base_model:intfloat/multilingual-e5-largelibrary_name:sentence-transformersmetrics:-cosine_accuracy@1-cosine_accuracy@3-cosine_accuracy@5-cosine_accuracy@10-cosine_precision@1-cosine_precision@3-cosine_precision@5-cosine_precision@10-cosine_recall@1-cosine_recall@3-cosine_recall@5-cosine_recall@10-cosine_ndcg@10-cosine_mrr@10-cosine_map@100pipeline_tag:sentence-similaritytags:-sentence-transformers-sentence-similarity-feature-extraction-generated_from_trainer-dataset_size:198-loss:MatryoshkaLoss-loss:MultipleNegativesRankingLosswidget:-source_sentence:>- Najčešći tipovi uključuju iznad/ispod 2.5, ukupno golova, i klađenje na broj golova u poluvremenima.sentences:-Kojisunajčešćitipoviklađenjanagolove?-KojekladioniceuSrbijinudeDNBopciju?-Štajehendikepklađenje?-source_sentence:>- Facebook grupe posvećene klađenju omogućavaju korisnicima da dobijaju savete i predloge od velikih zajednica korisnika i kladioničara.sentences:-Štajelimituklađenju?-KakosekoristiFacebookzaklađenje?-Štajecash-outopcijauuživoklađenju?-source_sentence:>- Najčešći tipovi uključuju klađenje na konačan ishod, broj gemova, broj setova, i klađenje uživo.sentences:-Kojesuprednostipraćenjautakmicauživo?-Kojisunajčešćitipoviklađenjanatenis?-Štajee-novčanik?-source_sentence:>- Premijum provizija je dodatna naknada koju berze kvota mogu naplatiti igračima za specifične usluge ili dobitke.sentences:-Štajepremijumprovizija?-Kojesustrategijezauspešnouživoklađenje?-Kakofunkcionišeklađenjenaukupanbrojpoenatimova?-source_sentence:>- 'Super Jenki' sistem uključuje pet događaja i 26 pojedinačnih opklada, takođe poznat kao kanadski sistem.sentences:-Štaje'Super Jenki'sistemklađenja?-Štajeprocenaverovatnoće?-Kakoklađenjeuživofunkcionišeutenisu?model-index:-name:SentenceTransformerbasedonintfloat/multilingual-e5-largeresults:-task:type:information-retrievalname:InformationRetrievaldataset:name:dim768type:dim_768metrics:-type:cosine_accuracy@1value:0.8260869565217391name:CosineAccuracy@1-type:cosine_accuracy@3value:0.9565217391304348name:CosineAccuracy@3-type:cosine_accuracy@5value:1name:CosineAccuracy@5-type:cosine_accuracy@10value:1name:CosineAccuracy@10-type:cosine_precision@1value:0.8260869565217391name:CosinePrecision@1-type:cosine_precision@3value:0.31884057971014484name:CosinePrecision@3-type:cosine_precision@5value:0.20000000000000007name:CosinePrecision@5-type:cosine_precision@10value:0.10000000000000003name:CosinePrecision@10-type:cosine_recall@1value:0.8260869565217391name:CosineRecall@1-type:cosine_recall@3value:0.9565217391304348name:CosineRecall@3-type:cosine_recall@5value:1name:CosineRecall@5-type:cosine_recall@10value:1name:CosineRecall@10-type:cosine_ndcg@10value:0.9271072095125116name:CosineNdcg@10-type:cosine_mrr@10value:0.9021739130434783name:CosineMrr@10-type:cosine_map@100value:0.9021739130434783name:CosineMap@100-task:type:information-retrievalname:InformationRetrievaldataset:name:dim512type:dim_512metrics:-type:cosine_accuracy@1value:0.8695652173913043name:CosineAccuracy@1-type:cosine_accuracy@3value:1name:CosineAccuracy@3-type:cosine_accuracy@5value:1name:CosineAccuracy@5-type:cosine_accuracy@10value:1name:CosineAccuracy@10-type:cosine_precision@1value:0.8695652173913043name:CosinePrecision@1-type:cosine_precision@3value:0.3333333333333332name:CosinePrecision@3-type:cosine_precision@5value:0.20000000000000007name:CosinePrecision@5-type:cosine_precision@10value:0.10000000000000003name:CosinePrecision@10-type:cosine_recall@1value:0.8695652173913043name:CosineRecall@1-type:cosine_recall@3value:1name:CosineRecall@3-type:cosine_recall@5value:1name:CosineRecall@5-type:cosine_recall@10value:1name:CosineRecall@10-type:cosine_ndcg@10value:0.9461678046583877name:CosineNdcg@10-type:cosine_mrr@10value:0.9275362318840579name:CosineMrr@10-type:cosine_map@100value:0.9275362318840579name:CosineMap@100-task:type:information-retrievalname:InformationRetrievaldataset:name:dim256type:dim_256metrics:-type:cosine_accuracy@1value:0.8260869565217391name:CosineAccuracy@1-type:cosine_accuracy@3value:1name:CosineAccuracy@3-type:cosine_accuracy@5value:1name:CosineAccuracy@5-type:cosine_accuracy@10value:1name:CosineAccuracy@10-type:cosine_precision@1value:0.8260869565217391name:CosinePrecision@1-type:cosine_precision@3value:0.3333333333333332name:CosinePrecision@3-type:cosine_precision@5value:0.20000000000000007name:CosinePrecision@5-type:cosine_precision@10value:0.10000000000000003name:CosinePrecision@10-type:cosine_recall@1value:0.8260869565217391name:CosineRecall@1-type:cosine_recall@3value:1name:CosineRecall@3-type:cosine_recall@5value:1name:CosineRecall@5-type:cosine_recall@10value:1name:CosineRecall@10-type:cosine_ndcg@10value:0.9301212722049728name:CosineNdcg@10-type:cosine_mrr@10value:0.9057971014492753name:CosineMrr@10-type:cosine_map@100value:0.9057971014492753name:CosineMap@100-task:type:information-retrievalname:InformationRetrievaldataset:name:dim128type:dim_128metrics:-type:cosine_accuracy@1value:0.782608695652174name:CosineAccuracy@1-type:cosine_accuracy@3value:0.9565217391304348name:CosineAccuracy@3-type:cosine_accuracy@5value:1name:CosineAccuracy@5-type:cosine_accuracy@10value:1name:CosineAccuracy@10-type:cosine_precision@1value:0.782608695652174name:CosinePrecision@1-type:cosine_precision@3value:0.31884057971014484name:CosinePrecision@3-type:cosine_precision@5value:0.20000000000000007name:CosinePrecision@5-type:cosine_precision@10value:0.10000000000000003name:CosinePrecision@10-type:cosine_recall@1value:0.782608695652174name:CosineRecall@1-type:cosine_recall@3value:0.9565217391304348name:CosineRecall@3-type:cosine_recall@5value:1name:CosineRecall@5-type:cosine_recall@10value:1name:CosineRecall@10-type:cosine_ndcg@10value:0.9091552965878422name:CosineNdcg@10-type:cosine_mrr@10value:0.8782608695652173name:CosineMrr@10-type:cosine_map@100value:0.8782608695652173name:CosineMap@100-task:type:information-retrievalname:InformationRetrievaldataset:name:dim64type:dim_64metrics:-type:cosine_accuracy@1value:0.8260869565217391name:CosineAccuracy@1-type:cosine_accuracy@3value:0.9565217391304348name:CosineAccuracy@3-type:cosine_accuracy@5value:0.9565217391304348name:CosineAccuracy@5-type:cosine_accuracy@10value:1name:CosineAccuracy@10-type:cosine_precision@1value:0.8260869565217391name:CosinePrecision@1-type:cosine_precision@3value:0.31884057971014484name:CosinePrecision@3-type:cosine_precision@5value:0.19130434782608702name:CosinePrecision@5-type:cosine_precision@10value:0.10000000000000003name:CosinePrecision@10-type:cosine_recall@1value:0.8260869565217391name:CosineRecall@1-type:cosine_recall@3value:0.9565217391304348name:CosineRecall@3-type:cosine_recall@5value:0.9565217391304348name:CosineRecall@5-type:cosine_recall@10value:1name:CosineRecall@10-type:cosine_ndcg@10value:0.9164054079968976name:CosineNdcg@10-type:cosine_mrr@10value:0.8894927536231884name:CosineMrr@10-type:cosine_map@100value:0.8894927536231884name:CosineMap@100
SentenceTransformer based on intfloat/multilingual-e5-large
This is a sentence-transformers model finetuned from intfloat/multilingual-e5-large on the json dataset. It maps sentences & paragraphs to a 1024-dimensional dense vector space and can be used for semantic textual similarity, semantic search, paraphrase mining, text classification, clustering, and more.
from sentence_transformers import SentenceTransformer
# Download from the 🤗 Hub
model = SentenceTransformer("luka023/proba")
# Run inference
sentences = [
"'Super Jenki' sistem uključuje pet događaja i 26 pojedinačnih opklada, takođe poznat kao kanadski sistem.",
"Šta je 'Super Jenki' sistem klađenja?",
'Kako klađenje uživo funkcioniše u tenisu?',
]
embeddings = model.encode(sentences)
print(embeddings.shape)
# [3, 1024]# Get the similarity scores for the embeddings
similarities = model.similarity(embeddings, embeddings)
print(similarities.shape)
# [3, 3]
Approximate statistics based on the first 198 samples:
positive
anchor
type
string
string
details
min: 19 tokens
mean: 33.76 tokens
max: 53 tokens
min: 6 tokens
mean: 12.87 tokens
max: 21 tokens
Samples:
positive
anchor
Klađenje na ukupan broj poena timova podrazumeva predviđanje da li će jedan tim postići više ili manje poena od postavljene granice, nezavisno od konačnog ishoda.
Kako funkcioniše klađenje na ukupan broj poena timova?
Konačan ishod podrazumeva klađenje na to ko će pobediti u utakmici, pri čemu postoje tri mogućnosti: pobeda domaćina, pobeda gosta ili nerešeno.
Šta znači klađenje na konačan ishod?
Patent opklada uključuje tri događaja sa ukupno sedam pojedinačnih opklada: tri singl, tri dubl i jedna trostruka opklada.
@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",
}
MatryoshkaLoss
@misc{kusupati2024matryoshka,
title={Matryoshka Representation Learning},
author={Aditya Kusupati and Gantavya Bhatt and Aniket Rege and Matthew Wallingford and Aditya Sinha and Vivek Ramanujan and William Howard-Snyder and Kaifeng Chen and Sham Kakade and Prateek Jain and Ali Farhadi},
year={2024},
eprint={2205.13147},
archivePrefix={arXiv},
primaryClass={cs.LG}
}
MultipleNegativesRankingLoss
@misc{henderson2017efficient,
title={Efficient Natural Language Response Suggestion for Smart Reply},
author={Matthew Henderson and Rami Al-Rfou and Brian Strope and Yun-hsuan Sung and Laszlo Lukacs and Ruiqi Guo and Sanjiv Kumar and Balint Miklos and Ray Kurzweil},
year={2017},
eprint={1705.00652},
archivePrefix={arXiv},
primaryClass={cs.CL}
}