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Model: KBLab/sentence-bert-swedish-cased Source: Original Platform
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{
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"word_embedding_dimension": 768,
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"pooling_mode_cls_token": false,
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"pooling_mode_mean_tokens": true,
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"pooling_mode_max_tokens": false,
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"pooling_mode_mean_sqrt_len_tokens": false
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}
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---
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pipeline_tag: sentence-similarity
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lang:
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- sv
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tags:
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- sentence-transformers
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- feature-extraction
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- sentence-similarity
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- transformers
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widget:
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- source_sentence: Mannen åt mat.
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sentences:
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- Han förtärde en närande och nyttig måltid.
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- Det var ett sunkigt hak med ganska gott käk.
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- Han inmundigade middagen tillsammans med ett glas rödvin.
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- Potatischips är jättegoda.
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- Tryck på knappen för att få tala med kundsupporten.
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example_title: Mat
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- source_sentence: Kan jag deklarera digitalt från utlandet?
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sentences:
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- Du som befinner dig i utlandet kan deklarera digitalt på flera olika sätt.
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- >-
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Du som har kvarskatt att betala ska göra en inbetalning till ditt
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skattekonto.
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- >-
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Efter att du har deklarerat går vi igenom uppgifterna i din deklaration och
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räknar ut din skatt.
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- >-
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I din deklaration som du får från oss har vi räknat ut vad du ska betala
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eller få tillbaka.
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- Tryck på knappen för att få tala med kundsupporten.
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example_title: Skatteverket FAQ
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- source_sentence: Hon kunde göra bakåtvolter.
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sentences:
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- Hon var atletisk.
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- Hon var bra på gymnastik.
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- Hon var inte atletisk.
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- Hon var oförmögen att flippa baklänges.
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example_title: Gymnastik
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license: apache-2.0
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language:
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- sv
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---
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# KBLab/sentence-bert-swedish-cased
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This is a [sentence-transformers](https://www.SBERT.net) model: It maps Swedish sentences & paragraphs to a 768 dimensional dense vector space and can be used for tasks like clustering or semantic search. This model is a bilingual Swedish-English model trained according to instructions in the paper [Making Monolingual Sentence Embeddings Multilingual using Knowledge Distillation](https://arxiv.org/pdf/2004.09813.pdf) and the [documentation](https://www.sbert.net/examples/training/multilingual/README.html) accompanying its companion python package. We have used the strongest available pretrained English Bi-Encoder ([all-mpnet-base-v2](https://huggingface.co/sentence-transformers/all-mpnet-base-v2)) as a teacher model, and the pretrained Swedish [KB-BERT](https://huggingface.co/KB/bert-base-swedish-cased) as the student model.
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A more detailed description of the model can be found in an article we published on the KBLab blog [here](https://kb-labb.github.io/posts/2021-08-23-a-swedish-sentence-transformer/) and for the updated model [here](https://kb-labb.github.io/posts/2023-01-16-sentence-transformer-20/).
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**Update**: We have released updated versions of the model since the initial release. The original model described in the blog post is **v1.0**. The current version is **v2.0**. The newer versions are trained on longer paragraphs, and have a longer max sequence length. **v2.0** is trained with a stronger teacher model and is the current default.
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| Model version | Teacher Model | Max Sequence Length |
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|---------------|---------|----------|
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| v1.0 | [paraphrase-mpnet-base-v2](https://huggingface.co/sentence-transformers/paraphrase-mpnet-base-v2) | 256 |
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| v1.1 | [paraphrase-mpnet-base-v2](https://huggingface.co/sentence-transformers/paraphrase-mpnet-base-v2) | 384 |
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| v2.0 | [all-mpnet-base-v2](https://huggingface.co/sentence-transformers/all-mpnet-base-v2) | 384 |
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<!--- Describe your model here -->
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## Usage (Sentence-Transformers)
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Using this model becomes easy when you have [sentence-transformers](https://www.SBERT.net) installed:
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```
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pip install -U sentence-transformers
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```
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Then you can use the model like this:
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```python
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from sentence_transformers import SentenceTransformer
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sentences = ["Det här är en exempelmening", "Varje exempel blir konverterad"]
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model = SentenceTransformer('KBLab/sentence-bert-swedish-cased')
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embeddings = model.encode(sentences)
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print(embeddings)
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```
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### Loading an older model version (Sentence-Transformers)
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Currently, the easiest way to load an older model version is to clone the model repository and load it from disk. For example, to clone the **v1.0** model:
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```bash
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git clone --depth 1 --branch v1.0 https://huggingface.co/KBLab/sentence-bert-swedish-cased
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```
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Then you can load the model by pointing to the local folder where you cloned the model:
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```python
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from sentence_transformers import SentenceTransformer
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model = SentenceTransformer("path_to_model_folder/sentence-bert-swedish-cased")
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```
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## Usage (HuggingFace Transformers)
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Without [sentence-transformers](https://www.SBERT.net), you can use the model like this: First, you pass your input through the transformer model, then you have to apply the right pooling-operation on-top of the contextualized word embeddings.
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```python
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from transformers import AutoTokenizer, AutoModel
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import torch
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#Mean Pooling - Take attention mask into account for correct averaging
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def mean_pooling(model_output, attention_mask):
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token_embeddings = model_output[0] #First element of model_output contains all token embeddings
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input_mask_expanded = attention_mask.unsqueeze(-1).expand(token_embeddings.size()).float()
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return torch.sum(token_embeddings * input_mask_expanded, 1) / torch.clamp(input_mask_expanded.sum(1), min=1e-9)
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# Sentences we want sentence embeddings for
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sentences = ['Det här är en exempelmening', 'Varje exempel blir konverterad']
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# Load model from HuggingFace Hub
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# To load an older version, e.g. v1.0, add the argument revision="v1.0"
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tokenizer = AutoTokenizer.from_pretrained('KBLab/sentence-bert-swedish-cased')
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model = AutoModel.from_pretrained('KBLab/sentence-bert-swedish-cased')
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# Tokenize sentences
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encoded_input = tokenizer(sentences, padding=True, truncation=True, return_tensors='pt')
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# Compute token embeddings
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with torch.no_grad():
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model_output = model(**encoded_input)
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# Perform pooling. In this case, max pooling.
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sentence_embeddings = mean_pooling(model_output, encoded_input['attention_mask'])
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print("Sentence embeddings:")
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print(sentence_embeddings)
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```
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### Loading an older model (Hugginfface Transformers)
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To load an older model specify the version tag with the `revision` arg. For example, to load the **v1.0** model, use the following code:
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```python
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AutoTokenizer.from_pretrained('KBLab/sentence-bert-swedish-cased', revision="v1.0")
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AutoModel.from_pretrained('KBLab/sentence-bert-swedish-cased', revision="v1.0")
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```
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## Evaluation Results
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<!--- Describe how your model was evaluated -->
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The model was evaluated on [SweParaphrase v1.0](https://spraakbanken.gu.se/en/resources/sweparaphrase) and **SweParaphrase v2.0**. This test set is part of [SuperLim](https://spraakbanken.gu.se/en/resources/superlim) -- a Swedish evaluation suite for natural langage understanding tasks. We calculated Pearson and Spearman correlation between predicted model similarity scores and the human similarity score labels. Results from **SweParaphrase v1.0** are displayed below.
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| Model version | Pearson | Spearman |
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|---------------|---------|----------|
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| v1.0 | 0.9183 | 0.9114 |
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| v1.1 | 0.9183 | 0.9114 |
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| v2.0 | **0.9283** | **0.9130** |
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The following code snippet can be used to reproduce the above results:
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```python
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from sentence_transformers import SentenceTransformer
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import pandas as pd
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df = pd.read_csv(
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"sweparaphrase-dev-165.csv",
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sep="\t",
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header=None,
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names=[
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"original_id",
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"source",
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"type",
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"sentence_swe1",
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"sentence_swe2",
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"score",
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"sentence1",
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"sentence2",
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],
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)
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model = SentenceTransformer("KBLab/sentence-bert-swedish-cased")
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sentences1 = df["sentence_swe1"].tolist()
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sentences2 = df["sentence_swe2"].tolist()
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# Compute embedding for both lists
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embeddings1 = model.encode(sentences1, convert_to_tensor=True)
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embeddings2 = model.encode(sentences2, convert_to_tensor=True)
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# Compute cosine similarity after normalizing
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embeddings1 /= embeddings1.norm(dim=-1, keepdim=True)
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embeddings2 /= embeddings2.norm(dim=-1, keepdim=True)
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cosine_scores = embeddings1 @ embeddings2.t()
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sentence_pair_scores = cosine_scores.diag()
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df["model_score"] = sentence_pair_scores.cpu().tolist()
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print(df[["score", "model_score"]].corr(method="spearman"))
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print(df[["score", "model_score"]].corr(method="pearson"))
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```
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### Sweparaphrase v2.0
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In general, **v1.1** correlates the most with human assessment of text similarity on SweParaphrase v2.0. Below, we present zero-shot evaluation results on all data splits. They display the model's performance out of the box, without any fine-tuning.
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| Model version | Data split | Pearson | Spearman |
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|---------------|------------|------------|------------|
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| v1.0 | train | 0.8355 | 0.8256 |
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| v1.1 | train | **0.8383** | **0.8302** |
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| v2.0 | train | 0.8209 | 0.8059 |
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| v1.0 | dev | 0.8682 | 0.8774 |
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| v1.1 | dev | **0.8739** | **0.8833** |
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| v2.0 | dev | 0.8638 | 0.8668 |
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| v1.0 | test | 0.8356 | 0.8476 |
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| v1.1 | test | **0.8393** | **0.8550** |
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| v2.0 | test | 0.8232 | 0.8213 |
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### SweFAQ v2.0
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When it comes to retrieval tasks, **v2.0** performs the best by quite a substantial margin. It is better at matching the correct answer to a question compared to v1.1 and v1.0.
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| Model version | Data split | Accuracy |
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|---------------|------------|------------|
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| v1.0 | train | 0.5262 |
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| v1.1 | train | 0.6236 |
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| v2.0 | train | **0.7106** |
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| v1.0 | dev | 0.4636 |
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| v1.1 | dev | 0.5818 |
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| v2.0 | dev | **0.6727** |
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| v1.0 | test | 0.4495 |
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| v1.1 | test | 0.5229 |
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| v2.0 | test | **0.5871** |
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Examples how to evaluate the models on some of the test sets of the SuperLim suites can be found on the following links: [evaluate_faq.py](https://github.com/kb-labb/swedish-sbert/blob/main/evaluate_faq.py) (Swedish FAQ), [evaluate_swesat.py](https://github.com/kb-labb/swedish-sbert/blob/main/evaluate_swesat.py) (SweSAT synonyms), [evaluate_supersim.py](https://github.com/kb-labb/swedish-sbert/blob/main/evaluate_supersim.py) (SuperSim).
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## Training
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An article with more details on data and v1.0 of the model can be found on the [KBLab blog](https://kb-labb.github.io/posts/2021-08-23-a-swedish-sentence-transformer/).
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Around 14.6 million sentences from English-Swedish parallel corpuses were used to train the model. Data was sourced from the [Open Parallel Corpus](https://opus.nlpl.eu/) (OPUS) and downloaded via the python package [opustools](https://pypi.org/project/opustools/). Datasets used were: JW300, Europarl, DGT-TM, EMEA, ELITR-ECA, TED2020, Tatoeba and OpenSubtitles.
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The model was trained with the parameters:
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**DataLoader**:
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`torch.utils.data.dataloader.DataLoader` of length 180513 with parameters:
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```
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{'batch_size': 64, 'sampler': 'torch.utils.data.sampler.RandomSampler', 'batch_sampler': 'torch.utils.data.sampler.BatchSampler'}
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```
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**Loss**:
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`sentence_transformers.losses.MSELoss.MSELoss`
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Parameters of the fit()-Method:
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```
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{
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"epochs": 2,
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"evaluation_steps": 1000,
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"evaluator": "sentence_transformers.evaluation.SequentialEvaluator.SequentialEvaluator",
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"max_grad_norm": 1,
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"optimizer_class": "<class 'torch.optim.adamw.AdamW'>",
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"optimizer_params": {
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"eps": 1e-06,
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"lr": 8e-06
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},
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"scheduler": "WarmupLinear",
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"steps_per_epoch": null,
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"warmup_steps": 5000,
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"weight_decay": 0.01
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}
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```
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## Full Model Architecture
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```
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SentenceTransformer(
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(0): Transformer({'max_seq_length': 384, 'do_lower_case': False}) with Transformer model: BertModel
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(1): Pooling({'word_embedding_dimension': 768, 'pooling_mode_cls_token': False, 'pooling_mode_mean_tokens': True, 'pooling_mode_max_tokens': False, 'pooling_mode_mean_sqrt_len_tokens': False})
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)
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```
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## Citing & Authors
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<!--- Describe where people can find more information -->
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This model was trained by KBLab, a data lab at the National Library of Sweden.
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You can cite the article on our blog: https://kb-labb.github.io/posts/2021-08-23-a-swedish-sentence-transformer/ .
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```
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@misc{rekathati2021introducing,
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author = {Rekathati, Faton},
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title = {The KBLab Blog: Introducing a Swedish Sentence Transformer},
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url = {https://kb-labb.github.io/posts/2021-08-23-a-swedish-sentence-transformer/},
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year = {2021}
|
||||||
|
}
|
||||||
|
```
|
||||||
|
|
||||||
|
## Acknowledgements
|
||||||
|
|
||||||
|
We gratefully acknowledge the HPC RIVR consortium ([www.hpc-rivr.si](https://www.hpc-rivr.si/)) and EuroHPC JU ([eurohpc-ju.europa.eu/](https://eurohpc-ju.europa.eu/)) for funding this research by providing computing resources of the HPC system Vega at the Institute of Information Science ([www.izum.si](https://www.izum.si/)).
|
||||||
3
Sentence-Bert-Swedish-Cased-124M-BF16.gguf
Normal file
3
Sentence-Bert-Swedish-Cased-124M-BF16.gguf
Normal file
@@ -0,0 +1,3 @@
|
|||||||
|
version https://git-lfs.github.com/spec/v1
|
||||||
|
oid sha256:625a8db7ea38ed81fa1866a80ac4f16454578ffe8c8cc2521b9ed856fdeac095
|
||||||
|
size 250281056
|
||||||
27
config.json
Normal file
27
config.json
Normal file
@@ -0,0 +1,27 @@
|
|||||||
|
{
|
||||||
|
"_name_or_path": "output/no-normalize-en-sv-2022-12-26_18-39-42/",
|
||||||
|
"architectures": [
|
||||||
|
"BertModel"
|
||||||
|
],
|
||||||
|
"attention_probs_dropout_prob": 0.1,
|
||||||
|
"classifier_dropout": null,
|
||||||
|
"gradient_checkpointing": false,
|
||||||
|
"hidden_act": "gelu",
|
||||||
|
"hidden_dropout_prob": 0.1,
|
||||||
|
"hidden_size": 768,
|
||||||
|
"initializer_range": 0.02,
|
||||||
|
"intermediate_size": 3072,
|
||||||
|
"layer_norm_eps": 1e-12,
|
||||||
|
"max_position_embeddings": 512,
|
||||||
|
"model_type": "bert",
|
||||||
|
"num_attention_heads": 12,
|
||||||
|
"num_hidden_layers": 12,
|
||||||
|
"output_past": true,
|
||||||
|
"pad_token_id": 0,
|
||||||
|
"position_embedding_type": "absolute",
|
||||||
|
"torch_dtype": "float32",
|
||||||
|
"transformers_version": "4.25.1",
|
||||||
|
"type_vocab_size": 2,
|
||||||
|
"use_cache": true,
|
||||||
|
"vocab_size": 50325
|
||||||
|
}
|
||||||
7
config_sentence_transformers.json
Normal file
7
config_sentence_transformers.json
Normal file
@@ -0,0 +1,7 @@
|
|||||||
|
{
|
||||||
|
"__version__": {
|
||||||
|
"sentence_transformers": "2.2.2",
|
||||||
|
"transformers": "4.25.1",
|
||||||
|
"pytorch": "1.13.0"
|
||||||
|
}
|
||||||
|
}
|
||||||
117
eval/mse_evaluation_TED2020-en-sv-dev.tsv.gz_results.csv
Normal file
117
eval/mse_evaluation_TED2020-en-sv-dev.tsv.gz_results.csv
Normal file
@@ -0,0 +1,117 @@
|
|||||||
|
epoch,steps,MSE
|
||||||
|
0,1000,0.3305374411866069
|
||||||
|
0,2000,0.3307490376755595
|
||||||
|
0,3000,0.33029515761882067
|
||||||
|
0,4000,0.3363496856763959
|
||||||
|
0,5000,0.33181568142026663
|
||||||
|
0,6000,0.33005450386554
|
||||||
|
0,7000,0.3400696674361825
|
||||||
|
0,8000,0.3337323432788253
|
||||||
|
0,9000,0.3324012039229274
|
||||||
|
0,10000,0.3307985607534647
|
||||||
|
0,11000,0.33261950593441725
|
||||||
|
0,12000,0.3310671541839838
|
||||||
|
0,13000,0.3318543080240488
|
||||||
|
0,14000,0.33143835607916117
|
||||||
|
0,15000,0.33053881488740444
|
||||||
|
0,16000,0.33193877898156643
|
||||||
|
0,17000,0.33089425414800644
|
||||||
|
0,18000,0.3306396072730422
|
||||||
|
0,19000,0.3306496189907193
|
||||||
|
0,20000,0.3303301753476262
|
||||||
|
0,21000,0.33140445593744516
|
||||||
|
0,22000,0.33020293340086937
|
||||||
|
0,23000,0.3308977698907256
|
||||||
|
0,24000,0.3299850504845381
|
||||||
|
0,25000,0.3310497384518385
|
||||||
|
0,26000,0.33014328218996525
|
||||||
|
0,27000,0.3300098003819585
|
||||||
|
0,28000,0.3302561352029443
|
||||||
|
0,29000,0.33076435793191195
|
||||||
|
0,30000,0.33028211910277605
|
||||||
|
0,31000,0.33056996762752533
|
||||||
|
0,32000,0.3295192960649729
|
||||||
|
0,33000,0.32972143962979317
|
||||||
|
0,34000,0.3295718925073743
|
||||||
|
0,35000,0.3292877459898591
|
||||||
|
0,36000,0.32971047330647707
|
||||||
|
0,37000,0.3298777621239424
|
||||||
|
0,38000,0.32897726632654667
|
||||||
|
0,39000,0.32850170973688364
|
||||||
|
0,40000,0.32882699742913246
|
||||||
|
0,41000,0.3295514499768615
|
||||||
|
0,42000,0.3299229545518756
|
||||||
|
0,43000,0.3288676030933857
|
||||||
|
0,44000,0.3289586631581187
|
||||||
|
0,45000,0.3293627640232444
|
||||||
|
0,46000,0.3293595276772976
|
||||||
|
0,47000,0.32900278456509113
|
||||||
|
0,48000,0.3292385721579194
|
||||||
|
0,49000,0.3301975317299366
|
||||||
|
0,50000,0.3289953572675586
|
||||||
|
0,51000,0.3290593158453703
|
||||||
|
0,52000,0.32869731076061726
|
||||||
|
0,53000,0.32881496008485556
|
||||||
|
0,54000,0.32918842043727636
|
||||||
|
0,55000,0.32880869694054127
|
||||||
|
0,56000,0.3290021326392889
|
||||||
|
0,57000,0.3285171231254935
|
||||||
|
0,58000,0.3282122313976288
|
||||||
|
0,59000,0.32952832989394665
|
||||||
|
0,60000,0.3284840611740947
|
||||||
|
0,61000,0.32849146518856287
|
||||||
|
0,62000,0.3292925423011184
|
||||||
|
0,63000,0.32826855313032866
|
||||||
|
0,64000,0.32868378330022097
|
||||||
|
0,65000,0.3289590124040842
|
||||||
|
0,66000,0.32914113253355026
|
||||||
|
0,67000,0.32902946695685387
|
||||||
|
0,68000,0.327494740486145
|
||||||
|
0,69000,0.32870552968233824
|
||||||
|
0,70000,0.32899840734899044
|
||||||
|
0,71000,0.3288975451141596
|
||||||
|
0,72000,0.32872746232897043
|
||||||
|
0,73000,0.3284345380961895
|
||||||
|
0,74000,0.32932700123637915
|
||||||
|
0,75000,0.3289450891315937
|
||||||
|
0,76000,0.32835565507411957
|
||||||
|
0,77000,0.3284606384113431
|
||||||
|
0,78000,0.3285201732069254
|
||||||
|
0,79000,0.3282968420535326
|
||||||
|
0,80000,0.3280844073742628
|
||||||
|
0,81000,0.3282552817836404
|
||||||
|
0,82000,0.32890671864151955
|
||||||
|
0,83000,0.3278125077486038
|
||||||
|
0,84000,0.32847451511770487
|
||||||
|
0,85000,0.3284695325419307
|
||||||
|
0,86000,0.3288332372903824
|
||||||
|
0,87000,0.32888082787394524
|
||||||
|
0,88000,0.32766179647296667
|
||||||
|
0,89000,0.3283764934167266
|
||||||
|
0,90000,0.32793665304780006
|
||||||
|
0,91000,0.32725471537560225
|
||||||
|
0,92000,0.3277936251834035
|
||||||
|
0,93000,0.3274726215749979
|
||||||
|
0,94000,0.32755015417933464
|
||||||
|
0,95000,0.3280520439147949
|
||||||
|
0,96000,0.3282654797658324
|
||||||
|
0,97000,0.32788922544568777
|
||||||
|
0,98000,0.32690519001334906
|
||||||
|
0,99000,0.32813241705298424
|
||||||
|
0,100000,0.3279812401160598
|
||||||
|
0,101000,0.32842066138982773
|
||||||
|
0,102000,0.3276278730481863
|
||||||
|
0,103000,0.32748677767813206
|
||||||
|
0,104000,0.3282419638708234
|
||||||
|
0,105000,0.3277064301073551
|
||||||
|
0,106000,0.32805497758090496
|
||||||
|
0,107000,0.3275437746196985
|
||||||
|
0,108000,0.32795085571706295
|
||||||
|
0,109000,0.32730509992688894
|
||||||
|
0,110000,0.32666658516973257
|
||||||
|
0,111000,0.3273332491517067
|
||||||
|
0,112000,0.32759017776697874
|
||||||
|
0,113000,0.32762193586677313
|
||||||
|
0,114000,0.32658560667186975
|
||||||
|
0,115000,0.3273524809628725
|
||||||
|
0,116000,0.3271533874794841
|
||||||
|
117
eval/mse_evaluation_Tatoeba-eng-swe-dev.tsv.gz_results.csv
Normal file
117
eval/mse_evaluation_Tatoeba-eng-swe-dev.tsv.gz_results.csv
Normal file
@@ -0,0 +1,117 @@
|
|||||||
|
epoch,steps,MSE
|
||||||
|
0,1000,0.24785797577351332
|
||||||
|
0,2000,0.2478782320395112
|
||||||
|
0,3000,0.24820237886160612
|
||||||
|
0,4000,0.25052379351109266
|
||||||
|
0,5000,0.2484829630702734
|
||||||
|
0,6000,0.24821306578814983
|
||||||
|
0,7000,0.25101194623857737
|
||||||
|
0,8000,0.24918639101088047
|
||||||
|
0,9000,0.24825208820402622
|
||||||
|
0,10000,0.24815460201352835
|
||||||
|
0,11000,0.24851374328136444
|
||||||
|
0,12000,0.24818778038024902
|
||||||
|
0,13000,0.247632572427392
|
||||||
|
0,14000,0.24752533063292503
|
||||||
|
0,15000,0.24750018492341042
|
||||||
|
0,16000,0.24753324687480927
|
||||||
|
0,17000,0.24697233457118273
|
||||||
|
0,18000,0.24762307293713093
|
||||||
|
0,19000,0.24796028155833483
|
||||||
|
0,20000,0.24713336024433374
|
||||||
|
0,21000,0.2480252180248499
|
||||||
|
0,22000,0.24814684875309467
|
||||||
|
0,23000,0.24748872965574265
|
||||||
|
0,24000,0.24726693518459797
|
||||||
|
0,25000,0.24767774157226086
|
||||||
|
0,26000,0.2473350614309311
|
||||||
|
0,27000,0.24677005130797625
|
||||||
|
0,28000,0.24716746993362904
|
||||||
|
0,29000,0.24732353631407022
|
||||||
|
0,30000,0.2474617213010788
|
||||||
|
0,31000,0.24711331352591515
|
||||||
|
0,32000,0.24705547839403152
|
||||||
|
0,33000,0.24687713012099266
|
||||||
|
0,34000,0.24697906337678432
|
||||||
|
0,35000,0.24673829320818186
|
||||||
|
0,36000,0.24703482631593943
|
||||||
|
0,37000,0.24725922849029303
|
||||||
|
0,38000,0.24706728290766478
|
||||||
|
0,39000,0.2470718463882804
|
||||||
|
0,40000,0.24706239346414804
|
||||||
|
0,41000,0.247084628790617
|
||||||
|
0,42000,0.24669873528182507
|
||||||
|
0,43000,0.2467589918524027
|
||||||
|
0,44000,0.24676024913787842
|
||||||
|
0,45000,0.24646525271236897
|
||||||
|
0,46000,0.24657496251165867
|
||||||
|
0,47000,0.245952932164073
|
||||||
|
0,48000,0.24603260681033134
|
||||||
|
0,49000,0.2463929122313857
|
||||||
|
0,50000,0.24623936042189598
|
||||||
|
0,51000,0.24639982730150223
|
||||||
|
0,52000,0.2464748453348875
|
||||||
|
0,53000,0.24611358530819416
|
||||||
|
0,54000,0.24669363629072905
|
||||||
|
0,55000,0.2464905148372054
|
||||||
|
0,56000,0.24694388266652822
|
||||||
|
0,57000,0.24669785052537918
|
||||||
|
0,58000,0.24613626301288605
|
||||||
|
0,59000,0.2463148208335042
|
||||||
|
0,60000,0.24608178064227104
|
||||||
|
0,61000,0.24618220049887896
|
||||||
|
0,62000,0.24709079880267382
|
||||||
|
0,63000,0.2463518874719739
|
||||||
|
0,64000,0.24638932663947344
|
||||||
|
0,65000,0.2465276513248682
|
||||||
|
0,66000,0.24644010700285435
|
||||||
|
0,67000,0.24675603490322828
|
||||||
|
0,68000,0.2460342599079013
|
||||||
|
0,69000,0.24680779315531254
|
||||||
|
0,70000,0.24674353189766407
|
||||||
|
0,71000,0.24644036311656237
|
||||||
|
0,72000,0.24643116630613804
|
||||||
|
0,73000,0.24601935874670744
|
||||||
|
0,74000,0.24650872219353914
|
||||||
|
0,75000,0.2464913995936513
|
||||||
|
0,76000,0.24664695374667645
|
||||||
|
0,77000,0.24642888456583023
|
||||||
|
0,78000,0.24638038594275713
|
||||||
|
0,79000,0.24592014960944653
|
||||||
|
0,80000,0.24589370004832745
|
||||||
|
0,81000,0.2457715105265379
|
||||||
|
0,82000,0.24643635842949152
|
||||||
|
0,83000,0.24539267178624868
|
||||||
|
0,84000,0.24630383122712374
|
||||||
|
0,85000,0.2461036667227745
|
||||||
|
0,86000,0.24639442563056946
|
||||||
|
0,87000,0.24640655610710382
|
||||||
|
0,88000,0.2456542570143938
|
||||||
|
0,89000,0.2460445510223508
|
||||||
|
0,90000,0.24578433949500322
|
||||||
|
0,91000,0.24577109143137932
|
||||||
|
0,92000,0.24596715811640024
|
||||||
|
0,93000,0.2458097180351615
|
||||||
|
0,94000,0.24577626027166843
|
||||||
|
0,95000,0.24602224584668875
|
||||||
|
0,96000,0.24567588698118925
|
||||||
|
0,97000,0.24607458617538214
|
||||||
|
0,98000,0.24560708552598953
|
||||||
|
0,99000,0.2458440838381648
|
||||||
|
0,100000,0.24566156789660454
|
||||||
|
0,101000,0.24600222241133451
|
||||||
|
0,102000,0.24566147476434708
|
||||||
|
0,103000,0.2461111405864358
|
||||||
|
0,104000,0.2459018025547266
|
||||||
|
0,105000,0.24577155709266663
|
||||||
|
0,106000,0.2457206603139639
|
||||||
|
0,107000,0.24565793573856354
|
||||||
|
0,108000,0.24591167457401752
|
||||||
|
0,109000,0.24543707258999348
|
||||||
|
0,110000,0.24535527918487787
|
||||||
|
0,111000,0.2456084592267871
|
||||||
|
0,112000,0.24576487485319376
|
||||||
|
0,113000,0.24569914676249027
|
||||||
|
0,114000,0.24549257941544056
|
||||||
|
0,115000,0.24552540853619576
|
||||||
|
0,116000,0.2456445712596178
|
||||||
|
117
eval/translation_evaluation_TED2020-en-sv-dev.tsv.gz_results.csv
Normal file
117
eval/translation_evaluation_TED2020-en-sv-dev.tsv.gz_results.csv
Normal file
@@ -0,0 +1,117 @@
|
|||||||
|
epoch,steps,src2trg,trg2src
|
||||||
|
0,1000,0.971,0.971
|
||||||
|
0,2000,0.971,0.971
|
||||||
|
0,3000,0.97,0.972
|
||||||
|
0,4000,0.971,0.972
|
||||||
|
0,5000,0.971,0.971
|
||||||
|
0,6000,0.971,0.972
|
||||||
|
0,7000,0.971,0.972
|
||||||
|
0,8000,0.971,0.973
|
||||||
|
0,9000,0.97,0.971
|
||||||
|
0,10000,0.97,0.97
|
||||||
|
0,11000,0.97,0.97
|
||||||
|
0,12000,0.97,0.971
|
||||||
|
0,13000,0.969,0.97
|
||||||
|
0,14000,0.97,0.971
|
||||||
|
0,15000,0.97,0.971
|
||||||
|
0,16000,0.97,0.971
|
||||||
|
0,17000,0.971,0.971
|
||||||
|
0,18000,0.971,0.971
|
||||||
|
0,19000,0.97,0.971
|
||||||
|
0,20000,0.97,0.971
|
||||||
|
0,21000,0.97,0.971
|
||||||
|
0,22000,0.97,0.971
|
||||||
|
0,23000,0.971,0.971
|
||||||
|
0,24000,0.97,0.971
|
||||||
|
0,25000,0.97,0.971
|
||||||
|
0,26000,0.97,0.97
|
||||||
|
0,27000,0.97,0.971
|
||||||
|
0,28000,0.97,0.971
|
||||||
|
0,29000,0.97,0.97
|
||||||
|
0,30000,0.969,0.971
|
||||||
|
0,31000,0.97,0.97
|
||||||
|
0,32000,0.97,0.97
|
||||||
|
0,33000,0.969,0.971
|
||||||
|
0,34000,0.97,0.971
|
||||||
|
0,35000,0.97,0.969
|
||||||
|
0,36000,0.97,0.971
|
||||||
|
0,37000,0.97,0.969
|
||||||
|
0,38000,0.97,0.971
|
||||||
|
0,39000,0.97,0.971
|
||||||
|
0,40000,0.971,0.971
|
||||||
|
0,41000,0.97,0.971
|
||||||
|
0,42000,0.97,0.971
|
||||||
|
0,43000,0.97,0.971
|
||||||
|
0,44000,0.971,0.971
|
||||||
|
0,45000,0.969,0.971
|
||||||
|
0,46000,0.969,0.972
|
||||||
|
0,47000,0.971,0.971
|
||||||
|
0,48000,0.971,0.971
|
||||||
|
0,49000,0.971,0.97
|
||||||
|
0,50000,0.97,0.971
|
||||||
|
0,51000,0.972,0.97
|
||||||
|
0,52000,0.97,0.971
|
||||||
|
0,53000,0.97,0.971
|
||||||
|
0,54000,0.97,0.971
|
||||||
|
0,55000,0.97,0.971
|
||||||
|
0,56000,0.97,0.971
|
||||||
|
0,57000,0.97,0.971
|
||||||
|
0,58000,0.969,0.971
|
||||||
|
0,59000,0.972,0.971
|
||||||
|
0,60000,0.971,0.97
|
||||||
|
0,61000,0.971,0.971
|
||||||
|
0,62000,0.971,0.971
|
||||||
|
0,63000,0.971,0.97
|
||||||
|
0,64000,0.971,0.971
|
||||||
|
0,65000,0.971,0.971
|
||||||
|
0,66000,0.971,0.971
|
||||||
|
0,67000,0.971,0.971
|
||||||
|
0,68000,0.97,0.971
|
||||||
|
0,69000,0.971,0.971
|
||||||
|
0,70000,0.971,0.971
|
||||||
|
0,71000,0.971,0.97
|
||||||
|
0,72000,0.971,0.971
|
||||||
|
0,73000,0.971,0.971
|
||||||
|
0,74000,0.97,0.971
|
||||||
|
0,75000,0.971,0.971
|
||||||
|
0,76000,0.971,0.97
|
||||||
|
0,77000,0.971,0.971
|
||||||
|
0,78000,0.971,0.971
|
||||||
|
0,79000,0.971,0.97
|
||||||
|
0,80000,0.97,0.971
|
||||||
|
0,81000,0.97,0.971
|
||||||
|
0,82000,0.971,0.97
|
||||||
|
0,83000,0.971,0.97
|
||||||
|
0,84000,0.971,0.97
|
||||||
|
0,85000,0.97,0.97
|
||||||
|
0,86000,0.971,0.971
|
||||||
|
0,87000,0.971,0.971
|
||||||
|
0,88000,0.971,0.971
|
||||||
|
0,89000,0.971,0.97
|
||||||
|
0,90000,0.97,0.97
|
||||||
|
0,91000,0.971,0.971
|
||||||
|
0,92000,0.97,0.97
|
||||||
|
0,93000,0.97,0.97
|
||||||
|
0,94000,0.97,0.971
|
||||||
|
0,95000,0.97,0.97
|
||||||
|
0,96000,0.97,0.97
|
||||||
|
0,97000,0.97,0.971
|
||||||
|
0,98000,0.97,0.971
|
||||||
|
0,99000,0.971,0.971
|
||||||
|
0,100000,0.97,0.971
|
||||||
|
0,101000,0.971,0.971
|
||||||
|
0,102000,0.97,0.971
|
||||||
|
0,103000,0.97,0.97
|
||||||
|
0,104000,0.97,0.971
|
||||||
|
0,105000,0.97,0.971
|
||||||
|
0,106000,0.971,0.97
|
||||||
|
0,107000,0.97,0.97
|
||||||
|
0,108000,0.971,0.971
|
||||||
|
0,109000,0.971,0.97
|
||||||
|
0,110000,0.971,0.97
|
||||||
|
0,111000,0.971,0.971
|
||||||
|
0,112000,0.971,0.971
|
||||||
|
0,113000,0.971,0.971
|
||||||
|
0,114000,0.971,0.97
|
||||||
|
0,115000,0.97,0.969
|
||||||
|
0,116000,0.97,0.97
|
||||||
|
@@ -0,0 +1,117 @@
|
|||||||
|
epoch,steps,src2trg,trg2src
|
||||||
|
0,1000,0.97,0.967
|
||||||
|
0,2000,0.97,0.968
|
||||||
|
0,3000,0.97,0.967
|
||||||
|
0,4000,0.97,0.968
|
||||||
|
0,5000,0.971,0.967
|
||||||
|
0,6000,0.97,0.966
|
||||||
|
0,7000,0.971,0.968
|
||||||
|
0,8000,0.97,0.968
|
||||||
|
0,9000,0.971,0.966
|
||||||
|
0,10000,0.969,0.968
|
||||||
|
0,11000,0.97,0.967
|
||||||
|
0,12000,0.967,0.967
|
||||||
|
0,13000,0.969,0.965
|
||||||
|
0,14000,0.971,0.966
|
||||||
|
0,15000,0.971,0.967
|
||||||
|
0,16000,0.97,0.965
|
||||||
|
0,17000,0.969,0.965
|
||||||
|
0,18000,0.967,0.967
|
||||||
|
0,19000,0.969,0.966
|
||||||
|
0,20000,0.968,0.967
|
||||||
|
0,21000,0.968,0.966
|
||||||
|
0,22000,0.967,0.965
|
||||||
|
0,23000,0.97,0.966
|
||||||
|
0,24000,0.969,0.967
|
||||||
|
0,25000,0.967,0.967
|
||||||
|
0,26000,0.968,0.968
|
||||||
|
0,27000,0.967,0.965
|
||||||
|
0,28000,0.968,0.966
|
||||||
|
0,29000,0.967,0.967
|
||||||
|
0,30000,0.968,0.968
|
||||||
|
0,31000,0.966,0.967
|
||||||
|
0,32000,0.967,0.967
|
||||||
|
0,33000,0.969,0.967
|
||||||
|
0,34000,0.969,0.967
|
||||||
|
0,35000,0.968,0.967
|
||||||
|
0,36000,0.969,0.967
|
||||||
|
0,37000,0.969,0.967
|
||||||
|
0,38000,0.968,0.968
|
||||||
|
0,39000,0.969,0.966
|
||||||
|
0,40000,0.965,0.968
|
||||||
|
0,41000,0.968,0.966
|
||||||
|
0,42000,0.968,0.969
|
||||||
|
0,43000,0.968,0.969
|
||||||
|
0,44000,0.969,0.969
|
||||||
|
0,45000,0.966,0.967
|
||||||
|
0,46000,0.966,0.968
|
||||||
|
0,47000,0.968,0.967
|
||||||
|
0,48000,0.966,0.968
|
||||||
|
0,49000,0.967,0.968
|
||||||
|
0,50000,0.966,0.969
|
||||||
|
0,51000,0.967,0.967
|
||||||
|
0,52000,0.967,0.968
|
||||||
|
0,53000,0.968,0.968
|
||||||
|
0,54000,0.968,0.966
|
||||||
|
0,55000,0.968,0.967
|
||||||
|
0,56000,0.968,0.968
|
||||||
|
0,57000,0.968,0.967
|
||||||
|
0,58000,0.969,0.967
|
||||||
|
0,59000,0.969,0.967
|
||||||
|
0,60000,0.97,0.966
|
||||||
|
0,61000,0.969,0.968
|
||||||
|
0,62000,0.968,0.97
|
||||||
|
0,63000,0.969,0.969
|
||||||
|
0,64000,0.969,0.968
|
||||||
|
0,65000,0.969,0.969
|
||||||
|
0,66000,0.968,0.965
|
||||||
|
0,67000,0.969,0.968
|
||||||
|
0,68000,0.968,0.967
|
||||||
|
0,69000,0.968,0.968
|
||||||
|
0,70000,0.97,0.968
|
||||||
|
0,71000,0.97,0.969
|
||||||
|
0,72000,0.967,0.968
|
||||||
|
0,73000,0.967,0.968
|
||||||
|
0,74000,0.968,0.967
|
||||||
|
0,75000,0.969,0.965
|
||||||
|
0,76000,0.969,0.968
|
||||||
|
0,77000,0.968,0.965
|
||||||
|
0,78000,0.968,0.966
|
||||||
|
0,79000,0.97,0.966
|
||||||
|
0,80000,0.969,0.968
|
||||||
|
0,81000,0.969,0.967
|
||||||
|
0,82000,0.968,0.967
|
||||||
|
0,83000,0.969,0.967
|
||||||
|
0,84000,0.968,0.967
|
||||||
|
0,85000,0.968,0.969
|
||||||
|
0,86000,0.97,0.966
|
||||||
|
0,87000,0.968,0.969
|
||||||
|
0,88000,0.967,0.97
|
||||||
|
0,89000,0.967,0.967
|
||||||
|
0,90000,0.967,0.968
|
||||||
|
0,91000,0.967,0.967
|
||||||
|
0,92000,0.968,0.967
|
||||||
|
0,93000,0.971,0.966
|
||||||
|
0,94000,0.97,0.968
|
||||||
|
0,95000,0.967,0.964
|
||||||
|
0,96000,0.967,0.966
|
||||||
|
0,97000,0.969,0.964
|
||||||
|
0,98000,0.969,0.966
|
||||||
|
0,99000,0.969,0.967
|
||||||
|
0,100000,0.968,0.967
|
||||||
|
0,101000,0.967,0.966
|
||||||
|
0,102000,0.967,0.967
|
||||||
|
0,103000,0.967,0.967
|
||||||
|
0,104000,0.967,0.966
|
||||||
|
0,105000,0.966,0.967
|
||||||
|
0,106000,0.968,0.968
|
||||||
|
0,107000,0.968,0.966
|
||||||
|
0,108000,0.967,0.968
|
||||||
|
0,109000,0.967,0.967
|
||||||
|
0,110000,0.968,0.969
|
||||||
|
0,111000,0.967,0.968
|
||||||
|
0,112000,0.967,0.968
|
||||||
|
0,113000,0.967,0.966
|
||||||
|
0,114000,0.966,0.966
|
||||||
|
0,115000,0.966,0.967
|
||||||
|
0,116000,0.966,0.966
|
||||||
|
3
model.safetensors
Normal file
3
model.safetensors
Normal file
@@ -0,0 +1,3 @@
|
|||||||
|
version https://git-lfs.github.com/spec/v1
|
||||||
|
oid sha256:1561e3731bd6e2bf8d6c9188ed26433f96ef53c6a51f169e4ddb8ad6dd81eba5
|
||||||
|
size 498790336
|
||||||
14
modules.json
Normal file
14
modules.json
Normal file
@@ -0,0 +1,14 @@
|
|||||||
|
[
|
||||||
|
{
|
||||||
|
"idx": 0,
|
||||||
|
"name": "0",
|
||||||
|
"path": "",
|
||||||
|
"type": "sentence_transformers.models.Transformer"
|
||||||
|
},
|
||||||
|
{
|
||||||
|
"idx": 1,
|
||||||
|
"name": "1",
|
||||||
|
"path": "1_Pooling",
|
||||||
|
"type": "sentence_transformers.models.Pooling"
|
||||||
|
}
|
||||||
|
]
|
||||||
3
pytorch_model.bin
Normal file
3
pytorch_model.bin
Normal file
@@ -0,0 +1,3 @@
|
|||||||
|
version https://git-lfs.github.com/spec/v1
|
||||||
|
oid sha256:6bea01d07d85dc7870dfd9907ca78bac21ee8b1ef81c838f25a88b6494c79b32
|
||||||
|
size 498834989
|
||||||
4
sentence_bert_config.json
Normal file
4
sentence_bert_config.json
Normal file
@@ -0,0 +1,4 @@
|
|||||||
|
{
|
||||||
|
"max_seq_length": 384,
|
||||||
|
"do_lower_case": false
|
||||||
|
}
|
||||||
7
special_tokens_map.json
Normal file
7
special_tokens_map.json
Normal file
@@ -0,0 +1,7 @@
|
|||||||
|
{
|
||||||
|
"cls_token": "[CLS]",
|
||||||
|
"mask_token": "[MASK]",
|
||||||
|
"pad_token": "[PAD]",
|
||||||
|
"sep_token": "[SEP]",
|
||||||
|
"unk_token": "[UNK]"
|
||||||
|
}
|
||||||
50487
tokenizer.json
Normal file
50487
tokenizer.json
Normal file
File diff suppressed because it is too large
Load Diff
16
tokenizer_config.json
Normal file
16
tokenizer_config.json
Normal file
@@ -0,0 +1,16 @@
|
|||||||
|
{
|
||||||
|
"cls_token": "[CLS]",
|
||||||
|
"do_basic_tokenize": true,
|
||||||
|
"do_lower_case": false,
|
||||||
|
"mask_token": "[MASK]",
|
||||||
|
"model_max_length": 1000000000000000019884624838656,
|
||||||
|
"name_or_path": "output/no-normalize-en-sv-2022-12-26_18-39-42/",
|
||||||
|
"never_split": null,
|
||||||
|
"pad_token": "[PAD]",
|
||||||
|
"sep_token": "[SEP]",
|
||||||
|
"special_tokens_map_file": "/ceph/hpc/home/eufatonr/.cache/huggingface/hub/models--KB--bert-base-swedish-cased/snapshots/81c7baa04742a30cb6732c181e678721868cb42e/special_tokens_map.json",
|
||||||
|
"strip_accents": false,
|
||||||
|
"tokenize_chinese_chars": true,
|
||||||
|
"tokenizer_class": "BertTokenizer",
|
||||||
|
"unk_token": "[UNK]"
|
||||||
|
}
|
||||||
Reference in New Issue
Block a user