dangvantuan tomaarsen HF staff commited on
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e735351
1 Parent(s): bb16507

Add sentence-transformers library name (#4)

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- Add sentence-transformers library name (8a5de30459b01917771ff89dd840fe0d03ec710f)


Co-authored-by: Tom Aarsen <[email protected]>

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  1. README.md +5 -4
README.md CHANGED
@@ -12,7 +12,7 @@ license: apache-2.0
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  model-index:
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  - name: sentence-camembert-large by Van Tuan DANG
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  results:
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- - task:
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  name: Sentence-Embedding
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  type: Text Similarity
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  dataset:
@@ -20,9 +20,10 @@ model-index:
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  type: stsb_multi_mt
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  args: fr
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  metrics:
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- - name: Test Pearson correlation coefficient
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- type: Pearson_correlation_coefficient
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- value: 88.63
 
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  ---
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  ## Description:
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  This [**Sentence-CamemBERT-Large**](https://huggingface.co/Lajavaness/sentence-camembert-large) Model is an Embedding Model for French developed by [La Javaness](https://www.lajavaness.com/). The purpose of this embedding model is to represent the content and semantics of a French sentence as a mathematical vector, allowing it to understand the meaning of the text beyond individual words in queries and documents. It offers powerful semantic search capabilities.
 
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  model-index:
13
  - name: sentence-camembert-large by Van Tuan DANG
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  results:
15
+ - task:
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  name: Sentence-Embedding
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  type: Text Similarity
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  dataset:
 
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  type: stsb_multi_mt
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  args: fr
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  metrics:
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+ - name: Test Pearson correlation coefficient
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+ type: Pearson_correlation_coefficient
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+ value: 88.63
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+ library_name: sentence-transformers
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  ---
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  ## Description:
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  This [**Sentence-CamemBERT-Large**](https://huggingface.co/Lajavaness/sentence-camembert-large) Model is an Embedding Model for French developed by [La Javaness](https://www.lajavaness.com/). The purpose of this embedding model is to represent the content and semantics of a French sentence as a mathematical vector, allowing it to understand the meaning of the text beyond individual words in queries and documents. It offers powerful semantic search capabilities.