed to identify all table data dealing with packaging permeability measurements and compositions. An Ontological and Terminological Resource (OTR) was used for the annotation process. The annotation guidelines were drawn up through a collective iterative approach involving the annotators, and they may be accessed alongside the data. This dataset of n-Ary relations can be used in natural language processing (NLP) approaches implemented in experimental fields, especially for n-Ary relation extraction research. It can also be useful for training or evaluation of methods for the extraction of experimental data from tables and text in scientific documents, especially in experimental domains such as food packaging.
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Subjects: | J10 - Manutention, transport, stockage et conservation des produits agricoles, Q80 - Conditionnement, |
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dig-cirad-fr-6004642024-01-29T19:04:54Z http://agritrop.cirad.fr/600464/ http://agritrop.cirad.fr/600464/ Partial n-Ary relation instances on food packaging composition and permeability extracted from scientific publication tables. Lentschat Martin, Buche Patrice, Menut Luc, Guari Romane, Roche Mathieu. 2022. Data in Brief, 41:108000, 9 p.https://doi.org/10.1016/j.dib.2022.108000 <https://doi.org/10.1016/j.dib.2022.108000> Partial n-Ary relation instances on food packaging composition and permeability extracted from scientific publication tables Lentschat, Martin Buche, Patrice Menut, Luc Guari, Romane Roche, Mathieu eng 2022 Data in Brief J10 - Manutention, transport, stockage et conservation des produits agricoles Q80 - Conditionnement This dataset is dedicated to text mining and is composed of partial n-Ary relation instances concerning food packaging composition and gas permeability. It was created from 31 tables derived from 10 English-language scientific articles in html format from several international journals hosted on the ScienceDirect website. This dataset includes two sets of data: manual table annotation results and automatic data extraction results. The tables were first annotated by one annotator and cross-curated by three different annotators. The annotation task aimed to identify all table data dealing with packaging permeability measurements and compositions. An Ontological and Terminological Resource (OTR) was used for the annotation process. The annotation guidelines were drawn up through a collective iterative approach involving the annotators, and they may be accessed alongside the data. This dataset of n-Ary relations can be used in natural language processing (NLP) approaches implemented in experimental fields, especially for n-Ary relation extraction research. It can also be useful for training or evaluation of methods for the extraction of experimental data from tables and text in scientific documents, especially in experimental domains such as food packaging. article info:eu-repo/semantics/article Journal Article info:eu-repo/semantics/publishedVersion http://agritrop.cirad.fr/600464/1/Lentschat_DIB2022.pdf text cc_by_nc_nd info:eu-repo/semantics/openAccess https://creativecommons.org/licenses/by-nc-nd/4.0/ https://doi.org/10.1016/j.dib.2022.108000 10.1016/j.dib.2022.108000 info:eu-repo/semantics/altIdentifier/doi/10.1016/j.dib.2022.108000 info:eu-repo/semantics/altIdentifier/purl/https://doi.org/10.1016/j.dib.2022.108000 info:eu-repo/semantics/reference/purl/https://doi.org/10.18167/DVN1/GCZBC9 |
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J10 - Manutention, transport, stockage et conservation des produits agricoles Q80 - Conditionnement J10 - Manutention, transport, stockage et conservation des produits agricoles Q80 - Conditionnement |
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J10 - Manutention, transport, stockage et conservation des produits agricoles Q80 - Conditionnement J10 - Manutention, transport, stockage et conservation des produits agricoles Q80 - Conditionnement Lentschat, Martin Buche, Patrice Menut, Luc Guari, Romane Roche, Mathieu Partial n-Ary relation instances on food packaging composition and permeability extracted from scientific publication tables |
description |
This dataset is dedicated to text mining and is composed of partial n-Ary relation instances concerning food packaging composition and gas permeability. It was created from 31 tables derived from 10 English-language scientific articles in html format from several international journals hosted on the ScienceDirect website. This dataset includes two sets of data: manual table annotation results and automatic data extraction results. The tables were first annotated by one annotator and cross-curated by three different annotators. The annotation task aimed to identify all table data dealing with packaging permeability measurements and compositions. An Ontological and Terminological Resource (OTR) was used for the annotation process. The annotation guidelines were drawn up through a collective iterative approach involving the annotators, and they may be accessed alongside the data. This dataset of n-Ary relations can be used in natural language processing (NLP) approaches implemented in experimental fields, especially for n-Ary relation extraction research. It can also be useful for training or evaluation of methods for the extraction of experimental data from tables and text in scientific documents, especially in experimental domains such as food packaging. |
format |
article |
topic_facet |
J10 - Manutention, transport, stockage et conservation des produits agricoles Q80 - Conditionnement |
author |
Lentschat, Martin Buche, Patrice Menut, Luc Guari, Romane Roche, Mathieu |
author_facet |
Lentschat, Martin Buche, Patrice Menut, Luc Guari, Romane Roche, Mathieu |
author_sort |
Lentschat, Martin |
title |
Partial n-Ary relation instances on food packaging composition and permeability extracted from scientific publication tables |
title_short |
Partial n-Ary relation instances on food packaging composition and permeability extracted from scientific publication tables |
title_full |
Partial n-Ary relation instances on food packaging composition and permeability extracted from scientific publication tables |
title_fullStr |
Partial n-Ary relation instances on food packaging composition and permeability extracted from scientific publication tables |
title_full_unstemmed |
Partial n-Ary relation instances on food packaging composition and permeability extracted from scientific publication tables |
title_sort |
partial n-ary relation instances on food packaging composition and permeability extracted from scientific publication tables |
url |
http://agritrop.cirad.fr/600464/ http://agritrop.cirad.fr/600464/1/Lentschat_DIB2022.pdf |
work_keys_str_mv |
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