初始化项目,由ModelHub XC社区提供模型

Model: TingChenChang/make-multilingual-en-zh-tw-20220825062338
Source: Original Platform
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2026-07-05 12:56:17 +08:00
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{
"__version__": {
"sentence_transformers": "2.2.2",
"transformers": "4.21.1",
"pytorch": "1.12.1+cu102"
}
}

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{
"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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---
pipeline_tag: sentence-similarity
tags:
- sentence-transformers
- feature-extraction
- sentence-similarity
- transformers
---
# {MODEL_NAME}
This is a [sentence-transformers](https://www.SBERT.net) model: It maps sentences & paragraphs to a 768 dimensional dense vector space and can be used for tasks like clustering or semantic search.
<!--- Describe your model here -->
## Usage (Sentence-Transformers)
Using this model becomes easy when you have [sentence-transformers](https://www.SBERT.net) installed:
```
pip install -U sentence-transformers
```
Then you can use the model like this:
```python
from sentence_transformers import SentenceTransformer
sentences = ["This is an example sentence", "Each sentence is converted"]
model = SentenceTransformer('{MODEL_NAME}')
embeddings = model.encode(sentences)
print(embeddings)
```
## Usage (HuggingFace Transformers)
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.
```python
from transformers import AutoTokenizer, AutoModel
import torch
#Mean Pooling - Take attention mask into account for correct averaging
def mean_pooling(model_output, attention_mask):
token_embeddings = model_output[0] #First element of model_output contains all token embeddings
input_mask_expanded = attention_mask.unsqueeze(-1).expand(token_embeddings.size()).float()
return torch.sum(token_embeddings * input_mask_expanded, 1) / torch.clamp(input_mask_expanded.sum(1), min=1e-9)
# Sentences we want sentence embeddings for
sentences = ['This is an example sentence', 'Each sentence is converted']
# Load model from HuggingFace Hub
tokenizer = AutoTokenizer.from_pretrained('{MODEL_NAME}')
model = AutoModel.from_pretrained('{MODEL_NAME}')
# Tokenize sentences
encoded_input = tokenizer(sentences, padding=True, truncation=True, return_tensors='pt')
# Compute token embeddings
with torch.no_grad():
model_output = model(**encoded_input)
# Perform pooling. In this case, mean pooling.
sentence_embeddings = mean_pooling(model_output, encoded_input['attention_mask'])
print("Sentence embeddings:")
print(sentence_embeddings)
```
## Evaluation Results
<!--- Describe how your model was evaluated -->
For an automated evaluation of this model, see the *Sentence Embeddings Benchmark*: [https://seb.sbert.net](https://seb.sbert.net?model_name={MODEL_NAME})
## Training
The model was trained with the parameters:
**DataLoader**:
`torch.utils.data.dataloader.DataLoader` of length 11898 with parameters:
```
{'batch_size': 64, 'sampler': 'torch.utils.data.sampler.RandomSampler', 'batch_sampler': 'torch.utils.data.sampler.BatchSampler'}
```
**Loss**:
`sentence_transformers.losses.MSELoss.MSELoss`
Parameters of the fit()-Method:
```
{
"epochs": 5,
"evaluation_steps": 1000,
"evaluator": "sentence_transformers.evaluation.SequentialEvaluator.SequentialEvaluator",
"max_grad_norm": 1,
"optimizer_class": "<class 'torch.optim.adamw.AdamW'>",
"optimizer_params": {
"eps": 1e-06,
"lr": 2e-05
},
"scheduler": "WarmupLinear",
"steps_per_epoch": null,
"warmup_steps": 10000,
"weight_decay": 0.01
}
```
## Full Model Architecture
```
SentenceTransformer(
(0): Transformer({'max_seq_length': 128, 'do_lower_case': False}) with Transformer model: XLMRobertaModel
(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})
)
```
## Citing & Authors
<!--- Describe where people can find more information -->

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{
"_name_or_path": "sbert-make-multilingual/output/make-multilingual-en-zh-tw-20220825062338/",
"architectures": [
"XLMRobertaModel"
],
"attention_probs_dropout_prob": 0.1,
"bos_token_id": 0,
"classifier_dropout": null,
"eos_token_id": 2,
"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-05,
"max_position_embeddings": 514,
"model_type": "xlm-roberta",
"num_attention_heads": 12,
"num_hidden_layers": 12,
"output_past": true,
"pad_token_id": 1,
"position_embedding_type": "absolute",
"torch_dtype": "float32",
"transformers_version": "4.21.1",
"type_vocab_size": 1,
"use_cache": true,
"vocab_size": 250002
}

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{
"__version__": {
"sentence_transformers": "2.2.2",
"transformers": "4.21.1",
"pytorch": "1.12.1+cu102"
}
}

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epoch,steps,MSE
0,1000,0.06223061354830861
0,2000,0.06203244556672871
0,3000,0.061916367849335074
0,4000,0.061945460038259625
0,5000,0.06187912076711655
0,6000,0.06188569241203368
0,7000,0.06136861629784107
0,8000,0.06148410029709339
0,9000,0.061285088304430246
0,10000,0.060733535792678595
0,11000,0.0604144879616797
0,-1,0.060609797947108746
1,1000,0.05997546832077205
1,2000,0.059760332806035876
1,3000,0.059662165585905313
1,4000,0.05945731536485255
1,5000,0.05934642977081239
1,6000,0.059219938702881336
1 epoch steps MSE
2 0 1000 0.06223061354830861
3 0 2000 0.06203244556672871
4 0 3000 0.061916367849335074
5 0 4000 0.061945460038259625
6 0 5000 0.06187912076711655
7 0 6000 0.06188569241203368
8 0 7000 0.06136861629784107
9 0 8000 0.06148410029709339
10 0 9000 0.061285088304430246
11 0 10000 0.060733535792678595
12 0 11000 0.0604144879616797
13 0 -1 0.060609797947108746
14 1 1000 0.05997546832077205
15 1 2000 0.059760332806035876
16 1 3000 0.059662165585905313
17 1 4000 0.05945731536485255
18 1 5000 0.05934642977081239
19 1 6000 0.059219938702881336

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epoch,steps,cosine_pearson,cosine_spearman,euclidean_pearson,euclidean_spearman,manhattan_pearson,manhattan_spearman,dot_pearson,dot_spearman
0,1000,0.8331679225212545,0.8551331802776464,0.8636893928030359,0.8574845339805655,0.8615398121331832,0.8547941425195992,0.7080005741063319,0.7291937226458504
0,2000,0.8330042565586959,0.8555564008803787,0.863358112865497,0.8574491694978666,0.8612043808777003,0.8549598174331121,0.7075851161733188,0.7286963135087607
0,3000,0.833635776830267,0.8557182318283809,0.8633493324634668,0.8569367688952851,0.8610759874188574,0.8548222034678277,0.7099609820643491,0.7313990056593614
0,4000,0.8332174364042519,0.8558339351902542,0.8632858458461129,0.8577974327731397,0.8610139064991895,0.8535110268321144,0.7141717576828616,0.7373321664251873
0,5000,0.8315609868199801,0.8530316843329253,0.8606525559778901,0.8544074395892188,0.8584263125955869,0.8516520851111209,0.7147625153338718,0.7369900534947316
0,6000,0.8302664779411321,0.8524673901959487,0.8595525190037036,0.8538393014867316,0.8573185347019552,0.8500157089931992,0.7139561219240014,0.7331795304839358
0,7000,0.8292252167018984,0.8527368521782517,0.8594124881727788,0.8536678606249527,0.857058138987968,0.8512400120083697,0.7195906367631392,0.7397957639210201
0,8000,0.8253772113909499,0.8494137439942175,0.8567717741559008,0.8516263305421989,0.8543871594992598,0.8485219439957261,0.7167860765038803,0.7394820963353437
0,9000,0.8287483424264556,0.8531012601086697,0.8580977406115551,0.8537282108834713,0.8559076786891329,0.8518681159728245,0.727402397780654,0.7484804351994331
0,10000,0.8289035234363668,0.852015724248437,0.8589048569185785,0.8545823400199575,0.8567204274061416,0.8522840330410865,0.7347061193166563,0.7551777763087938
0,11000,0.8263366408345586,0.8522671195928392,0.8583670535714922,0.8556451964836769,0.8560397081624632,0.8519576803692247,0.7280861839019613,0.7512665414016167
0,-1,0.8234491989286817,0.8488771264089184,0.8531653050371929,0.8508529246814382,0.850959442679656,0.84733146787705,0.7353021957261283,0.7570878427710801
1,1000,0.8222198692209769,0.8486437977024165,0.853131791091942,0.849644381924862,0.8508030300369717,0.8469405365846079,0.7395371341066752,0.7627192522443129
1,2000,0.8213052518761065,0.8470462456361534,0.8509765773303481,0.8467986942572617,0.8487285844789747,0.8445961020196082,0.7394641474760854,0.7636191245703771
1,3000,0.8216383109014087,0.849223083304885,0.8515903274360738,0.8486061268404113,0.8492304822771835,0.8461171591722076,0.7463819668422524,0.7684113963726156
1,4000,0.8230286128204333,0.8499419048553931,0.8523041957533484,0.8492638293392988,0.8502357524171301,0.8460964017584496,0.7488882497520122,0.7716103444706527
1,5000,0.8186606238947536,0.8469989648603713,0.8489671072894741,0.8458903652070741,0.8468554929966491,0.8433929408147468,0.7465549226451859,0.7698913230942501
1,6000,0.8199293362777689,0.848109870892975,0.8502292653638305,0.8477162488246752,0.8480394020219456,0.8440083596930161,0.7498105203150596,0.7724629360209345
1 epoch steps cosine_pearson cosine_spearman euclidean_pearson euclidean_spearman manhattan_pearson manhattan_spearman dot_pearson dot_spearman
2 0 1000 0.8331679225212545 0.8551331802776464 0.8636893928030359 0.8574845339805655 0.8615398121331832 0.8547941425195992 0.7080005741063319 0.7291937226458504
3 0 2000 0.8330042565586959 0.8555564008803787 0.863358112865497 0.8574491694978666 0.8612043808777003 0.8549598174331121 0.7075851161733188 0.7286963135087607
4 0 3000 0.833635776830267 0.8557182318283809 0.8633493324634668 0.8569367688952851 0.8610759874188574 0.8548222034678277 0.7099609820643491 0.7313990056593614
5 0 4000 0.8332174364042519 0.8558339351902542 0.8632858458461129 0.8577974327731397 0.8610139064991895 0.8535110268321144 0.7141717576828616 0.7373321664251873
6 0 5000 0.8315609868199801 0.8530316843329253 0.8606525559778901 0.8544074395892188 0.8584263125955869 0.8516520851111209 0.7147625153338718 0.7369900534947316
7 0 6000 0.8302664779411321 0.8524673901959487 0.8595525190037036 0.8538393014867316 0.8573185347019552 0.8500157089931992 0.7139561219240014 0.7331795304839358
8 0 7000 0.8292252167018984 0.8527368521782517 0.8594124881727788 0.8536678606249527 0.857058138987968 0.8512400120083697 0.7195906367631392 0.7397957639210201
9 0 8000 0.8253772113909499 0.8494137439942175 0.8567717741559008 0.8516263305421989 0.8543871594992598 0.8485219439957261 0.7167860765038803 0.7394820963353437
10 0 9000 0.8287483424264556 0.8531012601086697 0.8580977406115551 0.8537282108834713 0.8559076786891329 0.8518681159728245 0.727402397780654 0.7484804351994331
11 0 10000 0.8289035234363668 0.852015724248437 0.8589048569185785 0.8545823400199575 0.8567204274061416 0.8522840330410865 0.7347061193166563 0.7551777763087938
12 0 11000 0.8263366408345586 0.8522671195928392 0.8583670535714922 0.8556451964836769 0.8560397081624632 0.8519576803692247 0.7280861839019613 0.7512665414016167
13 0 -1 0.8234491989286817 0.8488771264089184 0.8531653050371929 0.8508529246814382 0.850959442679656 0.84733146787705 0.7353021957261283 0.7570878427710801
14 1 1000 0.8222198692209769 0.8486437977024165 0.853131791091942 0.849644381924862 0.8508030300369717 0.8469405365846079 0.7395371341066752 0.7627192522443129
15 1 2000 0.8213052518761065 0.8470462456361534 0.8509765773303481 0.8467986942572617 0.8487285844789747 0.8445961020196082 0.7394641474760854 0.7636191245703771
16 1 3000 0.8216383109014087 0.849223083304885 0.8515903274360738 0.8486061268404113 0.8492304822771835 0.8461171591722076 0.7463819668422524 0.7684113963726156
17 1 4000 0.8230286128204333 0.8499419048553931 0.8523041957533484 0.8492638293392988 0.8502357524171301 0.8460964017584496 0.7488882497520122 0.7716103444706527
18 1 5000 0.8186606238947536 0.8469989648603713 0.8489671072894741 0.8458903652070741 0.8468554929966491 0.8433929408147468 0.7465549226451859 0.7698913230942501
19 1 6000 0.8199293362777689 0.848109870892975 0.8502292653638305 0.8477162488246752 0.8480394020219456 0.8440083596930161 0.7498105203150596 0.7724629360209345

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epoch,steps,cosine_pearson,cosine_spearman,euclidean_pearson,euclidean_spearman,manhattan_pearson,manhattan_spearman,dot_pearson,dot_spearman
0,1000,0.7570827001090813,0.7829536520179231,0.7849889057884857,0.790791627823479,0.7838292761115199,0.7895196521095137,0.6797829530350897,0.6895117838523157
0,2000,0.7571509859182012,0.7825081102832119,0.7830713010525879,0.7888766162080632,0.7819867188018441,0.7876742499755591,0.6795408904216148,0.689413289301756
0,3000,0.7567409102058332,0.7825617227589128,0.7854199651115996,0.7911848559784004,0.7842479363252546,0.7898486147120288,0.6787806382205749,0.6877025314150705
0,4000,0.7589896738827501,0.7840607305425763,0.7853851134370664,0.7912867047735501,0.7841587846163133,0.7898484882571062,0.6833008363698059,0.6926074094678097
0,5000,0.7568051989099636,0.7823178729749563,0.7842624264928262,0.7901089747541167,0.7831478597899253,0.7887799216610526,0.678015436039681,0.6877425866761832
0,6000,0.76110993537507,0.7846938990171494,0.78634783875191,0.7919882952341896,0.7851272481053764,0.7903491564404409,0.6829538970369722,0.6920006194933526
0,7000,0.757911635275761,0.7836957053279008,0.7853044853694706,0.790984558518405,0.7839192052989779,0.7894861857880131,0.6829468219048354,0.692812478523114
0,8000,0.7509673298478391,0.779131332572992,0.7813434218384762,0.7881525854798384,0.7803410241755435,0.7867381002299505,0.6757808616967882,0.6861876100596834
0,9000,0.7558504549770806,0.7829118843511864,0.7845008889459528,0.7907172367634655,0.7832788814874616,0.7890221223552482,0.6824826610740675,0.6926887008922725
0,10000,0.7572742866990453,0.7824231503561324,0.7844196872652272,0.7901737046325318,0.7833457172800139,0.7891556686329442,0.6840281262215521,0.6932514331833438
0,11000,0.7527292801998008,0.78030895319115,0.780618682867413,0.7871636953660386,0.7795166926156776,0.7859699826298868,0.6802534685849256,0.6912063548437687
0,-1,0.753693946875722,0.7807276928698291,0.7817760868186077,0.7883830606687813,0.7807223705325983,0.7871123783777072,0.682180742687755,0.6918835005044305
1,1000,0.7506244095803017,0.7778029623444135,0.7817872255777,0.7879348570020225,0.7807458502583196,0.7867000681504227,0.6784469549231144,0.6882384440739117
1,2000,0.7508074817427586,0.7780041864734166,0.7820180491380933,0.7885036986650679,0.7809581726256525,0.7873213392099477,0.6810437219355404,0.6904237892484845
1,3000,0.7472356599938378,0.7755598764645141,0.7803841315530705,0.7866162917641126,0.7793618555787284,0.7854925844431527,0.6789555619950693,0.6891081173507835
1,4000,0.7514767547954482,0.7781944173970742,0.7830505799549813,0.7890479436335355,0.7819934897118469,0.787877632960389,0.6807878193751716,0.6900412999928232
1,5000,0.7468475655312985,0.7750226737318828,0.7782891051699417,0.785069982730165,0.7772581614604364,0.7838711569291307,0.6773213112272526,0.6872811322544907
1,6000,0.7476747765435937,0.7757197794684102,0.7797893748208706,0.7861068424217299,0.7785661020620962,0.7848519618281135,0.6779008291481604,0.688065412252287
1 epoch steps cosine_pearson cosine_spearman euclidean_pearson euclidean_spearman manhattan_pearson manhattan_spearman dot_pearson dot_spearman
2 0 1000 0.7570827001090813 0.7829536520179231 0.7849889057884857 0.790791627823479 0.7838292761115199 0.7895196521095137 0.6797829530350897 0.6895117838523157
3 0 2000 0.7571509859182012 0.7825081102832119 0.7830713010525879 0.7888766162080632 0.7819867188018441 0.7876742499755591 0.6795408904216148 0.689413289301756
4 0 3000 0.7567409102058332 0.7825617227589128 0.7854199651115996 0.7911848559784004 0.7842479363252546 0.7898486147120288 0.6787806382205749 0.6877025314150705
5 0 4000 0.7589896738827501 0.7840607305425763 0.7853851134370664 0.7912867047735501 0.7841587846163133 0.7898484882571062 0.6833008363698059 0.6926074094678097
6 0 5000 0.7568051989099636 0.7823178729749563 0.7842624264928262 0.7901089747541167 0.7831478597899253 0.7887799216610526 0.678015436039681 0.6877425866761832
7 0 6000 0.76110993537507 0.7846938990171494 0.78634783875191 0.7919882952341896 0.7851272481053764 0.7903491564404409 0.6829538970369722 0.6920006194933526
8 0 7000 0.757911635275761 0.7836957053279008 0.7853044853694706 0.790984558518405 0.7839192052989779 0.7894861857880131 0.6829468219048354 0.692812478523114
9 0 8000 0.7509673298478391 0.779131332572992 0.7813434218384762 0.7881525854798384 0.7803410241755435 0.7867381002299505 0.6757808616967882 0.6861876100596834
10 0 9000 0.7558504549770806 0.7829118843511864 0.7845008889459528 0.7907172367634655 0.7832788814874616 0.7890221223552482 0.6824826610740675 0.6926887008922725
11 0 10000 0.7572742866990453 0.7824231503561324 0.7844196872652272 0.7901737046325318 0.7833457172800139 0.7891556686329442 0.6840281262215521 0.6932514331833438
12 0 11000 0.7527292801998008 0.78030895319115 0.780618682867413 0.7871636953660386 0.7795166926156776 0.7859699826298868 0.6802534685849256 0.6912063548437687
13 0 -1 0.753693946875722 0.7807276928698291 0.7817760868186077 0.7883830606687813 0.7807223705325983 0.7871123783777072 0.682180742687755 0.6918835005044305
14 1 1000 0.7506244095803017 0.7778029623444135 0.7817872255777 0.7879348570020225 0.7807458502583196 0.7867000681504227 0.6784469549231144 0.6882384440739117
15 1 2000 0.7508074817427586 0.7780041864734166 0.7820180491380933 0.7885036986650679 0.7809581726256525 0.7873213392099477 0.6810437219355404 0.6904237892484845
16 1 3000 0.7472356599938378 0.7755598764645141 0.7803841315530705 0.7866162917641126 0.7793618555787284 0.7854925844431527 0.6789555619950693 0.6891081173507835
17 1 4000 0.7514767547954482 0.7781944173970742 0.7830505799549813 0.7890479436335355 0.7819934897118469 0.787877632960389 0.6807878193751716 0.6900412999928232
18 1 5000 0.7468475655312985 0.7750226737318828 0.7782891051699417 0.785069982730165 0.7772581614604364 0.7838711569291307 0.6773213112272526 0.6872811322544907
19 1 6000 0.7476747765435937 0.7757197794684102 0.7797893748208706 0.7861068424217299 0.7785661020620962 0.7848519618281135 0.6779008291481604 0.688065412252287

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epoch,steps,src2trg,trg2src
0,1000,0.918,0.894
0,2000,0.916,0.896
0,3000,0.916,0.897
0,4000,0.915,0.898
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1,3000,0.914,0.891
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1 epoch steps src2trg trg2src
2 0 1000 0.918 0.894
3 0 2000 0.916 0.896
4 0 3000 0.916 0.897
5 0 4000 0.915 0.898
6 0 5000 0.917 0.896
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13 0 -1 0.917 0.889
14 1 1000 0.92 0.894
15 1 2000 0.917 0.892
16 1 3000 0.914 0.891
17 1 4000 0.915 0.891
18 1 5000 0.916 0.895
19 1 6000 0.917 0.893

14
modules.json Normal file
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