Sentence Similarity
sentence-transformers
Safetensors
mpnet
feature-extraction
dense
Generated from Trainer
dataset_size:97930
loss:AnglELoss
text-embeddings-inference
Instructions to use CrosswaveOmega/DMRSQ-Utterance-To-Item-Transformer with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- sentence-transformers
How to use CrosswaveOmega/DMRSQ-Utterance-To-Item-Transformer with sentence-transformers:
from sentence_transformers import SentenceTransformer model = SentenceTransformer("CrosswaveOmega/DMRSQ-Utterance-To-Item-Transformer") sentences = [ "Yes, but online seems to be hit and miss as there are scams out there right now too.", "ITEM 31: In talking about a meaningful, emotionally charged experience, the subject talks in a detached way, as if he or she is not in touch with the feelings that should surround it.", "ITEM 57: The subject distances him or herself from his or her own feelings by speaking about him or herself in the second or third person a lot, as if the subject were talking about someone else.", "ITEM 145: Whenever saying something negative about him or herself, the subject rejects others' attempts to explore positive or more balanced views, and paradoxically becomes even more confirmed in his or her own worthlessness." ] embeddings = model.encode(sentences) similarities = model.similarity(embeddings, embeddings) print(similarities.shape) # [4, 4] - Notebooks
- Google Colab
- Kaggle
SentenceTransformer based on sentence-transformers/all-mpnet-base-v2
This is a sentence-transformers model finetuned from sentence-transformers/all-mpnet-base-v2. It maps sentences & paragraphs to a 768-dimensional dense vector space and can be used for semantic textual similarity, semantic search, paraphrase mining, text classification, clustering, and more.
The idea is to take in an utterance, and determine which DMRSQ items best fit it.
Model Details
Model Description
- Model Type: Sentence Transformer
- Base model: sentence-transformers/all-mpnet-base-v2
- Maximum Sequence Length: 384 tokens
- Output Dimensionality: 768 dimensions
- Similarity Function: Cosine Similarity
Model Sources
- Documentation: Sentence Transformers Documentation
- Repository: Sentence Transformers on GitHub
- Hugging Face: Sentence Transformers on Hugging Face
Full Model Architecture
SentenceTransformer(
(0): Transformer({'max_seq_length': 384, 'do_lower_case': False, 'architecture': 'MPNetModel'})
(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, 'pooling_mode_weightedmean_tokens': False, 'pooling_mode_lasttoken': False, 'include_prompt': True})
(2): Normalize()
)
Usage
Direct Usage (Sentence Transformers)
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 = [
'I am really struggling with my studies at the moment, I am so anxious that I keep putting off my essays and worrying all the time.',
'ITEM 77: When considering an emotionally important decision, the subject explores his or her own motives and limitations to arrive at a more fulfilling decision.',
'ITEM 84: The subject recites a litany of issues and problems but does not appear to be engaged in solving them, but rather prefers to complain.',
]
embeddings = model.encode(sentences)
print(embeddings.shape)
# [3, 768]
# Get the similarity scores for the embeddings
similarities = model.similarity(embeddings, embeddings)
print(similarities)
# tensor([[ 1.0000, 0.2863, -0.0609],
# [ 0.2863, 1.0000, -0.0028],
# [-0.0609, -0.0028, 1.0000]])
Training Details
Training Dataset
Trained using the PsyDefConv dataset (https://arxiv.org/abs/2512.15601v1).
Unnamed Dataset
- Size: 97,930 training samples
- Columns:
sentence1,sentence2, andscore - Approximate statistics based on the first 1000 samples:
sentence1 sentence2 score type string string float details - min: 3 tokens
- mean: 27.14 tokens
- max: 206 tokens
- min: 14 tokens
- mean: 42.05 tokens
- max: 81 tokens
- min: -1.0
- mean: -0.47
- max: 0.96
- Samples:
sentence1 sentence2 score I don't know. Do you hav e any ideas?ITEM 36: The subject describes emotional conflictual situations in which some of the feelings or dissatisfaction are channeled into creative or artistic activities. The resulting creative products - such as a poem or painting - give the subject a sense of mastery or relief from the conflicts.-0.1Good you understand meITEM 108: The subject cannot remember certain facts which would normally not be forgotten, such as a distressing incident, reflecting some uneasy feelings about the topic.-1.0its about me and my friend got fight for misunderstandingITEM 28: When telling an emotionally meaningful story, the subject states that he or she does not have specific feelings that one would expect, although the subject recognizes that he or she should feel something.-1.0 - Loss:
AnglELosswith these parameters:{ "scale": 20.0, "similarity_fct": "pairwise_angle_sim" }
Training Hyperparameters
Non-Default Hyperparameters
per_device_train_batch_size: 64num_train_epochs: 32learning_rate: 2e-05lr_scheduler_type: cosinebf16: Trueeval_strategy: stepswarmup_ratio: 0.1
All Hyperparameters
Click to expand
per_device_train_batch_size: 64num_train_epochs: 32max_steps: -1learning_rate: 2e-05lr_scheduler_type: cosinelr_scheduler_kwargs: Nonewarmup_steps: 0.1optim: adamw_torch_fusedoptim_args: Noneweight_decay: 0.0adam_beta1: 0.9adam_beta2: 0.999adam_epsilon: 1e-08optim_target_modules: Nonegradient_accumulation_steps: 1average_tokens_across_devices: Truemax_grad_norm: 1.0label_smoothing_factor: 0.0bf16: Truefp16: Falsebf16_full_eval: Falsefp16_full_eval: Falsetf32: Nonegradient_checkpointing: Falsegradient_checkpointing_kwargs: Nonetorch_compile: Falsetorch_compile_backend: Nonetorch_compile_mode: Noneuse_liger_kernel: Falseliger_kernel_config: Noneuse_cache: Falseneftune_noise_alpha: Nonetorch_empty_cache_steps: Noneauto_find_batch_size: Falselog_on_each_node: Truelogging_nan_inf_filter: Trueinclude_num_input_tokens_seen: nolog_level: passivelog_level_replica: warningdisable_tqdm: Falseproject: huggingfacetrackio_space_id: trackioeval_strategy: stepsper_device_eval_batch_size: 8prediction_loss_only: Trueeval_on_start: Falseeval_do_concat_batches: Trueeval_use_gather_object: Falseeval_accumulation_steps: Noneinclude_for_metrics: []batch_eval_metrics: Falsesave_only_model: Falsesave_on_each_node: Falseenable_jit_checkpoint: Falsepush_to_hub: Falsehub_private_repo: Nonehub_model_id: Nonehub_strategy: every_savehub_always_push: Falsehub_revision: Noneload_best_model_at_end: Falseignore_data_skip: Falserestore_callback_states_from_checkpoint: Falsefull_determinism: Falseseed: 42data_seed: Noneuse_cpu: Falseaccelerator_config: {'split_batches': False, 'dispatch_batches': None, 'even_batches': True, 'use_seedable_sampler': True, 'non_blocking': False, 'gradient_accumulation_kwargs': None}parallelism_config: Nonedataloader_drop_last: Falsedataloader_num_workers: 0dataloader_pin_memory: Truedataloader_persistent_workers: Falsedataloader_prefetch_factor: Noneremove_unused_columns: Truelabel_names: Nonetrain_sampling_strategy: randomlength_column_name: lengthddp_find_unused_parameters: Noneddp_bucket_cap_mb: Noneddp_broadcast_buffers: Falseddp_backend: Noneddp_timeout: 1800fsdp: []fsdp_config: {'min_num_params': 0, 'xla': False, 'xla_fsdp_v2': False, 'xla_fsdp_grad_ckpt': False}deepspeed: Nonedebug: []skip_memory_metrics: Truedo_predict: Falseresume_from_checkpoint: Nonewarmup_ratio: 0.1local_rank: -1prompts: Nonebatch_sampler: batch_samplermulti_dataset_batch_sampler: proportionalrouter_mapping: {}learning_rate_mapping: {}
Training Logs
Click to expand
| Epoch | Step | Training Loss |
|---|---|---|
| 0.0327 | 50 | 9.0286 |
| 0.0653 | 100 | 8.6644 |
| 0.0980 | 150 | 8.4482 |
| 0.1306 | 200 | 8.0420 |
| 0.1633 | 250 | 7.8877 |
| 0.1960 | 300 | 7.7193 |
| 0.2286 | 350 | 7.6281 |
| 0.2613 | 400 | 7.5958 |
| 0.2939 | 450 | 7.5480 |
| 0.3266 | 500 | 7.4803 |
| 0.3592 | 550 | 7.4053 |
| 0.3919 | 600 | 7.4259 |
| 0.4246 | 650 | 7.3823 |
| 0.4572 | 700 | 7.3625 |
| 0.4899 | 750 | 7.3457 |
| 0.5225 | 800 | 7.2602 |
| 0.5552 | 850 | 7.2397 |
| 0.5879 | 900 | 7.2235 |
| 0.6205 | 950 | 7.1831 |
| 0.6532 | 1000 | 7.1283 |
| 0.6858 | 1050 | 7.0789 |
| 0.7185 | 1100 | 7.0127 |
| 0.7511 | 1150 | 7.0097 |
| 0.7838 | 1200 | 6.9263 |
| 0.8165 | 1250 | 6.9291 |
| 0.8491 | 1300 | 6.9226 |
| 0.8818 | 1350 | 6.9457 |
| 0.9144 | 1400 | 6.9025 |
| 0.9471 | 1450 | 6.8800 |
| 0.9798 | 1500 | 6.9247 |
| 1.0124 | 1550 | 6.7813 |
| 1.0451 | 1600 | 6.8561 |
| 1.0777 | 1650 | 6.8159 |
| 1.1104 | 1700 | 6.7782 |
| 1.1430 | 1750 | 6.7164 |
| 1.1757 | 1800 | 6.6916 |
| 1.2084 | 1850 | 6.6451 |
| 1.2410 | 1900 | 6.6419 |
| 1.2737 | 1950 | 6.6067 |
| 1.3063 | 2000 | 6.5635 |
| 1.3390 | 2050 | 6.5494 |
| 1.3717 | 2100 | 6.4898 |
| 1.4043 | 2150 | 6.4935 |
| 1.4370 | 2200 | 6.3574 |
| 1.4696 | 2250 | 6.3831 |
| 1.5023 | 2300 | 6.2581 |
| 1.5349 | 2350 | 6.2736 |
| 1.5676 | 2400 | 6.2733 |
| 1.6003 | 2450 | 6.1686 |
| 1.6329 | 2500 | 6.1762 |
| 1.6656 | 2550 | 6.1364 |
| 1.6982 | 2600 | 6.1803 |
| 1.7309 | 2650 | 6.0832 |
| 1.7636 | 2700 | 6.1267 |
| 1.7962 | 2750 | 6.1240 |
| 1.8289 | 2800 | 6.1396 |
| 1.8615 | 2850 | 6.0066 |
| 1.8942 | 2900 | 6.0773 |
| 1.9268 | 2950 | 5.9386 |
| 1.9595 | 3000 | 6.0717 |
| 1.9922 | 3050 | 6.0051 |
| 2.0248 | 3100 | 5.8921 |
| 2.0575 | 3150 | 5.8049 |
| 2.0901 | 3200 | 5.9381 |
| 2.1228 | 3250 | 5.8070 |
| 2.1555 | 3300 | 5.8685 |
| 2.1881 | 3350 | 5.9179 |
| 2.2208 | 3400 | 6.1413 |
| 2.2534 | 3450 | 5.8098 |
| 2.2861 | 3500 | 5.8001 |
| 2.3187 | 3550 | 5.8884 |
| 2.3514 | 3600 | 6.0481 |
| 2.3841 | 3650 | 5.7075 |
| 2.4167 | 3700 | 5.7332 |
| 2.4494 | 3750 | 5.7707 |
| 2.4820 | 3800 | 5.6845 |
| 2.5147 | 3850 | 5.6999 |
| 2.5474 | 3900 | 5.7848 |
| 2.5800 | 3950 | 5.7242 |
| 2.6127 | 4000 | 5.7651 |
| 2.6453 | 4050 | 5.8526 |
| 2.6780 | 4100 | 5.5716 |
| 2.7106 | 4150 | 5.8108 |
| 2.7433 | 4200 | 5.7400 |
| 2.7760 | 4250 | 5.3879 |
| 2.8086 | 4300 | 5.7105 |
| 2.8413 | 4350 | 5.5207 |
| 2.8739 | 4400 | 5.5447 |
| 2.9066 | 4450 | 5.4288 |
| 2.9393 | 4500 | 5.5564 |
| 2.9719 | 4550 | 5.3389 |
| 3.0046 | 4600 | 4.9946 |
| 3.0372 | 4650 | 5.5276 |
| 3.0699 | 4700 | 5.3802 |
| 3.1025 | 4750 | 5.1807 |
| 3.1352 | 4800 | 5.3450 |
| 3.1679 | 4850 | 5.3487 |
| 3.2005 | 4900 | 5.0817 |
| 3.2332 | 4950 | 4.9707 |
| 3.2658 | 5000 | 4.9607 |
| 3.2985 | 5050 | 4.9008 |
| 3.3312 | 5100 | 5.0297 |
| 3.3638 | 5150 | 5.2010 |
| 3.3965 | 5200 | 4.8707 |
| 3.4291 | 5250 | 5.2481 |
| 3.4618 | 5300 | 5.0141 |
| 3.4944 | 5350 | 4.8756 |
| 3.5271 | 5400 | 5.0154 |
| 3.5598 | 5450 | 4.8147 |
| 3.5924 | 5500 | 5.0341 |
| 3.6251 | 5550 | 4.9787 |
| 3.6577 | 5600 | 4.7306 |
| 3.6904 | 5650 | 4.7687 |
| 3.7231 | 5700 | 4.6810 |
| 3.7557 | 5750 | 4.6770 |
| 3.7884 | 5800 | 4.8442 |
| 3.8210 | 5850 | 4.9817 |
| 3.8537 | 5900 | 4.8987 |
| 3.8863 | 5950 | 4.7971 |
| 3.9190 | 6000 | 4.7418 |
| 3.9517 | 6050 | 4.8572 |
| 3.9843 | 6100 | 4.6620 |
| 4.0170 | 6150 | 4.4533 |
| 4.0496 | 6200 | 4.2484 |
| 4.0823 | 6250 | 4.3388 |
| 4.1150 | 6300 | 4.5170 |
| 4.1476 | 6350 | 4.3652 |
| 4.1803 | 6400 | 4.3752 |
| 4.2129 | 6450 | 4.5958 |
| 4.2456 | 6500 | 4.7159 |
| 4.2782 | 6550 | 4.3793 |
| 4.3109 | 6600 | 4.3346 |
| 4.3436 | 6650 | 4.4930 |
| 4.3762 | 6700 | 4.6090 |
| 4.4089 | 6750 | 4.3612 |
| 4.4415 | 6800 | 4.3246 |
| 4.4742 | 6850 | 4.2361 |
| 4.5069 | 6900 | 4.5913 |
| 4.5395 | 6950 | 4.4233 |
| 4.5722 | 7000 | 4.1146 |
| 4.6048 | 7050 | 4.2286 |
| 4.6375 | 7100 | 4.2269 |
| 4.6702 | 7150 | 4.3150 |
| 4.7028 | 7200 | 4.1564 |
| 4.7355 | 7250 | 3.9239 |
| 4.7681 | 7300 | 4.0376 |
| 4.8008 | 7350 | 4.2173 |
| 4.8334 | 7400 | 3.9518 |
| 4.8661 | 7450 | 4.2801 |
| 4.8988 | 7500 | 4.2634 |
| 4.9314 | 7550 | 4.3524 |
| 4.9641 | 7600 | 3.9455 |
| 4.9967 | 7650 | 3.9870 |
| 5.0294 | 7700 | 4.0884 |
| 5.0621 | 7750 | 3.7905 |
| 5.0947 | 7800 | 4.1414 |
| 5.1274 | 7850 | 4.0200 |
| 5.1600 | 7900 | 3.9873 |
| 5.1927 | 7950 | 4.0775 |
| 5.2253 | 8000 | 3.7879 |
| 5.2580 | 8050 | 3.8040 |
| 5.2907 | 8100 | 4.1354 |
| 5.3233 | 8150 | 3.6614 |
| 5.3560 | 8200 | 3.8756 |
| 5.3886 | 8250 | 3.6846 |
| 5.4213 | 8300 | 3.7679 |
| 5.4540 | 8350 | 3.6936 |
| 5.4866 | 8400 | 3.4698 |
| 5.5193 | 8450 | 3.7179 |
| 5.5519 | 8500 | 4.0484 |
| 5.5846 | 8550 | 3.9596 |
| 5.6172 | 8600 | 3.7064 |
| 5.6499 | 8650 | 3.8859 |
| 5.6826 | 8700 | 3.9497 |
| 5.7152 | 8750 | 3.8719 |
| 5.7479 | 8800 | 3.9762 |
| 5.7805 | 8850 | 3.6275 |
| 5.8132 | 8900 | 3.5444 |
| 5.8459 | 8950 | 3.9623 |
| 5.8785 | 9000 | 3.7250 |
| 5.9112 | 9050 | 3.4245 |
| 5.9438 | 9100 | 3.8240 |
| 5.9765 | 9150 | 3.5984 |
| 6.0091 | 9200 | 3.6267 |
| 6.0418 | 9250 | 3.5863 |
| 6.0745 | 9300 | 3.4977 |
| 6.1071 | 9350 | 3.3482 |
| 6.1398 | 9400 | 3.3381 |
| 6.1724 | 9450 | 3.7424 |
| 6.2051 | 9500 | 3.9227 |
| 6.2378 | 9550 | 3.3812 |
| 6.2704 | 9600 | 3.4736 |
| 6.3031 | 9650 | 3.3770 |
| 6.3357 | 9700 | 3.7019 |
| 6.3684 | 9750 | 3.4811 |
| 6.4010 | 9800 | 3.6467 |
| 6.4337 | 9850 | 4.2202 |
| 6.4664 | 9900 | 3.5151 |
| 6.4990 | 9950 | 3.4188 |
| 6.5317 | 10000 | 3.5108 |
| 6.5643 | 10050 | 3.3860 |
| 6.5970 | 10100 | 3.5434 |
| 6.6297 | 10150 | 3.1989 |
| 6.6623 | 10200 | 3.9570 |
| 6.6950 | 10250 | 3.3240 |
| 6.7276 | 10300 | 3.5816 |
| 6.7603 | 10350 | 3.4212 |
| 6.7929 | 10400 | 3.8962 |
| 6.8256 | 10450 | 3.7376 |
| 6.8583 | 10500 | 3.2337 |
| 6.8909 | 10550 | 3.9117 |
| 6.9236 | 10600 | 3.4673 |
| 6.9562 | 10650 | 3.2873 |
| 6.9889 | 10700 | 3.4152 |
| 7.0216 | 10750 | 3.0089 |
| 7.0542 | 10800 | 3.2337 |
| 7.0869 | 10850 | 3.1476 |
| 7.1195 | 10900 | 3.2843 |
| 7.1522 | 10950 | 3.1003 |
| 7.1848 | 11000 | 3.1259 |
| 7.2175 | 11050 | 3.6063 |
| 7.2502 | 11100 | 3.2024 |
| 7.2828 | 11150 | 3.0674 |
| 7.3155 | 11200 | 3.0912 |
| 7.3481 | 11250 | 3.2739 |
| 7.3808 | 11300 | 3.1656 |
| 7.4135 | 11350 | 3.2524 |
| 7.4461 | 11400 | 3.6492 |
| 7.4788 | 11450 | 3.0780 |
| 7.5114 | 11500 | 3.8293 |
| 7.5441 | 11550 | 3.3781 |
| 7.5767 | 11600 | 3.1099 |
| 7.6094 | 11650 | 3.3728 |
| 7.6421 | 11700 | 3.1408 |
| 7.6747 | 11750 | 3.5507 |
| 7.7074 | 11800 | 3.0614 |
| 7.7400 | 11850 | 3.5971 |
| 7.7727 | 11900 | 3.3297 |
| 7.8054 | 11950 | 3.3595 |
| 7.8380 | 12000 | 3.2790 |
| 7.8707 | 12050 | 3.8074 |
| 7.9033 | 12100 | 2.9731 |
| 7.9360 | 12150 | 2.9645 |
| 7.9686 | 12200 | 3.0973 |
| 8.0013 | 12250 | 3.2855 |
| 8.0340 | 12300 | 3.0362 |
| 8.0666 | 12350 | 2.8836 |
| 8.0993 | 12400 | 3.2710 |
| 8.1319 | 12450 | 3.2857 |
| 8.1646 | 12500 | 3.5436 |
| 8.1973 | 12550 | 3.0281 |
| 8.2299 | 12600 | 3.2262 |
| 8.2626 | 12650 | 3.0665 |
| 8.2952 | 12700 | 3.1259 |
| 8.3279 | 12750 | 2.7805 |
| 8.3605 | 12800 | 3.3477 |
| 8.3932 | 12850 | 3.1317 |
| 8.4259 | 12900 | 3.1003 |
| 8.4585 | 12950 | 2.8282 |
| 8.4912 | 13000 | 2.8609 |
| 8.5238 | 13050 | 2.8478 |
| 8.5565 | 13100 | 3.2137 |
| 8.5892 | 13150 | 3.3437 |
| 8.6218 | 13200 | 2.9976 |
| 8.6545 | 13250 | 3.0456 |
| 8.6871 | 13300 | 2.9759 |
| 8.7198 | 13350 | 3.0762 |
| 8.7524 | 13400 | 3.2567 |
| 8.7851 | 13450 | 2.8913 |
| 8.8178 | 13500 | 2.8575 |
| 8.8504 | 13550 | 2.9115 |
| 8.8831 | 13600 | 2.8438 |
| 8.9157 | 13650 | 3.4465 |
| 8.9484 | 13700 | 3.2220 |
| 8.9811 | 13750 | 3.3776 |
| 9.0137 | 13800 | 2.9947 |
| 9.0464 | 13850 | 2.6348 |
| 9.0790 | 13900 | 2.7870 |
| 9.1117 | 13950 | 3.1431 |
| 9.1444 | 14000 | 2.7580 |
| 9.1770 | 14050 | 3.0923 |
| 9.2097 | 14100 | 2.7125 |
| 9.2423 | 14150 | 3.0405 |
| 9.2750 | 14200 | 2.8070 |
| 9.3076 | 14250 | 2.8188 |
| 9.3403 | 14300 | 2.9717 |
| 9.3730 | 14350 | 3.3031 |
| 9.4056 | 14400 | 3.4510 |
| 9.4383 | 14450 | 2.8420 |
| 9.4709 | 14500 | 2.7343 |
| 9.5036 | 14550 | 3.1293 |
| 9.5363 | 14600 | 3.1140 |
| 9.5689 | 14650 | 3.1765 |
| 9.6016 | 14700 | 2.9057 |
| 9.6342 | 14750 | 2.7985 |
| 9.6669 | 14800 | 2.8251 |
| 9.6995 | 14850 | 2.9817 |
| 9.7322 | 14900 | 2.8598 |
| 9.7649 | 14950 | 2.7754 |
| 9.7975 | 15000 | 3.0566 |
| 9.8302 | 15050 | 2.9721 |
| 9.8628 | 15100 | 2.5517 |
| 9.8955 | 15150 | 2.8098 |
| 9.9282 | 15200 | 2.9832 |
| 9.9608 | 15250 | 3.0638 |
| 9.9935 | 15300 | 3.1261 |
| 10.0261 | 15350 | 2.7489 |
| 10.0588 | 15400 | 2.9901 |
| 10.0914 | 15450 | 2.7472 |
| 10.1241 | 15500 | 2.7541 |
| 10.1568 | 15550 | 2.7685 |
| 10.1894 | 15600 | 2.5877 |
| 10.2221 | 15650 | 2.7921 |
| 10.2547 | 15700 | 2.8734 |
| 10.2874 | 15750 | 3.1077 |
| 10.3201 | 15800 | 2.8413 |
| 10.3527 | 15850 | 2.7016 |
| 10.3854 | 15900 | 2.7277 |
| 10.4180 | 15950 | 2.6911 |
| 10.4507 | 16000 | 2.4181 |
| 10.4833 | 16050 | 2.7372 |
| 10.5160 | 16100 | 3.3660 |
| 10.5487 | 16150 | 2.7253 |
| 10.5813 | 16200 | 3.0624 |
| 10.6140 | 16250 | 2.6498 |
| 10.6466 | 16300 | 3.2688 |
| 10.6793 | 16350 | 2.6105 |
| 10.7120 | 16400 | 2.6413 |
| 10.7446 | 16450 | 2.7669 |
| 10.7773 | 16500 | 2.6641 |
| 10.8099 | 16550 | 3.2430 |
| 10.8426 | 16600 | 2.6195 |
| 10.8752 | 16650 | 2.6909 |
| 10.9079 | 16700 | 2.5267 |
| 10.9406 | 16750 | 2.7383 |
| 10.9732 | 16800 | 2.8003 |
| 11.0059 | 16850 | 2.7182 |
| 11.0385 | 16900 | 2.3434 |
| 11.0712 | 16950 | 2.4962 |
| 11.1039 | 17000 | 2.3787 |
| 11.1365 | 17050 | 2.4857 |
| 11.1692 | 17100 | 2.4772 |
| 11.2018 | 17150 | 2.6334 |
| 11.2345 | 17200 | 2.6987 |
| 11.2671 | 17250 | 2.9109 |
| 11.2998 | 17300 | 2.4420 |
| 11.3325 | 17350 | 2.8495 |
| 11.3651 | 17400 | 2.8956 |
| 11.3978 | 17450 | 2.3482 |
| 11.4304 | 17500 | 2.4971 |
| 11.4631 | 17550 | 2.4384 |
| 11.4958 | 17600 | 2.5417 |
| 11.5284 | 17650 | 2.7535 |
| 11.5611 | 17700 | 2.3815 |
| 11.5937 | 17750 | 2.8631 |
| 11.6264 | 17800 | 2.3544 |
| 11.6590 | 17850 | 2.8596 |
| 11.6917 | 17900 | 2.7100 |
| 11.7244 | 17950 | 2.5971 |
| 11.7570 | 18000 | 2.5054 |
| 11.7897 | 18050 | 2.6495 |
| 11.8223 | 18100 | 2.9272 |
| 11.8550 | 18150 | 2.6058 |
| 11.8877 | 18200 | 2.9791 |
| 11.9203 | 18250 | 2.7122 |
| 11.9530 | 18300 | 2.7005 |
| 11.9856 | 18350 | 2.7432 |
| 12.0183 | 18400 | 2.5222 |
| 12.0509 | 18450 | 2.4689 |
| 12.0836 | 18500 | 2.2014 |
| 12.1163 | 18550 | 2.4980 |
| 12.1489 | 18600 | 2.6785 |
| 12.1816 | 18650 | 2.6154 |
| 12.2142 | 18700 | 2.3773 |
| 12.2469 | 18750 | 2.4081 |
| 12.2796 | 18800 | 2.6466 |
| 12.3122 | 18850 | 2.5145 |
| 12.3449 | 18900 | 2.5929 |
| 12.3775 | 18950 | 2.3862 |
| 12.4102 | 19000 | 2.4002 |
| 12.4428 | 19050 | 2.5694 |
| 12.4755 | 19100 | 2.4865 |
| 12.5082 | 19150 | 2.5911 |
| 12.5408 | 19200 | 2.4595 |
| 12.5735 | 19250 | 2.4827 |
| 12.6061 | 19300 | 2.4510 |
| 12.6388 | 19350 | 2.3470 |
| 12.6715 | 19400 | 2.5575 |
| 12.7041 | 19450 | 2.7434 |
| 12.7368 | 19500 | 2.2912 |
| 12.7694 | 19550 | 2.5389 |
| 12.8021 | 19600 | 2.3614 |
| 12.8347 | 19650 | 2.7248 |
| 12.8674 | 19700 | 2.5501 |
| 12.9001 | 19750 | 2.6211 |
| 12.9327 | 19800 | 2.4423 |
| 12.9654 | 19850 | 2.9040 |
| 12.9980 | 19900 | 2.2045 |
| 13.0307 | 19950 | 2.2205 |
| 13.0634 | 20000 | 2.4343 |
| 13.0960 | 20050 | 2.0991 |
| 13.1287 | 20100 | 2.2938 |
| 13.1613 | 20150 | 2.4924 |
| 13.1940 | 20200 | 2.2811 |
| 13.2266 | 20250 | 2.1915 |
| 13.2593 | 20300 | 2.4335 |
| 13.2920 | 20350 | 2.3268 |
| 13.3246 | 20400 | 2.4420 |
| 13.3573 | 20450 | 2.3000 |
| 13.3899 | 20500 | 2.3566 |
| 13.4226 | 20550 | 2.2889 |
| 13.4553 | 20600 | 2.5217 |
| 13.4879 | 20650 | 2.4200 |
| 13.5206 | 20700 | 2.3375 |
| 13.5532 | 20750 | 2.8099 |
| 13.5859 | 20800 | 2.3955 |
| 13.6185 | 20850 | 2.3459 |
| 13.6512 | 20900 | 2.3745 |
| 13.6839 | 20950 | 2.4857 |
| 13.7165 | 21000 | 2.6480 |
| 13.7492 | 21050 | 2.5800 |
| 13.7818 | 21100 | 2.7418 |
| 13.8145 | 21150 | 2.4374 |
| 13.8472 | 21200 | 2.4302 |
| 13.8798 | 21250 | 2.3211 |
| 13.9125 | 21300 | 2.3181 |
| 13.9451 | 21350 | 2.4256 |
| 13.9778 | 21400 | 2.3024 |
| 14.0105 | 21450 | 2.2549 |
| 14.0431 | 21500 | 2.3100 |
| 14.0758 | 21550 | 2.0652 |
| 14.1084 | 21600 | 2.1677 |
| 14.1411 | 21650 | 2.4389 |
| 14.1737 | 21700 | 2.2917 |
| 14.2064 | 21750 | 2.0271 |
| 14.2391 | 21800 | 2.2715 |
| 14.2717 | 21850 | 2.3162 |
| 14.3044 | 21900 | 2.4586 |
| 14.3370 | 21950 | 2.2283 |
| 14.3697 | 22000 | 2.1602 |
| 14.4024 | 22050 | 2.0790 |
| 14.4350 | 22100 | 2.5350 |
| 14.4677 | 22150 | 2.1997 |
| 14.5003 | 22200 | 2.2950 |
| 14.5330 | 22250 | 2.2393 |
| 14.5656 | 22300 | 2.2792 |
| 14.5983 | 22350 | 2.2812 |
| 14.6310 | 22400 | 2.3468 |
| 14.6636 | 22450 | 2.4226 |
| 14.6963 | 22500 | 2.2243 |
| 14.7289 | 22550 | 2.2009 |
| 14.7616 | 22600 | 2.4433 |
| 14.7943 | 22650 | 2.3105 |
| 14.8269 | 22700 | 2.1217 |
| 14.8596 | 22750 | 2.3712 |
| 14.8922 | 22800 | 2.3294 |
| 14.9249 | 22850 | 2.6271 |
| 14.9575 | 22900 | 2.0722 |
| 14.9902 | 22950 | 2.2202 |
| 15.0229 | 23000 | 1.9338 |
| 15.0555 | 23050 | 2.3543 |
| 15.0882 | 23100 | 1.9807 |
| 15.1208 | 23150 | 1.8918 |
| 15.1535 | 23200 | 2.2189 |
| 15.1862 | 23250 | 2.3504 |
| 15.2188 | 23300 | 2.2202 |
| 15.2515 | 23350 | 2.0904 |
| 15.2841 | 23400 | 1.9969 |
| 15.3168 | 23450 | 2.3871 |
| 15.3494 | 23500 | 2.1765 |
| 15.3821 | 23550 | 2.3617 |
| 15.4148 | 23600 | 2.2702 |
| 15.4474 | 23650 | 2.1637 |
| 15.4801 | 23700 | 2.2266 |
| 15.5127 | 23750 | 2.2683 |
| 15.5454 | 23800 | 2.2319 |
| 15.5781 | 23850 | 2.1214 |
| 15.6107 | 23900 | 2.2746 |
| 15.6434 | 23950 | 2.0026 |
| 15.6760 | 24000 | 1.9858 |
| 15.7087 | 24050 | 2.3871 |
| 15.7413 | 24100 | 2.1308 |
| 15.7740 | 24150 | 2.2342 |
| 15.8067 | 24200 | 2.0566 |
| 15.8393 | 24250 | 2.2963 |
| 15.8720 | 24300 | 2.2808 |
| 15.9046 | 24350 | 2.0946 |
| 15.9373 | 24400 | 2.2421 |
| 15.9700 | 24450 | 2.0743 |
| 16.0026 | 24500 | 2.1031 |
| 16.0353 | 24550 | 1.9651 |
| 16.0679 | 24600 | 1.8037 |
| 16.1006 | 24650 | 2.0392 |
| 16.1332 | 24700 | 2.1911 |
| 16.1659 | 24750 | 2.2293 |
| 16.1986 | 24800 | 2.1284 |
| 16.2312 | 24850 | 2.0906 |
| 16.2639 | 24900 | 1.9106 |
| 16.2965 | 24950 | 1.9963 |
| 16.3292 | 25000 | 2.1065 |
| 16.3619 | 25050 | 2.1713 |
| 16.3945 | 25100 | 1.9761 |
| 16.4272 | 25150 | 2.2876 |
| 16.4598 | 25200 | 2.2098 |
| 16.4925 | 25250 | 2.2109 |
| 16.5251 | 25300 | 1.9847 |
| 16.5578 | 25350 | 2.1614 |
| 16.5905 | 25400 | 2.1328 |
| 16.6231 | 25450 | 2.1855 |
| 16.6558 | 25500 | 2.0902 |
| 16.6884 | 25550 | 2.1599 |
| 16.7211 | 25600 | 1.9535 |
| 16.7538 | 25650 | 2.0449 |
| 16.7864 | 25700 | 2.2589 |
| 16.8191 | 25750 | 2.1057 |
| 16.8517 | 25800 | 2.1730 |
| 16.8844 | 25850 | 2.0112 |
| 16.9170 | 25900 | 2.2679 |
| 16.9497 | 25950 | 2.2358 |
| 16.9824 | 26000 | 2.0218 |
| 17.0150 | 26050 | 2.0626 |
| 17.0477 | 26100 | 2.2664 |
| 17.0803 | 26150 | 2.0680 |
| 17.1130 | 26200 | 1.7651 |
| 17.1457 | 26250 | 1.9711 |
| 17.1783 | 26300 | 2.1895 |
| 17.2110 | 26350 | 1.7760 |
| 17.2436 | 26400 | 2.1259 |
| 17.2763 | 26450 | 1.9074 |
| 17.3089 | 26500 | 2.4010 |
| 17.3416 | 26550 | 1.9644 |
| 17.3743 | 26600 | 1.7472 |
| 17.4069 | 26650 | 2.1776 |
| 17.4396 | 26700 | 1.7590 |
| 17.4722 | 26750 | 2.1171 |
| 17.5049 | 26800 | 1.9798 |
| 17.5376 | 26850 | 1.9788 |
| 17.5702 | 26900 | 2.1596 |
| 17.6029 | 26950 | 2.1677 |
| 17.6355 | 27000 | 2.0866 |
| 17.6682 | 27050 | 1.8937 |
| 17.7008 | 27100 | 2.1016 |
| 17.7335 | 27150 | 2.1834 |
| 17.7662 | 27200 | 2.1638 |
| 17.7988 | 27250 | 2.0891 |
| 17.8315 | 27300 | 1.8167 |
| 17.8641 | 27350 | 2.2649 |
| 17.8968 | 27400 | 1.8734 |
| 17.9295 | 27450 | 1.8578 |
| 17.9621 | 27500 | 1.9935 |
| 17.9948 | 27550 | 2.1817 |
| 18.0274 | 27600 | 1.8428 |
| 18.0601 | 27650 | 1.8994 |
| 18.0927 | 27700 | 2.1134 |
| 18.1254 | 27750 | 1.7124 |
| 18.1581 | 27800 | 1.9190 |
| 18.1907 | 27850 | 2.0476 |
| 18.2234 | 27900 | 1.9766 |
| 18.2560 | 27950 | 1.9530 |
| 18.2887 | 28000 | 2.0143 |
| 18.3214 | 28050 | 2.0919 |
| 18.3540 | 28100 | 1.8905 |
| 18.3867 | 28150 | 1.9557 |
| 18.4193 | 28200 | 2.0128 |
| 18.4520 | 28250 | 1.8608 |
| 18.4847 | 28300 | 1.7412 |
| 18.5173 | 28350 | 1.6939 |
| 18.5500 | 28400 | 2.0228 |
| 18.5826 | 28450 | 1.9211 |
| 18.6153 | 28500 | 2.0674 |
| 18.6479 | 28550 | 1.8358 |
| 18.6806 | 28600 | 2.1006 |
| 18.7133 | 28650 | 1.9139 |
| 18.7459 | 28700 | 1.8472 |
| 18.7786 | 28750 | 1.9808 |
| 18.8112 | 28800 | 1.8494 |
| 18.8439 | 28850 | 1.9636 |
| 18.8766 | 28900 | 1.8708 |
| 18.9092 | 28950 | 1.7714 |
| 18.9419 | 29000 | 1.9487 |
| 18.9745 | 29050 | 2.1460 |
| 19.0072 | 29100 | 1.9752 |
| 19.0398 | 29150 | 2.0633 |
| 19.0725 | 29200 | 2.1856 |
| 19.1052 | 29250 | 1.9137 |
| 19.1378 | 29300 | 1.8796 |
| 19.1705 | 29350 | 1.7385 |
| 19.2031 | 29400 | 1.7861 |
| 19.2358 | 29450 | 1.7297 |
| 19.2685 | 29500 | 1.9150 |
| 19.3011 | 29550 | 1.9047 |
| 19.3338 | 29600 | 2.0195 |
| 19.3664 | 29650 | 1.8167 |
| 19.3991 | 29700 | 1.9342 |
| 19.4317 | 29750 | 1.8338 |
| 19.4644 | 29800 | 1.7466 |
| 19.4971 | 29850 | 1.8973 |
| 19.5297 | 29900 | 1.7393 |
| 19.5624 | 29950 | 1.9313 |
| 19.5950 | 30000 | 1.8565 |
| 19.6277 | 30050 | 2.0979 |
| 19.6604 | 30100 | 1.9298 |
| 19.6930 | 30150 | 1.8885 |
| 19.7257 | 30200 | 1.7616 |
| 19.7583 | 30250 | 1.7516 |
| 19.7910 | 30300 | 1.9562 |
| 19.8236 | 30350 | 1.9194 |
| 19.8563 | 30400 | 2.0395 |
| 19.8890 | 30450 | 1.7662 |
| 19.9216 | 30500 | 1.9583 |
| 19.9543 | 30550 | 2.0188 |
| 19.9869 | 30600 | 1.8229 |
| 20.0196 | 30650 | 1.6464 |
| 20.0523 | 30700 | 1.9959 |
| 20.0849 | 30750 | 1.6206 |
| 20.1176 | 30800 | 1.7450 |
| 20.1502 | 30850 | 1.7764 |
| 20.1829 | 30900 | 1.6936 |
| 20.2155 | 30950 | 1.6909 |
| 20.2482 | 31000 | 1.9737 |
| 20.2809 | 31050 | 1.8326 |
| 20.3135 | 31100 | 1.7103 |
| 20.3462 | 31150 | 1.7439 |
| 20.3788 | 31200 | 1.8374 |
| 20.4115 | 31250 | 1.6792 |
| 20.4442 | 31300 | 1.9449 |
| 20.4768 | 31350 | 1.8734 |
| 20.5095 | 31400 | 1.6430 |
| 20.5421 | 31450 | 2.0952 |
| 20.5748 | 31500 | 1.9891 |
| 20.6074 | 31550 | 1.7573 |
| 20.6401 | 31600 | 1.9143 |
| 20.6728 | 31650 | 1.6937 |
| 20.7054 | 31700 | 1.9446 |
| 20.7381 | 31750 | 1.9838 |
| 20.7707 | 31800 | 1.7570 |
| 20.8034 | 31850 | 1.8097 |
| 20.8361 | 31900 | 1.9721 |
| 20.8687 | 31950 | 1.8207 |
| 20.9014 | 32000 | 1.7857 |
| 20.9340 | 32050 | 1.7605 |
| 20.9667 | 32100 | 1.8348 |
| 20.9993 | 32150 | 1.6633 |
| 21.0320 | 32200 | 1.4270 |
| 21.0647 | 32250 | 1.8491 |
| 21.0973 | 32300 | 1.6216 |
| 21.1300 | 32350 | 1.9579 |
| 21.1626 | 32400 | 1.6637 |
| 21.1953 | 32450 | 1.5366 |
| 21.2280 | 32500 | 1.7831 |
| 21.2606 | 32550 | 1.9055 |
| 21.2933 | 32600 | 1.8531 |
| 21.3259 | 32650 | 1.3591 |
| 21.3586 | 32700 | 1.8334 |
| 21.3912 | 32750 | 1.8504 |
| 21.4239 | 32800 | 1.9743 |
| 21.4566 | 32850 | 1.8119 |
| 21.4892 | 32900 | 1.8622 |
| 21.5219 | 32950 | 1.7152 |
| 21.5545 | 33000 | 2.0479 |
| 21.5872 | 33050 | 1.5677 |
| 21.6199 | 33100 | 1.7661 |
| 21.6525 | 33150 | 1.9125 |
| 21.6852 | 33200 | 1.9057 |
| 21.7178 | 33250 | 1.3903 |
| 21.7505 | 33300 | 1.5802 |
| 21.7831 | 33350 | 1.9131 |
| 21.8158 | 33400 | 1.7475 |
| 21.8485 | 33450 | 1.8216 |
| 21.8811 | 33500 | 1.9810 |
| 21.9138 | 33550 | 1.9163 |
| 21.9464 | 33600 | 1.7334 |
| 21.9791 | 33650 | 1.7990 |
| 22.0118 | 33700 | 1.7664 |
| 22.0444 | 33750 | 1.6453 |
| 22.0771 | 33800 | 1.7921 |
| 22.1097 | 33850 | 1.6310 |
| 22.1424 | 33900 | 1.6774 |
| 22.1750 | 33950 | 1.9685 |
| 22.2077 | 34000 | 1.8472 |
| 22.2404 | 34050 | 1.6497 |
| 22.2730 | 34100 | 1.6521 |
| 22.3057 | 34150 | 1.4748 |
| 22.3383 | 34200 | 1.6577 |
| 22.3710 | 34250 | 1.6079 |
| 22.4037 | 34300 | 1.4378 |
| 22.4363 | 34350 | 1.7309 |
| 22.4690 | 34400 | 1.8067 |
| 22.5016 | 34450 | 1.7367 |
| 22.5343 | 34500 | 1.6197 |
| 22.5669 | 34550 | 1.3781 |
| 22.5996 | 34600 | 1.7569 |
| 22.6323 | 34650 | 1.7471 |
| 22.6649 | 34700 | 1.7978 |
| 22.6976 | 34750 | 1.6486 |
| 22.7302 | 34800 | 1.8566 |
| 22.7629 | 34850 | 1.7889 |
| 22.7956 | 34900 | 1.7175 |
| 22.8282 | 34950 | 1.7887 |
| 22.8609 | 35000 | 1.8908 |
| 22.8935 | 35050 | 1.7223 |
| 22.9262 | 35100 | 1.6751 |
| 22.9589 | 35150 | 1.8001 |
| 22.9915 | 35200 | 1.8165 |
| 23.0242 | 35250 | 1.3228 |
| 23.0568 | 35300 | 1.8181 |
| 23.0895 | 35350 | 1.6723 |
| 23.1221 | 35400 | 1.5197 |
| 23.1548 | 35450 | 1.4939 |
| 23.1875 | 35500 | 1.6044 |
| 23.2201 | 35550 | 1.4903 |
| 23.2528 | 35600 | 1.7873 |
| 23.2854 | 35650 | 1.9744 |
| 23.3181 | 35700 | 1.7997 |
| 23.3508 | 35750 | 1.5434 |
| 23.3834 | 35800 | 1.5244 |
| 23.4161 | 35850 | 1.7727 |
| 23.4487 | 35900 | 1.8397 |
| 23.4814 | 35950 | 1.7058 |
| 23.5140 | 36000 | 1.5808 |
| 23.5467 | 36050 | 1.7354 |
| 23.5794 | 36100 | 1.5446 |
| 23.6120 | 36150 | 1.5880 |
| 23.6447 | 36200 | 1.8711 |
| 23.6773 | 36250 | 1.7160 |
| 23.7100 | 36300 | 1.7900 |
| 23.7427 | 36350 | 1.7464 |
| 23.7753 | 36400 | 1.4821 |
| 23.8080 | 36450 | 1.5822 |
| 23.8406 | 36500 | 1.6595 |
| 23.8733 | 36550 | 1.8593 |
| 23.9059 | 36600 | 1.6593 |
| 23.9386 | 36650 | 1.8218 |
| 23.9713 | 36700 | 1.5263 |
| 24.0039 | 36750 | 1.6455 |
| 24.0366 | 36800 | 1.4105 |
| 24.0692 | 36850 | 1.5919 |
| 24.1019 | 36900 | 1.7372 |
| 24.1346 | 36950 | 1.6470 |
| 24.1672 | 37000 | 1.5463 |
| 24.1999 | 37050 | 1.8665 |
| 24.2325 | 37100 | 1.7140 |
| 24.2652 | 37150 | 1.4222 |
| 24.2978 | 37200 | 1.5772 |
| 24.3305 | 37250 | 1.4491 |
| 24.3632 | 37300 | 1.7550 |
| 24.3958 | 37350 | 1.6556 |
| 24.4285 | 37400 | 1.6815 |
| 24.4611 | 37450 | 1.4938 |
| 24.4938 | 37500 | 1.6417 |
| 24.5265 | 37550 | 1.6379 |
| 24.5591 | 37600 | 1.7183 |
| 24.5918 | 37650 | 1.6381 |
| 24.6244 | 37700 | 1.7205 |
| 24.6571 | 37750 | 1.6668 |
| 24.6897 | 37800 | 1.6097 |
| 24.7224 | 37850 | 1.5974 |
| 24.7551 | 37900 | 1.4577 |
| 24.7877 | 37950 | 1.7353 |
| 24.8204 | 38000 | 1.8409 |
| 24.8530 | 38050 | 1.6529 |
| 24.8857 | 38100 | 1.7042 |
| 24.9184 | 38150 | 1.5920 |
| 24.9510 | 38200 | 1.5260 |
| 24.9837 | 38250 | 1.6843 |
| 25.0163 | 38300 | 1.5489 |
| 25.0490 | 38350 | 1.4266 |
| 25.0816 | 38400 | 1.6260 |
| 25.1143 | 38450 | 1.5667 |
| 25.1470 | 38500 | 1.5914 |
| 25.1796 | 38550 | 1.6381 |
| 25.2123 | 38600 | 1.4450 |
| 25.2449 | 38650 | 1.4836 |
| 25.2776 | 38700 | 1.4296 |
| 25.3103 | 38750 | 1.4547 |
| 25.3429 | 38800 | 1.6745 |
| 25.3756 | 38850 | 1.6315 |
| 25.4082 | 38900 | 1.6128 |
| 25.4409 | 38950 | 1.6090 |
| 25.4735 | 39000 | 1.6080 |
| 25.5062 | 39050 | 1.4883 |
| 25.5389 | 39100 | 1.4759 |
| 25.5715 | 39150 | 1.7895 |
| 25.6042 | 39200 | 1.6290 |
| 25.6368 | 39250 | 1.5896 |
| 25.6695 | 39300 | 1.3669 |
| 25.7022 | 39350 | 1.7570 |
| 25.7348 | 39400 | 1.7096 |
| 25.7675 | 39450 | 1.6464 |
| 25.8001 | 39500 | 1.5836 |
| 25.8328 | 39550 | 1.4649 |
| 25.8654 | 39600 | 1.5321 |
| 25.8981 | 39650 | 1.7041 |
| 25.9308 | 39700 | 1.6562 |
| 25.9634 | 39750 | 1.8695 |
| 25.9961 | 39800 | 1.5636 |
| 26.0287 | 39850 | 1.6339 |
| 26.0614 | 39900 | 1.5447 |
| 26.0941 | 39950 | 1.6000 |
| 26.1267 | 40000 | 1.6995 |
| 26.1594 | 40050 | 1.7142 |
| 26.1920 | 40100 | 1.3842 |
| 26.2247 | 40150 | 1.4875 |
| 26.2573 | 40200 | 1.5789 |
| 26.2900 | 40250 | 1.6715 |
| 26.3227 | 40300 | 1.6125 |
| 26.3553 | 40350 | 1.5673 |
| 26.3880 | 40400 | 1.6396 |
| 26.4206 | 40450 | 1.5057 |
| 26.4533 | 40500 | 1.6584 |
| 26.4860 | 40550 | 1.6758 |
| 26.5186 | 40600 | 1.4290 |
| 26.5513 | 40650 | 1.7511 |
| 26.5839 | 40700 | 1.5793 |
| 26.6166 | 40750 | 1.4984 |
| 26.6492 | 40800 | 1.4702 |
| 26.6819 | 40850 | 1.8344 |
| 26.7146 | 40900 | 1.5882 |
| 26.7472 | 40950 | 1.4245 |
| 26.7799 | 41000 | 1.5706 |
| 26.8125 | 41050 | 1.6478 |
| 26.8452 | 41100 | 1.4552 |
| 26.8779 | 41150 | 1.6468 |
| 26.9105 | 41200 | 1.6006 |
| 26.9432 | 41250 | 1.6027 |
| 26.9758 | 41300 | 1.4874 |
| 27.0085 | 41350 | 1.3157 |
| 27.0411 | 41400 | 1.4175 |
| 27.0738 | 41450 | 1.4619 |
| 27.1065 | 41500 | 1.5909 |
| 27.1391 | 41550 | 1.4197 |
| 27.1718 | 41600 | 1.5115 |
| 27.2044 | 41650 | 1.4334 |
| 27.2371 | 41700 | 1.5533 |
| 27.2698 | 41750 | 1.5201 |
| 27.3024 | 41800 | 1.5953 |
| 27.3351 | 41850 | 1.4537 |
| 27.3677 | 41900 | 1.6232 |
| 27.4004 | 41950 | 1.5933 |
| 27.4331 | 42000 | 1.6955 |
| 27.4657 | 42050 | 1.4612 |
| 27.4984 | 42100 | 1.6584 |
| 27.5310 | 42150 | 1.7636 |
| 27.5637 | 42200 | 1.6297 |
| 27.5963 | 42250 | 1.5764 |
| 27.6290 | 42300 | 1.5077 |
| 27.6617 | 42350 | 1.5008 |
| 27.6943 | 42400 | 1.3797 |
| 27.7270 | 42450 | 1.8068 |
| 27.7596 | 42500 | 1.6229 |
| 27.7923 | 42550 | 1.7154 |
| 27.8250 | 42600 | 1.4650 |
| 27.8576 | 42650 | 1.5567 |
| 27.8903 | 42700 | 1.5959 |
| 27.9229 | 42750 | 1.3661 |
| 27.9556 | 42800 | 1.5697 |
| 27.9882 | 42850 | 1.2631 |
| 28.0209 | 42900 | 1.3554 |
| 28.0536 | 42950 | 1.5743 |
| 28.0862 | 43000 | 1.6630 |
| 28.1189 | 43050 | 1.5044 |
| 28.1515 | 43100 | 1.5048 |
| 28.1842 | 43150 | 1.5329 |
| 28.2169 | 43200 | 1.6174 |
| 28.2495 | 43250 | 1.4120 |
| 28.2822 | 43300 | 1.4637 |
| 28.3148 | 43350 | 1.3274 |
| 28.3475 | 43400 | 1.4406 |
| 28.3801 | 43450 | 1.7386 |
| 28.4128 | 43500 | 1.3819 |
| 28.4455 | 43550 | 1.3553 |
| 28.4781 | 43600 | 1.3395 |
| 28.5108 | 43650 | 1.5442 |
| 28.5434 | 43700 | 1.4133 |
| 28.5761 | 43750 | 1.5770 |
| 28.6088 | 43800 | 1.3720 |
| 28.6414 | 43850 | 1.6503 |
| 28.6741 | 43900 | 1.5052 |
| 28.7067 | 43950 | 1.5829 |
| 28.7394 | 44000 | 1.4876 |
| 28.7720 | 44050 | 1.7159 |
| 28.8047 | 44100 | 1.4177 |
| 28.8374 | 44150 | 1.6509 |
| 28.8700 | 44200 | 1.6379 |
| 28.9027 | 44250 | 1.6268 |
| 28.9353 | 44300 | 1.5226 |
| 28.9680 | 44350 | 1.4577 |
| 29.0007 | 44400 | 1.5708 |
| 29.0333 | 44450 | 1.4214 |
| 29.0660 | 44500 | 1.5191 |
| 29.0986 | 44550 | 1.4286 |
| 29.1313 | 44600 | 1.5108 |
| 29.1639 | 44650 | 1.3233 |
| 29.1966 | 44700 | 1.5269 |
| 29.2293 | 44750 | 1.6637 |
| 29.2619 | 44800 | 1.3354 |
| 29.2946 | 44850 | 1.4442 |
| 29.3272 | 44900 | 1.6092 |
| 29.3599 | 44950 | 1.5458 |
| 29.3926 | 45000 | 1.6602 |
| 29.4252 | 45050 | 1.5026 |
| 29.4579 | 45100 | 1.5239 |
| 29.4905 | 45150 | 1.8195 |
| 29.5232 | 45200 | 1.4508 |
| 29.5558 | 45250 | 1.5922 |
| 29.5885 | 45300 | 1.4541 |
| 29.6212 | 45350 | 1.6059 |
| 29.6538 | 45400 | 1.5429 |
| 29.6865 | 45450 | 1.4189 |
| 29.7191 | 45500 | 1.3880 |
| 29.7518 | 45550 | 1.3489 |
| 29.7845 | 45600 | 1.4347 |
| 29.8171 | 45650 | 1.6756 |
| 29.8498 | 45700 | 1.6004 |
| 29.8824 | 45750 | 1.4929 |
| 29.9151 | 45800 | 1.5354 |
| 29.9477 | 45850 | 1.5486 |
| 29.9804 | 45900 | 1.5539 |
| 30.0131 | 45950 | 1.5889 |
| 30.0457 | 46000 | 1.5380 |
| 30.0784 | 46050 | 1.4323 |
| 30.1110 | 46100 | 1.4169 |
| 30.1437 | 46150 | 1.6017 |
| 30.1764 | 46200 | 1.5644 |
| 30.2090 | 46250 | 1.4206 |
| 30.2417 | 46300 | 1.5065 |
| 30.2743 | 46350 | 1.5961 |
| 30.3070 | 46400 | 1.4240 |
| 30.3396 | 46450 | 1.5114 |
| 30.3723 | 46500 | 1.5302 |
| 30.4050 | 46550 | 1.6155 |
| 30.4376 | 46600 | 1.4247 |
| 30.4703 | 46650 | 1.6018 |
| 30.5029 | 46700 | 1.4195 |
| 30.5356 | 46750 | 1.4429 |
| 30.5683 | 46800 | 1.6439 |
| 30.6009 | 46850 | 1.4760 |
| 30.6336 | 46900 | 1.5512 |
| 30.6662 | 46950 | 1.4387 |
| 30.6989 | 47000 | 1.5118 |
| 30.7315 | 47050 | 1.4090 |
| 30.7642 | 47100 | 1.4199 |
| 30.7969 | 47150 | 1.3875 |
| 30.8295 | 47200 | 1.5236 |
| 30.8622 | 47250 | 1.2795 |
| 30.8948 | 47300 | 1.2937 |
| 30.9275 | 47350 | 1.5257 |
| 30.9602 | 47400 | 1.6123 |
| 30.9928 | 47450 | 1.6460 |
| 31.0255 | 47500 | 1.3051 |
| 31.0581 | 47550 | 1.4466 |
| 31.0908 | 47600 | 1.5853 |
| 31.1234 | 47650 | 1.5679 |
| 31.1561 | 47700 | 1.4663 |
| 31.1888 | 47750 | 1.4773 |
| 31.2214 | 47800 | 1.5283 |
| 31.2541 | 47850 | 1.3459 |
| 31.2867 | 47900 | 1.7697 |
| 31.3194 | 47950 | 1.5063 |
| 31.3521 | 48000 | 1.5190 |
| 31.3847 | 48050 | 1.5872 |
| 31.4174 | 48100 | 1.5069 |
| 31.4500 | 48150 | 1.4471 |
| 31.4827 | 48200 | 1.5093 |
| 31.5153 | 48250 | 1.3827 |
| 31.5480 | 48300 | 1.6809 |
| 31.5807 | 48350 | 1.4950 |
| 31.6133 | 48400 | 1.4291 |
| 31.6460 | 48450 | 1.7661 |
| 31.6786 | 48500 | 1.4973 |
| 31.7113 | 48550 | 1.5540 |
| 31.7440 | 48600 | 1.5741 |
| 31.7766 | 48650 | 1.4359 |
| 31.8093 | 48700 | 1.5934 |
| 31.8419 | 48750 | 1.3078 |
| 31.8746 | 48800 | 1.4380 |
| 31.9073 | 48850 | 1.3816 |
| 31.9399 | 48900 | 1.3888 |
| 31.9726 | 48950 | 1.6013 |
Framework Versions
- Python: 3.13.1
- Sentence Transformers: 5.2.3
- Transformers: 5.2.0
- PyTorch: 2.10.0+cu126
- Accelerate: 1.13.0
- Datasets: 4.8.3
- Tokenizers: 0.22.2
Citation
BibTeX
Sentence Transformers
@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",
}
AnglELoss
@inproceedings{li-li-2024-aoe,
title = "{A}o{E}: Angle-optimized Embeddings for Semantic Textual Similarity",
author = "Li, Xianming and Li, Jing",
year = "2024",
publisher = "Association for Computational Linguistics",
url = "https://aclanthology.org/2024.acl-long.101/",
doi = "10.18653/v1/2024.acl-long.101"
}
- Downloads last month
- -
Model tree for CrosswaveOmega/DMRSQ-Utterance-To-Item-Transformer
Base model
sentence-transformers/all-mpnet-base-v2Papers for CrosswaveOmega/DMRSQ-Utterance-To-Item-Transformer
Paper • 2512.15601 • Published
Sentence-BERT: Sentence Embeddings using Siamese BERT-Networks
Paper • 1908.10084 • Published • 13