Sentence-BERT: Sentence Embeddings using Siamese BERT-Networks
Paper
•
1908.10084
•
Published
•
11
This is a sentence-transformers model finetuned from sentence-transformers/all-MiniLM-L6-v2 on the pairs_three_scores_v6 dataset. It maps sentences & paragraphs to a 384-dimensional dense vector space and can be used for semantic textual similarity, semantic search, paraphrase mining, text classification, clustering, and more.
SentenceTransformer(
(0): Transformer({'max_seq_length': 256, 'do_lower_case': False, 'architecture': 'BertModel'})
(1): Pooling({'word_embedding_dimension': 384, 'pooling_mode_cls_token': False, 'pooling_mode_mean_tokens': True, 'pooling_mode_max_tokens': False, 'pooling_mode_mean_sqrt_len_tokens': False, 'pooling_mode_weightedmean_tokens': False, 'pooling_mode_lasttoken': False, 'include_prompt': True})
(2): Normalize()
)
First install the Sentence Transformers library:
pip install -U sentence-transformers
Then you can load this model and run inference.
from sentence_transformers import SentenceTransformer
# Download from the 🤗 Hub
model = SentenceTransformer("sentence_transformers_model_id")
# Run inference
sentences = [
'cotton hoodies',
'relaxed fitting sweatshirt',
'soft satin wrap skirt',
]
embeddings = model.encode(sentences)
print(embeddings.shape)
# [3, 384]
# Get the similarity scores for the embeddings
similarities = model.similarity(embeddings, embeddings)
print(similarities)
# tensor([[1.0000, 0.7509, 0.7368],
# [0.7509, 1.0000, 0.7357],
# [0.7368, 0.7357, 1.0000]])
sentence1, sentence2, and score| sentence1 | sentence2 | score | |
|---|---|---|---|
| type | string | string | float |
| details |
|
|
|
| sentence1 | sentence2 | score |
|---|---|---|
candle holder |
trio sculptures decore |
1.0 |
seashells hat |
celery tomato soup |
0.0 |
abou shakra |
coffee table |
0.0 |
CoSENTLoss with these parameters:{
"scale": 20.0,
"similarity_fct": "pairwise_cos_sim"
}
sentence1, sentence2, and score| sentence1 | sentence2 | score | |
|---|---|---|---|
| type | string | string | float |
| details |
|
|
|
| sentence1 | sentence2 | score |
|---|---|---|
short sleeves swimsuit |
female swimsuit |
1.0 |
instant soup |
chicken appetizer |
0.0044313876238872 |
wc plunger |
ecofriendly cloth |
0.4 |
CoSENTLoss with these parameters:{
"scale": 20.0,
"similarity_fct": "pairwise_cos_sim"
}
eval_strategy: stepsper_device_train_batch_size: 128per_device_eval_batch_size: 128learning_rate: 2e-05num_train_epochs: 1warmup_ratio: 0.1fp16: Trueoverwrite_output_dir: Falsedo_predict: Falseeval_strategy: stepsprediction_loss_only: Trueper_device_train_batch_size: 128per_device_eval_batch_size: 128per_gpu_train_batch_size: Noneper_gpu_eval_batch_size: Nonegradient_accumulation_steps: 1eval_accumulation_steps: Nonetorch_empty_cache_steps: Nonelearning_rate: 2e-05weight_decay: 0.0adam_beta1: 0.9adam_beta2: 0.999adam_epsilon: 1e-08max_grad_norm: 1.0num_train_epochs: 1max_steps: -1lr_scheduler_type: linearlr_scheduler_kwargs: {}warmup_ratio: 0.1warmup_steps: 0log_level: passivelog_level_replica: warninglog_on_each_node: Truelogging_nan_inf_filter: Truesave_safetensors: Truesave_on_each_node: Falsesave_only_model: Falserestore_callback_states_from_checkpoint: Falseno_cuda: Falseuse_cpu: Falseuse_mps_device: Falseseed: 42data_seed: Nonejit_mode_eval: Falseuse_ipex: Falsebf16: Falsefp16: Truefp16_opt_level: O1half_precision_backend: autobf16_full_eval: Falsefp16_full_eval: Falsetf32: Nonelocal_rank: 0ddp_backend: Nonetpu_num_cores: Nonetpu_metrics_debug: Falsedebug: []dataloader_drop_last: Falsedataloader_num_workers: 0dataloader_prefetch_factor: Nonepast_index: -1disable_tqdm: Falseremove_unused_columns: Truelabel_names: Noneload_best_model_at_end: Falseignore_data_skip: Falsefsdp: []fsdp_min_num_params: 0fsdp_config: {'min_num_params': 0, 'xla': False, 'xla_fsdp_v2': False, 'xla_fsdp_grad_ckpt': False}fsdp_transformer_layer_cls_to_wrap: Noneaccelerator_config: {'split_batches': False, 'dispatch_batches': None, 'even_batches': True, 'use_seedable_sampler': True, 'non_blocking': False, 'gradient_accumulation_kwargs': None}deepspeed: Nonelabel_smoothing_factor: 0.0optim: adamw_torchoptim_args: Noneadafactor: Falsegroup_by_length: Falselength_column_name: lengthddp_find_unused_parameters: Noneddp_bucket_cap_mb: Noneddp_broadcast_buffers: Falsedataloader_pin_memory: Truedataloader_persistent_workers: Falseskip_memory_metrics: Trueuse_legacy_prediction_loop: Falsepush_to_hub: Falseresume_from_checkpoint: Nonehub_model_id: Nonehub_strategy: every_savehub_private_repo: Nonehub_always_push: Falsehub_revision: Nonegradient_checkpointing: Falsegradient_checkpointing_kwargs: Noneinclude_inputs_for_metrics: Falseinclude_for_metrics: []eval_do_concat_batches: Truefp16_backend: autopush_to_hub_model_id: Nonepush_to_hub_organization: Nonemp_parameters: auto_find_batch_size: Falsefull_determinism: Falsetorchdynamo: Noneray_scope: lastddp_timeout: 1800torch_compile: Falsetorch_compile_backend: Nonetorch_compile_mode: Noneinclude_tokens_per_second: Falseinclude_num_input_tokens_seen: Falseneftune_noise_alpha: Noneoptim_target_modules: Nonebatch_eval_metrics: Falseeval_on_start: Falseuse_liger_kernel: Falseliger_kernel_config: Noneeval_use_gather_object: Falseaverage_tokens_across_devices: Falseprompts: Nonebatch_sampler: batch_samplermulti_dataset_batch_sampler: proportionalrouter_mapping: {}learning_rate_mapping: {}| Epoch | Step | Training Loss |
|---|---|---|
| 0.0014 | 100 | 13.1607 |
| 0.0027 | 200 | 13.0132 |
| 0.0041 | 300 | 12.7055 |
| 0.0054 | 400 | 12.5304 |
| 0.0068 | 500 | 11.462 |
| 0.0081 | 600 | 10.6911 |
| 0.0095 | 700 | 10.2024 |
| 0.0108 | 800 | 9.5896 |
| 0.0122 | 900 | 9.0485 |
| 0.0135 | 1000 | 8.6746 |
| 0.0149 | 1100 | 8.3508 |
| 0.0162 | 1200 | 8.1851 |
| 0.0176 | 1300 | 8.0442 |
| 0.0189 | 1400 | 7.9434 |
| 0.0203 | 1500 | 7.9051 |
| 0.0216 | 1600 | 7.8207 |
| 0.0230 | 1700 | 7.7898 |
| 0.0243 | 1800 | 7.7743 |
| 0.0257 | 1900 | 7.6743 |
| 0.0270 | 2000 | 7.6582 |
| 0.0284 | 2100 | 7.672 |
| 0.0297 | 2200 | 7.6531 |
| 0.0311 | 2300 | 7.586 |
| 0.0324 | 2400 | 7.5649 |
| 0.0338 | 2500 | 7.5575 |
| 0.0351 | 2600 | 7.5247 |
| 0.0365 | 2700 | 7.5267 |
| 0.0378 | 2800 | 7.5478 |
| 0.0392 | 2900 | 7.4814 |
| 0.0405 | 3000 | 7.4513 |
| 0.0419 | 3100 | 7.4606 |
| 0.0432 | 3200 | 7.4012 |
| 0.0446 | 3300 | 7.4187 |
| 0.0459 | 3400 | 7.4525 |
| 0.0473 | 3500 | 7.3908 |
| 0.0486 | 3600 | 7.438 |
| 0.0500 | 3700 | 7.4329 |
| 0.0514 | 3800 | 7.3937 |
| 0.0527 | 3900 | 7.3501 |
| 0.0541 | 4000 | 7.3666 |
| 0.0554 | 4100 | 7.3452 |
| 0.0568 | 4200 | 7.3323 |
| 0.0581 | 4300 | 7.3632 |
| 0.0595 | 4400 | 7.3342 |
| 0.0608 | 4500 | 7.3199 |
| 0.0622 | 4600 | 7.3332 |
| 0.0635 | 4700 | 7.2988 |
| 0.0649 | 4800 | 7.3495 |
| 0.0662 | 4900 | 7.2607 |
| 0.0676 | 5000 | 7.265 |
| 0.0689 | 5100 | 7.3003 |
| 0.0703 | 5200 | 7.2345 |
| 0.0716 | 5300 | 7.2833 |
| 0.0730 | 5400 | 7.2551 |
| 0.0743 | 5500 | 7.2355 |
| 0.0757 | 5600 | 7.2197 |
| 0.0770 | 5700 | 7.1716 |
| 0.0784 | 5800 | 7.2087 |
| 0.0797 | 5900 | 7.2112 |
| 0.0811 | 6000 | 7.2242 |
| 0.0824 | 6100 | 7.2274 |
| 0.0838 | 6200 | 7.1614 |
| 0.0851 | 6300 | 7.178 |
| 0.0865 | 6400 | 7.1488 |
| 0.0878 | 6500 | 7.1554 |
| 0.0892 | 6600 | 7.1598 |
| 0.0905 | 6700 | 7.1435 |
| 0.0919 | 6800 | 7.1935 |
| 0.0932 | 6900 | 7.2029 |
| 0.0946 | 7000 | 7.1339 |
| 0.0959 | 7100 | 7.1535 |
| 0.0973 | 7200 | 7.1551 |
| 0.0987 | 7300 | 7.1315 |
| 0.1000 | 7400 | 7.1762 |
| 0.1014 | 7500 | 7.143 |
| 0.1027 | 7600 | 7.1646 |
| 0.1041 | 7700 | 7.0627 |
| 0.1054 | 7800 | 7.1305 |
| 0.1068 | 7900 | 7.0544 |
| 0.1081 | 8000 | 7.1239 |
| 0.1095 | 8100 | 7.1719 |
| 0.1108 | 8200 | 7.076 |
| 0.1122 | 8300 | 7.0572 |
| 0.1135 | 8400 | 7.0625 |
| 0.1149 | 8500 | 7.1108 |
| 0.1162 | 8600 | 7.0755 |
| 0.1176 | 8700 | 7.0571 |
| 0.1189 | 8800 | 7.0745 |
| 0.1203 | 8900 | 7.0542 |
| 0.1216 | 9000 | 7.0892 |
| 0.1230 | 9100 | 7.0475 |
| 0.1243 | 9200 | 7.1386 |
| 0.1257 | 9300 | 7.0642 |
| 0.1270 | 9400 | 7.0968 |
| 0.1284 | 9500 | 7.0167 |
| 0.1297 | 9600 | 7.06 |
| 0.1311 | 9700 | 7.0398 |
| 0.1324 | 9800 | 6.9206 |
| 0.1338 | 9900 | 7.0453 |
| 0.1351 | 10000 | 7.0248 |
| 0.1365 | 10100 | 6.9912 |
| 0.1378 | 10200 | 6.9527 |
| 0.1392 | 10300 | 6.982 |
| 0.1405 | 10400 | 6.9526 |
| 0.1419 | 10500 | 6.9766 |
| 0.1432 | 10600 | 7.0039 |
| 0.1446 | 10700 | 7.0336 |
| 0.1459 | 10800 | 6.9593 |
| 0.1473 | 10900 | 7.0014 |
| 0.1487 | 11000 | 6.956 |
| 0.1500 | 11100 | 7.0147 |
| 0.1514 | 11200 | 7.0725 |
| 0.1527 | 11300 | 6.9998 |
| 0.1541 | 11400 | 7.016 |
| 0.1554 | 11500 | 6.9543 |
| 0.1568 | 11600 | 6.9661 |
| 0.1581 | 11700 | 7.0283 |
| 0.1595 | 11800 | 6.9542 |
| 0.1608 | 11900 | 6.9001 |
| 0.1622 | 12000 | 7.0087 |
| 0.1635 | 12100 | 6.9802 |
| 0.1649 | 12200 | 6.9321 |
| 0.1662 | 12300 | 6.939 |
| 0.1676 | 12400 | 6.9245 |
| 0.1689 | 12500 | 7.0119 |
| 0.1703 | 12600 | 6.9337 |
| 0.1716 | 12700 | 6.889 |
| 0.1730 | 12800 | 6.9475 |
| 0.1743 | 12900 | 6.9493 |
| 0.1757 | 13000 | 6.9676 |
| 0.1770 | 13100 | 6.9841 |
| 0.1784 | 13200 | 6.9705 |
| 0.1797 | 13300 | 6.9824 |
| 0.1811 | 13400 | 6.9591 |
| 0.1824 | 13500 | 6.9495 |
| 0.1838 | 13600 | 6.9184 |
| 0.1851 | 13700 | 6.9672 |
| 0.1865 | 13800 | 6.8777 |
| 0.1878 | 13900 | 6.9329 |
| 0.1892 | 14000 | 6.9289 |
| 0.1905 | 14100 | 7.0087 |
| 0.1919 | 14200 | 6.8774 |
| 0.1932 | 14300 | 6.9702 |
| 0.1946 | 14400 | 6.9593 |
| 0.1960 | 14500 | 6.906 |
| 0.1973 | 14600 | 6.9182 |
| 0.1987 | 14700 | 6.8959 |
| 0.2000 | 14800 | 6.9071 |
| 0.2014 | 14900 | 6.9425 |
| 0.2027 | 15000 | 6.8693 |
| 0.2041 | 15100 | 6.9177 |
| 0.2054 | 15200 | 6.9314 |
| 0.2068 | 15300 | 6.8845 |
| 0.2081 | 15400 | 6.8537 |
| 0.2095 | 15500 | 6.9147 |
| 0.2108 | 15600 | 6.8383 |
| 0.2122 | 15700 | 6.9094 |
| 0.2135 | 15800 | 6.8964 |
| 0.2149 | 15900 | 6.8568 |
| 0.2162 | 16000 | 6.8969 |
| 0.2176 | 16100 | 6.9299 |
| 0.2189 | 16200 | 6.8756 |
| 0.2203 | 16300 | 6.8966 |
| 0.2216 | 16400 | 6.939 |
| 0.2230 | 16500 | 6.8675 |
| 0.2243 | 16600 | 6.8635 |
| 0.2257 | 16700 | 6.8574 |
| 0.2270 | 16800 | 6.8506 |
| 0.2284 | 16900 | 6.8472 |
| 0.2297 | 17000 | 6.8619 |
| 0.2311 | 17100 | 6.8367 |
| 0.2324 | 17200 | 6.9259 |
| 0.2338 | 17300 | 6.8878 |
| 0.2351 | 17400 | 6.8356 |
| 0.2365 | 17500 | 6.8109 |
| 0.2378 | 17600 | 6.819 |
| 0.2392 | 17700 | 6.8587 |
| 0.2405 | 17800 | 6.8697 |
| 0.2419 | 17900 | 6.8772 |
| 0.2432 | 18000 | 6.8792 |
| 0.2446 | 18100 | 6.833 |
| 0.2460 | 18200 | 6.8876 |
| 0.2473 | 18300 | 6.8189 |
| 0.2487 | 18400 | 6.8884 |
| 0.2500 | 18500 | 6.8711 |
| 0.2514 | 18600 | 6.7725 |
| 0.2527 | 18700 | 6.8676 |
| 0.2541 | 18800 | 6.808 |
| 0.2554 | 18900 | 6.8564 |
| 0.2568 | 19000 | 6.8588 |
| 0.2581 | 19100 | 6.8501 |
| 0.2595 | 19200 | 6.8219 |
| 0.2608 | 19300 | 6.8175 |
| 0.2622 | 19400 | 6.8997 |
| 0.2635 | 19500 | 6.8199 |
| 0.2649 | 19600 | 6.8018 |
| 0.2662 | 19700 | 6.793 |
| 0.2676 | 19800 | 6.7399 |
| 0.2689 | 19900 | 6.8103 |
| 0.2703 | 20000 | 6.9001 |
| 0.2716 | 20100 | 6.783 |
| 0.2730 | 20200 | 6.8215 |
| 0.2743 | 20300 | 6.7769 |
| 0.2757 | 20400 | 6.845 |
| 0.2770 | 20500 | 6.8142 |
| 0.2784 | 20600 | 6.7481 |
| 0.2797 | 20700 | 6.904 |
| 0.2811 | 20800 | 6.8675 |
| 0.2824 | 20900 | 6.89 |
| 0.2838 | 21000 | 6.8667 |
| 0.2851 | 21100 | 6.749 |
| 0.2865 | 21200 | 6.872 |
| 0.2878 | 21300 | 6.7523 |
| 0.2892 | 21400 | 6.758 |
| 0.2905 | 21500 | 6.7681 |
| 0.2919 | 21600 | 6.7825 |
| 0.2933 | 21700 | 6.8364 |
| 0.2946 | 21800 | 6.8005 |
| 0.2960 | 21900 | 6.8361 |
| 0.2973 | 22000 | 6.7539 |
| 0.2987 | 22100 | 6.7623 |
| 0.3000 | 22200 | 6.7517 |
| 0.3014 | 22300 | 6.7892 |
| 0.3027 | 22400 | 6.6968 |
| 0.3041 | 22500 | 6.7873 |
| 0.3054 | 22600 | 6.838 |
| 0.3068 | 22700 | 6.833 |
| 0.3081 | 22800 | 6.7933 |
| 0.3095 | 22900 | 6.7481 |
| 0.3108 | 23000 | 6.7271 |
| 0.3122 | 23100 | 6.7163 |
| 0.3135 | 23200 | 6.7966 |
| 0.3149 | 23300 | 6.8368 |
| 0.3162 | 23400 | 6.8421 |
| 0.3176 | 23500 | 6.7855 |
| 0.3189 | 23600 | 6.7645 |
| 0.3203 | 23700 | 6.8296 |
| 0.3216 | 23800 | 6.7468 |
| 0.3230 | 23900 | 6.7604 |
| 0.3243 | 24000 | 6.7929 |
| 0.3257 | 24100 | 6.7689 |
| 0.3270 | 24200 | 6.7878 |
| 0.3284 | 24300 | 6.7126 |
| 0.3297 | 24400 | 6.6862 |
| 0.3311 | 24500 | 6.763 |
| 0.3324 | 24600 | 6.7559 |
| 0.3338 | 24700 | 6.7727 |
| 0.3351 | 24800 | 6.7062 |
| 0.3365 | 24900 | 6.7667 |
| 0.3378 | 25000 | 6.693 |
| 0.3392 | 25100 | 6.7147 |
| 0.3405 | 25200 | 6.7297 |
| 0.3419 | 25300 | 6.7853 |
| 0.3433 | 25400 | 6.785 |
| 0.3446 | 25500 | 6.7014 |
| 0.3460 | 25600 | 6.7242 |
| 0.3473 | 25700 | 6.7492 |
| 0.3487 | 25800 | 6.6989 |
| 0.3500 | 25900 | 6.672 |
| 0.3514 | 26000 | 6.6778 |
| 0.3527 | 26100 | 6.7596 |
| 0.3541 | 26200 | 6.7604 |
| 0.3554 | 26300 | 6.5954 |
| 0.3568 | 26400 | 6.6577 |
| 0.3581 | 26500 | 6.7412 |
| 0.3595 | 26600 | 6.7144 |
| 0.3608 | 26700 | 6.7136 |
| 0.3622 | 26800 | 6.7032 |
| 0.3635 | 26900 | 6.6934 |
| 0.3649 | 27000 | 6.8086 |
| 0.3662 | 27100 | 6.71 |
| 0.3676 | 27200 | 6.7704 |
| 0.3689 | 27300 | 6.6313 |
| 0.3703 | 27400 | 6.717 |
| 0.3716 | 27500 | 6.7133 |
| 0.3730 | 27600 | 6.7486 |
| 0.3743 | 27700 | 6.6821 |
| 0.3757 | 27800 | 6.7048 |
| 0.3770 | 27900 | 6.7223 |
| 0.3784 | 28000 | 6.7429 |
| 0.3797 | 28100 | 6.7134 |
| 0.3811 | 28200 | 6.7402 |
| 0.3824 | 28300 | 6.6841 |
| 0.3838 | 28400 | 6.738 |
| 0.3851 | 28500 | 6.6747 |
| 0.3865 | 28600 | 6.7045 |
| 0.3878 | 28700 | 6.7258 |
| 0.3892 | 28800 | 6.7096 |
| 0.3906 | 28900 | 6.7068 |
| 0.3919 | 29000 | 6.8006 |
| 0.3933 | 29100 | 6.7229 |
| 0.3946 | 29200 | 6.6395 |
| 0.3960 | 29300 | 6.6551 |
| 0.3973 | 29400 | 6.65 |
| 0.3987 | 29500 | 6.7203 |
| 0.4000 | 29600 | 6.659 |
| 0.4014 | 29700 | 6.6643 |
| 0.4027 | 29800 | 6.6619 |
| 0.4041 | 29900 | 6.7384 |
| 0.4054 | 30000 | 6.7994 |
| 0.4068 | 30100 | 6.6682 |
| 0.4081 | 30200 | 6.7452 |
| 0.4095 | 30300 | 6.625 |
| 0.4108 | 30400 | 6.6993 |
| 0.4122 | 30500 | 6.702 |
| 0.4135 | 30600 | 6.654 |
| 0.4149 | 30700 | 6.6563 |
| 0.4162 | 30800 | 6.6692 |
| 0.4176 | 30900 | 6.6547 |
| 0.4189 | 31000 | 6.6859 |
| 0.4203 | 31100 | 6.5456 |
| 0.4216 | 31200 | 6.6314 |
| 0.4230 | 31300 | 6.7221 |
| 0.4243 | 31400 | 6.6892 |
| 0.4257 | 31500 | 6.6671 |
| 0.4270 | 31600 | 6.6691 |
| 0.4284 | 31700 | 6.846 |
| 0.4297 | 31800 | 6.6761 |
| 0.4311 | 31900 | 6.7338 |
| 0.4324 | 32000 | 6.65 |
| 0.4338 | 32100 | 6.6716 |
| 0.4351 | 32200 | 6.694 |
| 0.4365 | 32300 | 6.6953 |
| 0.4378 | 32400 | 6.8016 |
| 0.4392 | 32500 | 6.6266 |
| 0.4406 | 32600 | 6.6896 |
| 0.4419 | 32700 | 6.7279 |
| 0.4433 | 32800 | 6.7346 |
| 0.4446 | 32900 | 6.6012 |
| 0.4460 | 33000 | 6.6795 |
| 0.4473 | 33100 | 6.7093 |
| 0.4487 | 33200 | 6.6804 |
| 0.4500 | 33300 | 6.65 |
| 0.4514 | 33400 | 6.705 |
| 0.4527 | 33500 | 6.6218 |
| 0.4541 | 33600 | 6.6393 |
| 0.4554 | 33700 | 6.69 |
| 0.4568 | 33800 | 6.6352 |
| 0.4581 | 33900 | 6.5862 |
| 0.4595 | 34000 | 6.5596 |
| 0.4608 | 34100 | 6.5927 |
| 0.4622 | 34200 | 6.5934 |
| 0.4635 | 34300 | 6.6412 |
| 0.4649 | 34400 | 6.7579 |
| 0.4662 | 34500 | 6.723 |
| 0.4676 | 34600 | 6.6634 |
| 0.4689 | 34700 | 6.5774 |
| 0.4703 | 34800 | 6.7144 |
| 0.4716 | 34900 | 6.5977 |
| 0.4730 | 35000 | 6.5791 |
| 0.4743 | 35100 | 6.5678 |
| 0.4757 | 35200 | 6.6226 |
| 0.4770 | 35300 | 6.6758 |
| 0.4784 | 35400 | 6.6791 |
| 0.4797 | 35500 | 6.6256 |
| 0.4811 | 35600 | 6.6707 |
| 0.4824 | 35700 | 6.6792 |
| 0.4838 | 35800 | 6.6337 |
| 0.4851 | 35900 | 6.7528 |
| 0.4865 | 36000 | 6.6277 |
| 0.4879 | 36100 | 6.7062 |
| 0.4892 | 36200 | 6.6413 |
| 0.4906 | 36300 | 6.643 |
| 0.4919 | 36400 | 6.6886 |
| 0.4933 | 36500 | 6.6273 |
| 0.4946 | 36600 | 6.6248 |
| 0.4960 | 36700 | 6.6166 |
| 0.4973 | 36800 | 6.7319 |
| 0.4987 | 36900 | 6.6325 |
| 0.5000 | 37000 | 6.6615 |
| 0.5014 | 37100 | 6.6962 |
| 0.5027 | 37200 | 6.6409 |
| 0.5041 | 37300 | 6.7092 |
| 0.5054 | 37400 | 6.5776 |
| 0.5068 | 37500 | 6.6661 |
| 0.5081 | 37600 | 6.605 |
| 0.5095 | 37700 | 6.6499 |
| 0.5108 | 37800 | 6.6626 |
| 0.5122 | 37900 | 6.6674 |
| 0.5135 | 38000 | 6.6125 |
| 0.5149 | 38100 | 6.6443 |
| 0.5162 | 38200 | 6.6957 |
| 0.5176 | 38300 | 6.5364 |
| 0.5189 | 38400 | 6.5796 |
| 0.5203 | 38500 | 6.5717 |
| 0.5216 | 38600 | 6.5697 |
| 0.5230 | 38700 | 6.6763 |
| 0.5243 | 38800 | 6.6214 |
| 0.5257 | 38900 | 6.6345 |
| 0.5270 | 39000 | 6.6536 |
| 0.5284 | 39100 | 6.591 |
| 0.5297 | 39200 | 6.5896 |
| 0.5311 | 39300 | 6.6633 |
| 0.5324 | 39400 | 6.7338 |
| 0.5338 | 39500 | 6.5586 |
| 0.5351 | 39600 | 6.6323 |
| 0.5365 | 39700 | 6.6563 |
| 0.5379 | 39800 | 6.6083 |
| 0.5392 | 39900 | 6.6002 |
| 0.5406 | 40000 | 6.5946 |
| 0.5419 | 40100 | 6.6664 |
| 0.5433 | 40200 | 6.5792 |
| 0.5446 | 40300 | 6.6031 |
| 0.5460 | 40400 | 6.5577 |
| 0.5473 | 40500 | 6.5857 |
| 0.5487 | 40600 | 6.5744 |
| 0.5500 | 40700 | 6.5541 |
| 0.5514 | 40800 | 6.702 |
| 0.5527 | 40900 | 6.6044 |
| 0.5541 | 41000 | 6.5603 |
| 0.5554 | 41100 | 6.565 |
| 0.5568 | 41200 | 6.6005 |
| 0.5581 | 41300 | 6.555 |
| 0.5595 | 41400 | 6.6081 |
| 0.5608 | 41500 | 6.6207 |
| 0.5622 | 41600 | 6.6522 |
| 0.5635 | 41700 | 6.5458 |
| 0.5649 | 41800 | 6.6064 |
| 0.5662 | 41900 | 6.5423 |
| 0.5676 | 42000 | 6.5808 |
| 0.5689 | 42100 | 6.7097 |
| 0.5703 | 42200 | 6.6089 |
| 0.5716 | 42300 | 6.7112 |
| 0.5730 | 42400 | 6.5389 |
| 0.5743 | 42500 | 6.5221 |
| 0.5757 | 42600 | 6.6074 |
| 0.5770 | 42700 | 6.5791 |
| 0.5784 | 42800 | 6.5936 |
| 0.5797 | 42900 | 6.5641 |
| 0.5811 | 43000 | 6.54 |
| 0.5824 | 43100 | 6.5362 |
| 0.5838 | 43200 | 6.5212 |
| 0.5852 | 43300 | 6.562 |
| 0.5865 | 43400 | 6.504 |
| 0.5879 | 43500 | 6.5234 |
| 0.5892 | 43600 | 6.5897 |
| 0.5906 | 43700 | 6.5014 |
| 0.5919 | 43800 | 6.6355 |
| 0.5933 | 43900 | 6.5833 |
| 0.5946 | 44000 | 6.5856 |
| 0.5960 | 44100 | 6.5507 |
| 0.5973 | 44200 | 6.6285 |
| 0.5987 | 44300 | 6.5778 |
| 0.6000 | 44400 | 6.59 |
| 0.6014 | 44500 | 6.6623 |
| 0.6027 | 44600 | 6.6402 |
| 0.6041 | 44700 | 6.589 |
| 0.6054 | 44800 | 6.5292 |
| 0.6068 | 44900 | 6.5621 |
| 0.6081 | 45000 | 6.5848 |
| 0.6095 | 45100 | 6.5743 |
| 0.6108 | 45200 | 6.5757 |
| 0.6122 | 45300 | 6.5166 |
| 0.6135 | 45400 | 6.5547 |
| 0.6149 | 45500 | 6.5087 |
| 0.6162 | 45600 | 6.5411 |
| 0.6176 | 45700 | 6.4707 |
| 0.6189 | 45800 | 6.5859 |
| 0.6203 | 45900 | 6.4987 |
| 0.6216 | 46000 | 6.6401 |
| 0.6230 | 46100 | 6.4804 |
| 0.6243 | 46200 | 6.5736 |
| 0.6257 | 46300 | 6.5887 |
| 0.6270 | 46400 | 6.5927 |
| 0.6284 | 46500 | 6.5571 |
| 0.6297 | 46600 | 6.556 |
| 0.6311 | 46700 | 6.503 |
| 0.6324 | 46800 | 6.587 |
| 0.6338 | 46900 | 6.5449 |
| 0.6352 | 47000 | 6.511 |
| 0.6365 | 47100 | 6.5148 |
| 0.6379 | 47200 | 6.5622 |
| 0.6392 | 47300 | 6.4928 |
| 0.6406 | 47400 | 6.555 |
| 0.6419 | 47500 | 6.5695 |
| 0.6433 | 47600 | 6.6136 |
| 0.6446 | 47700 | 6.5741 |
| 0.6460 | 47800 | 6.485 |
| 0.6473 | 47900 | 6.5418 |
| 0.6487 | 48000 | 6.5917 |
| 0.6500 | 48100 | 6.5553 |
| 0.6514 | 48200 | 6.6585 |
| 0.6527 | 48300 | 6.628 |
| 0.6541 | 48400 | 6.5494 |
| 0.6554 | 48500 | 6.5024 |
| 0.6568 | 48600 | 6.5283 |
| 0.6581 | 48700 | 6.5837 |
| 0.6595 | 48800 | 6.6447 |
| 0.6608 | 48900 | 6.5722 |
| 0.6622 | 49000 | 6.6493 |
| 0.6635 | 49100 | 6.5176 |
| 0.6649 | 49200 | 6.6154 |
| 0.6662 | 49300 | 6.4741 |
| 0.6676 | 49400 | 6.6054 |
| 0.6689 | 49500 | 6.5655 |
| 0.6703 | 49600 | 6.5484 |
| 0.6716 | 49700 | 6.5374 |
| 0.6730 | 49800 | 6.5894 |
| 0.6743 | 49900 | 6.4872 |
| 0.6757 | 50000 | 6.5193 |
| 0.6770 | 50100 | 6.369 |
| 0.6784 | 50200 | 6.5489 |
| 0.6797 | 50300 | 6.6689 |
| 0.6811 | 50400 | 6.5446 |
| 0.6825 | 50500 | 6.5719 |
| 0.6838 | 50600 | 6.6133 |
| 0.6852 | 50700 | 6.542 |
| 0.6865 | 50800 | 6.5595 |
| 0.6879 | 50900 | 6.4925 |
| 0.6892 | 51000 | 6.5256 |
| 0.6906 | 51100 | 6.5235 |
| 0.6919 | 51200 | 6.5254 |
| 0.6933 | 51300 | 6.4789 |
| 0.6946 | 51400 | 6.5811 |
| 0.6960 | 51500 | 6.542 |
| 0.6973 | 51600 | 6.5616 |
| 0.6987 | 51700 | 6.4711 |
| 0.7000 | 51800 | 6.5253 |
| 0.7014 | 51900 | 6.5302 |
| 0.7027 | 52000 | 6.6016 |
| 0.7041 | 52100 | 6.5745 |
| 0.7054 | 52200 | 6.616 |
| 0.7068 | 52300 | 6.5754 |
| 0.7081 | 52400 | 6.5775 |
| 0.7095 | 52500 | 6.4937 |
| 0.7108 | 52600 | 6.5871 |
| 0.7122 | 52700 | 6.5232 |
| 0.7135 | 52800 | 6.5317 |
| 0.7149 | 52900 | 6.4712 |
| 0.7162 | 53000 | 6.575 |
| 0.7176 | 53100 | 6.5826 |
| 0.7189 | 53200 | 6.411 |
| 0.7203 | 53300 | 6.5005 |
| 0.7216 | 53400 | 6.5052 |
| 0.7230 | 53500 | 6.5396 |
| 0.7243 | 53600 | 6.5062 |
| 0.7257 | 53700 | 6.4628 |
| 0.7270 | 53800 | 6.6049 |
| 0.7284 | 53900 | 6.48 |
| 0.7297 | 54000 | 6.6043 |
| 0.7311 | 54100 | 6.4534 |
| 0.7325 | 54200 | 6.4317 |
| 0.7338 | 54300 | 6.4979 |
| 0.7352 | 54400 | 6.6124 |
| 0.7365 | 54500 | 6.5964 |
| 0.7379 | 54600 | 6.475 |
| 0.7392 | 54700 | 6.5992 |
| 0.7406 | 54800 | 6.5138 |
| 0.7419 | 54900 | 6.6341 |
| 0.7433 | 55000 | 6.4336 |
| 0.7446 | 55100 | 6.5501 |
| 0.7460 | 55200 | 6.4973 |
| 0.7473 | 55300 | 6.4827 |
| 0.7487 | 55400 | 6.5459 |
| 0.7500 | 55500 | 6.471 |
| 0.7514 | 55600 | 6.5341 |
| 0.7527 | 55700 | 6.4344 |
| 0.7541 | 55800 | 6.6941 |
| 0.7554 | 55900 | 6.4856 |
| 0.7568 | 56000 | 6.4986 |
| 0.7581 | 56100 | 6.6032 |
| 0.7595 | 56200 | 6.4769 |
| 0.7608 | 56300 | 6.4915 |
| 0.7622 | 56400 | 6.5936 |
| 0.7635 | 56500 | 6.4872 |
| 0.7649 | 56600 | 6.5023 |
| 0.7662 | 56700 | 6.4641 |
| 0.7676 | 56800 | 6.5152 |
| 0.7689 | 56900 | 6.5421 |
| 0.7703 | 57000 | 6.5301 |
| 0.7716 | 57100 | 6.4144 |
| 0.7730 | 57200 | 6.5937 |
| 0.7743 | 57300 | 6.5222 |
| 0.7757 | 57400 | 6.4715 |
| 0.7770 | 57500 | 6.545 |
| 0.7784 | 57600 | 6.5088 |
| 0.7798 | 57700 | 6.6281 |
| 0.7811 | 57800 | 6.4805 |
| 0.7825 | 57900 | 6.5291 |
| 0.7838 | 58000 | 6.687 |
| 0.7852 | 58100 | 6.4391 |
| 0.7865 | 58200 | 6.5797 |
| 0.7879 | 58300 | 6.5248 |
| 0.7892 | 58400 | 6.4844 |
| 0.7906 | 58500 | 6.5358 |
| 0.7919 | 58600 | 6.5392 |
| 0.7933 | 58700 | 6.528 |
| 0.7946 | 58800 | 6.4534 |
| 0.7960 | 58900 | 6.5813 |
| 0.7973 | 59000 | 6.5447 |
| 0.7987 | 59100 | 6.4923 |
| 0.8000 | 59200 | 6.5267 |
| 0.8014 | 59300 | 6.5874 |
| 0.8027 | 59400 | 6.5121 |
| 0.8041 | 59500 | 6.4735 |
| 0.8054 | 59600 | 6.5215 |
| 0.8068 | 59700 | 6.556 |
| 0.8081 | 59800 | 6.5138 |
| 0.8095 | 59900 | 6.5183 |
| 0.8108 | 60000 | 6.5109 |
| 0.8122 | 60100 | 6.4328 |
| 0.8135 | 60200 | 6.5213 |
| 0.8149 | 60300 | 6.5595 |
| 0.8162 | 60400 | 6.4816 |
| 0.8176 | 60500 | 6.4968 |
| 0.8189 | 60600 | 6.4402 |
| 0.8203 | 60700 | 6.5293 |
| 0.8216 | 60800 | 6.4756 |
| 0.8230 | 60900 | 6.5606 |
| 0.8243 | 61000 | 6.5504 |
| 0.8257 | 61100 | 6.5294 |
| 0.8270 | 61200 | 6.5323 |
| 0.8284 | 61300 | 6.4996 |
| 0.8298 | 61400 | 6.4573 |
| 0.8311 | 61500 | 6.4867 |
| 0.8325 | 61600 | 6.5564 |
| 0.8338 | 61700 | 6.5622 |
| 0.8352 | 61800 | 6.5379 |
| 0.8365 | 61900 | 6.5351 |
| 0.8379 | 62000 | 6.4532 |
| 0.8392 | 62100 | 6.5494 |
| 0.8406 | 62200 | 6.5348 |
| 0.8419 | 62300 | 6.4821 |
| 0.8433 | 62400 | 6.4776 |
| 0.8446 | 62500 | 6.4212 |
| 0.8460 | 62600 | 6.4415 |
| 0.8473 | 62700 | 6.5892 |
| 0.8487 | 62800 | 6.5264 |
| 0.8500 | 62900 | 6.4653 |
| 0.8514 | 63000 | 6.4696 |
| 0.8527 | 63100 | 6.4663 |
| 0.8541 | 63200 | 6.5449 |
| 0.8554 | 63300 | 6.5057 |
| 0.8568 | 63400 | 6.5861 |
| 0.8581 | 63500 | 6.5672 |
| 0.8595 | 63600 | 6.5386 |
| 0.8608 | 63700 | 6.6146 |
| 0.8622 | 63800 | 6.5084 |
| 0.8635 | 63900 | 6.4613 |
| 0.8649 | 64000 | 6.4439 |
| 0.8662 | 64100 | 6.4719 |
| 0.8676 | 64200 | 6.5528 |
| 0.8689 | 64300 | 6.4415 |
| 0.8703 | 64400 | 6.5744 |
| 0.8716 | 64500 | 6.4752 |
| 0.8730 | 64600 | 6.4576 |
| 0.8743 | 64700 | 6.6003 |
| 0.8757 | 64800 | 6.5032 |
| 0.8771 | 64900 | 6.5095 |
| 0.8784 | 65000 | 6.5355 |
| 0.8798 | 65100 | 6.5429 |
| 0.8811 | 65200 | 6.4531 |
| 0.8825 | 65300 | 6.4813 |
| 0.8838 | 65400 | 6.4481 |
| 0.8852 | 65500 | 6.4387 |
| 0.8865 | 65600 | 6.4488 |
| 0.8879 | 65700 | 6.4652 |
| 0.8892 | 65800 | 6.5577 |
| 0.8906 | 65900 | 6.5483 |
| 0.8919 | 66000 | 6.5038 |
| 0.8933 | 66100 | 6.4359 |
| 0.8946 | 66200 | 6.5768 |
| 0.8960 | 66300 | 6.5042 |
| 0.8973 | 66400 | 6.4881 |
| 0.8987 | 66500 | 6.6159 |
| 0.9000 | 66600 | 6.5436 |
| 0.9014 | 66700 | 6.4862 |
| 0.9027 | 66800 | 6.3755 |
| 0.9041 | 66900 | 6.4245 |
| 0.9054 | 67000 | 6.4585 |
| 0.9068 | 67100 | 6.461 |
| 0.9081 | 67200 | 6.4796 |
| 0.9095 | 67300 | 6.4851 |
| 0.9108 | 67400 | 6.5083 |
| 0.9122 | 67500 | 6.6178 |
| 0.9135 | 67600 | 6.4687 |
| 0.9149 | 67700 | 6.4314 |
| 0.9162 | 67800 | 6.5557 |
| 0.9176 | 67900 | 6.4496 |
| 0.9189 | 68000 | 6.5808 |
| 0.9203 | 68100 | 6.3931 |
| 0.9216 | 68200 | 6.4423 |
| 0.9230 | 68300 | 6.4833 |
| 0.9243 | 68400 | 6.6081 |
| 0.9257 | 68500 | 6.4838 |
| 0.9271 | 68600 | 6.4108 |
| 0.9284 | 68700 | 6.4401 |
| 0.9298 | 68800 | 6.4756 |
| 0.9311 | 68900 | 6.4104 |
| 0.9325 | 69000 | 6.4449 |
| 0.9338 | 69100 | 6.5963 |
| 0.9352 | 69200 | 6.403 |
| 0.9365 | 69300 | 6.4618 |
| 0.9379 | 69400 | 6.6078 |
| 0.9392 | 69500 | 6.5498 |
| 0.9406 | 69600 | 6.4001 |
| 0.9419 | 69700 | 6.5358 |
| 0.9433 | 69800 | 6.3801 |
| 0.9446 | 69900 | 6.4694 |
| 0.9460 | 70000 | 6.382 |
| 0.9473 | 70100 | 6.534 |
| 0.9487 | 70200 | 6.4584 |
| 0.9500 | 70300 | 6.4675 |
| 0.9514 | 70400 | 6.4597 |
| 0.9527 | 70500 | 6.4955 |
| 0.9541 | 70600 | 6.4007 |
| 0.9554 | 70700 | 6.4553 |
| 0.9568 | 70800 | 6.575 |
| 0.9581 | 70900 | 6.5662 |
| 0.9595 | 71000 | 6.4833 |
| 0.9608 | 71100 | 6.5095 |
| 0.9622 | 71200 | 6.5039 |
| 0.9635 | 71300 | 6.5929 |
| 0.9649 | 71400 | 6.4759 |
| 0.9662 | 71500 | 6.4356 |
| 0.9676 | 71600 | 6.547 |
| 0.9689 | 71700 | 6.4707 |
| 0.9703 | 71800 | 6.4305 |
| 0.9716 | 71900 | 6.4988 |
| 0.9730 | 72000 | 6.4564 |
| 0.9744 | 72100 | 6.4538 |
| 0.9757 | 72200 | 6.49 |
| 0.9771 | 72300 | 6.4462 |
| 0.9784 | 72400 | 6.4843 |
| 0.9798 | 72500 | 6.6274 |
| 0.9811 | 72600 | 6.5567 |
| 0.9825 | 72700 | 6.4825 |
| 0.9838 | 72800 | 6.4677 |
| 0.9852 | 72900 | 6.5521 |
| 0.9865 | 73000 | 6.508 |
| 0.9879 | 73100 | 6.6502 |
| 0.9892 | 73200 | 6.3627 |
| 0.9906 | 73300 | 6.5945 |
| 0.9919 | 73400 | 6.4639 |
| 0.9933 | 73500 | 6.4663 |
| 0.9946 | 73600 | 6.4172 |
| 0.9960 | 73700 | 6.5404 |
| 0.9973 | 73800 | 6.4847 |
| 0.9987 | 73900 | 6.5225 |
@inproceedings{reimers-2019-sentence-bert,
title = "Sentence-BERT: Sentence Embeddings using Siamese BERT-Networks",
author = "Reimers, Nils and Gurevych, Iryna",
booktitle = "Proceedings of the 2019 Conference on Empirical Methods in Natural Language Processing",
month = "11",
year = "2019",
publisher = "Association for Computational Linguistics",
url = "https://arxiv.org/abs/1908.10084",
}
@online{kexuefm-8847,
title={CoSENT: A more efficient sentence vector scheme than Sentence-BERT},
author={Su Jianlin},
year={2022},
month={Jan},
url={https://kexue.fm/archives/8847},
}
Base model
sentence-transformers/all-MiniLM-L6-v2