--- annotations_creators: - expert-generated language_creators: - crowdsourced language: - 'no' license: - other multilinguality: - monolingual size_categories: - 10K idx lang text tokens lemmas ner_tags pos_tags 0 000001 bokmaal Lam og piggvar på bryllupsmenyen [Lam, og, piggvar, på, bryllupsmenyen] [lam, og, piggvar, på, bryllupsmeny] [0, 0, 0, 0, 0] [0, 9, 0, 5, 0] 1 000002 bokmaal Kamskjell, piggvar og lammefilet sto på menyen... [Kamskjell, ,, piggvar, og, lammefilet, sto, p... [kamskjell, $,, piggvar, og, lammefilet, stå, ... [0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0] [0, 1, 0, 9, 0, 15, 2, 0, 2, 8, 6, 0, 1] 2 000003 bokmaal Og til dessert: Parfait à la Mette-Marit. [Og, til, dessert, :, Parfait, à, la, Mette-Ma... [og, til, dessert, $:, Parfait, à, la, Mette-M... [0, 0, 0, 0, 7, 8, 8, 8, 0] [9, 2, 0, 1, 10, 12, 12, 10, 1] ### Data Splits There are three splits: `train`, `validation` and `test`. | Config | Split | Total | | :---------|-------------:|-------:| | `bokmaal` | `train` | 15696 | | `bokmaal` | `validation` | 2410 | | `bokmaal` | `test` | 1939 | | `nynorsk` | `train` | 14174 | | `nynorsk` | `validation` | 1890 | | `nynorsk` | `test` | 1511 | | `combined`| `test` | 29870 | | `combined`| `validation` | 4300 | | `combined`| `test` | 3450 | ## Dataset Creation ### Curation Rationale 1. A _name_ in this context is close to [Saul Kripke's definition of a name](https://en.wikipedia.org/wiki/Saul_Kripke#Naming_and_Necessity), in that a name has a unique reference and its meaning is constant (there are exceptions in the annotations, e.g. "Regjeringen" (en. "Government")). 2. It is the usage of a name that determines the entity type, not the default/literal sense of the name, 3. If there is an ambiguity in the type/sense of a name, then the the default/literal sense of the name is chosen (following [Markert and Nissim, 2002](http://www.lrec-conf.org/proceedings/lrec2002/pdf/11.pdf)). For more details, see the "Annotation Guidelines.pdf" distributed with the corpus. ### Source Data Data was collected using blogs and newspapers in Norwegian, as well as parliament speeches and governamental reports. #### Initial Data Collection and Normalization The texts in the Norwegian Dependency Treebank (NDT) are manually annotated with morphological features, syntactic functions and hierarchical structure. The formalism used for the syntactic annotation is dependency grammar. The treebanks consists of two parts, one part in Norwegian Bokmål (`nob`) and one part in Norwegian Nynorsk (`nno`). Both parts contain around 300.000 tokens, and are a mix of different non-fictional genres. See the [NDT webpage](https://www.nb.no/sprakbanken/show?serial=sbr-10) for more details. ### Annotations The following types of entities are annotated: - **Person (`PER`):** Real or fictional characters and animals - **Organization (`ORG`):** Any collection of people, such as firms, institutions, organizations, music groups, sports teams, unions, political parties etc. - **Location (`LOC`):** Geographical places, buildings and facilities - **Geo-political entity (`GPE`):** Geographical regions defined by political and/or social groups. A GPE entity subsumes and does not distinguish between a nation, its region, its government, or its people - **Product (`PROD`):** Artificially produced entities are regarded products. This may include more abstract entities, such as speeches, radio shows, programming languages, contracts, laws and ideas. - **Event (`EVT`):** Festivals, cultural events, sports events, weather phenomena, wars, etc. Events are bounded in time and space. - **Derived (`DRV`):** Words (and phrases?) that are dervied from a name, but not a name in themselves. They typically contain a full name and are capitalized, but are not proper nouns. Examples (fictive) are "Brann-treneren" ("the Brann coach") or "Oslo-mannen" ("the man from Oslo"). - **Miscellaneous (`MISC`):** Names that do not belong in the other categories. Examples are animals species and names of medical conditions. Entities that are manufactured or produced are of type Products, whereas thing naturally or spontaneously occurring are of type Miscellaneous. Furthermore, all `GPE` entities are additionally sub-categorized as being either `ORG` or `LOC`, with the two annotation levels separated by an underscore: - `GPE_LOC`: Geo-political entity, with a locative sense (e.g. "John lives in _Spain_") - `GPE_ORG`: Geo-political entity, with an organisation sense (e.g. "_Spain_ declined to meet with Belgium") The two special types `GPE_LOC` and `GPE_ORG` can easily be altered depending on the task, choosing either the more general `GPE` tag or the more specific `LOC`/`ORG` tags, conflating them with the other annotations of the same type. This means that the following sets of entity types can be derived: - 7 types, deleting `_GPE`: **`ORG`**, **`LOC`**, `PER`, `PROD`, `EVT`, `DRV`, `MISC` - 8 types, deleting `LOC_` and `ORG_`: **`ORG`**, **`LOC`**, **`GPE`**, `PER`, `PROD`, `EVT`, `DRV`, `MISC` - 9 types, keeping all types: **`ORG`**, **`LOC`**, **`GPE_LOC`**, **`GPE_ORG`**, `PER`, `PROD`, `EVT`, `DRV`, `MISC` The class distribution is as follows, broken down across the data splits of the UD version of NDT, and sorted by total counts (i.e. the number of examples, not tokens within the spans of the annotatons): | Type | Train | Dev | Test | Total | | :--------|-------:|-------:|-------:|-------:| | `PER` | 4033 | 607 | 560 | 5200 | | `ORG` | 2828 | 400 | 283 | 3511 | | `GPE_LOC`| 2132 | 258 | 257 | 2647 | | `PROD` | 671 | 162 | 71 | 904 | | `LOC` | 613 | 109 | 103 | 825 | | `GPE_ORG`| 388 | 55 | 50 | 493 | | `DRV` | 519 | 77 | 48 | 644 | | `EVT` | 131 | 9 | 5 | 145 | | `MISC` | 8 | 0 | 0 | 0 | To access these reduce versions of the dataset, you can use the configs `bokmaal-7`, `nynorsk-7`, `combined-7` for the NER tag set with 7 tags ( **`ORG`**, **`LOC`**, `PER`, `PROD`, `EVT`, `DRV`, `MISC`), and `bokmaal-8`, `nynorsk-8`, `combined-8` for the NER tag set with 8 tags (`LOC_` and `ORG_`: **`ORG`**, **`LOC`**, **`GPE`**, `PER`, `PROD`, `EVT`, `DRV`, `MISC`). By default, the full set (9 tags) will be used. ## Additional Information ### Dataset Curators NorNE was created as a collaboration between [Schibsted Media Group](https://schibsted.com/), [Språkbanken](https://www.nb.no/forskning/sprakbanken/) at the [National Library of Norway](https://www.nb.no) and the [Language Technology Group](https://www.mn.uio.no/ifi/english/research/groups/ltg/) at the University of Oslo. NorNE was added to Huggingface Datasets by the AI-Lab at the National Library of Norway. ### Licensing Information The NorNE corpus is published under the same [license](https://github.com/ltgoslo/norne/blob/master/LICENSE_NDT.txt) as the Norwegian Dependency Treebank ### Citation Information This dataset is described in the paper _NorNE: Annotating Named Entities for Norwegian_ by Fredrik Jørgensen, Tobias Aasmoe, Anne-Stine Ruud Husevåg, Lilja Øvrelid, and Erik Velldal, accepted for LREC 2020 and available as pre-print here: https://arxiv.org/abs/1911.12146.