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Update README.md

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  1. README.md +9 -7
README.md CHANGED
@@ -7,9 +7,11 @@ language: sv
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  datasets:
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  - SUC 3.0
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  widget:
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- - text: "Hampus Londögård bor i Lund och har levererat denna model idag."
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  ---
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  ## Swedish NER in Flair (SUC 3.0)
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  F1-Score: **85.6** (SUC 3.0)
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@@ -38,9 +40,9 @@ Requires: **[Flair](https://github.com/flairNLP/flair/)** (`pip install flair`)
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  from flair.data import Sentence
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  from flair.models import SequenceTagger
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  # load tagger
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- tagger = SequenceTagger.load("flair/ner-english-ontonotes-large")
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  # make example sentence
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- sentence = Sentence("Hampus Londögård bor i Lund och har levererat denna model idag.")
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  # predict NER tags
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  tagger.predict(sentence)
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  # print sentence
@@ -53,12 +55,12 @@ for entity in sentence.get_spans('ner'):
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  ```
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  This yields the following output:
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  ```
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- Span [0,1]: "Hampus Londögård" [− Labels: PRS (1.0)]
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- Span [4]: "Lund" [− Labels: LOC (1.0)]
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- Span [10]: "idag" [− Labels: TME(1.0)]
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  ```
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- So, the entities "_Hampus Londögård_" (labeled as a **PRS**), "_Lund_" (labeled as a **LOC**), "_idag_" (labeled as a **TME**) are found in the sentence "_Hampus Londögård bor i Lund och har levererat denna model idag._".
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  ---
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  datasets:
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  - SUC 3.0
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  widget:
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+ - text: "Hampus bor i Skåne och har levererat denna model idag."
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  ---
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+ Published with ❤️ from [londogard](https://londogard.com).
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+
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  ## Swedish NER in Flair (SUC 3.0)
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  F1-Score: **85.6** (SUC 3.0)
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  from flair.data import Sentence
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  from flair.models import SequenceTagger
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  # load tagger
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+ tagger = SequenceTagger.load("londogard/flair-swe-ner")
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  # make example sentence
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+ sentence = Sentence("Hampus bor i Skåne och har levererat denna model idag.")
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  # predict NER tags
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  tagger.predict(sentence)
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  # print sentence
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  ```
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  This yields the following output:
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  ```
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+ Span [0]: "Hampus" [− Labels: PRS (1.0)]
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+ Span [3]: "Skåne" [− Labels: LOC (1.0)]
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+ Span [9]: "idag" [− Labels: TME(1.0)]
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  ```
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+ So, the entities "_Hampus_" (labeled as a **PRS**), "_Skåne_" (labeled as a **LOC**), "_idag_" (labeled as a **TME**) are found in the sentence "_Hampus bor i Skåne och har levererat denna model idag._".
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  ---
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