Machine translated multilingual STS benchmark dataset.
OTHER License
Machine translated multilingual STS benchmark dataset.
These are different multilingual translations and the English original of the STSbenchmark dataset. Translation has been done with deepl.com.
It can be used to train sentence embeddings like T-Systems-onsite/cross-en-de-roberta-sentence-transformer.
Please open an issue if you have questions or want to report problems.
This dataset provides pairs of sentences and a score of their similarity.
score | 2 example sentences | explanation |
---|---|---|
5 | The bird is bathing in the sink.Birdie is washing itself in the water basin. | The two sentences are completely equivalent, as they mean the same thing. |
4 | Two boys on a couch are playing video games.Two boys are playing a video game. | The two sentences are mostly equivalent, but some unimportant details differ. |
3 | John said he is considered a witness but not a suspect.“He is not a suspect anymore.” John said. | The two sentences are roughly equivalent, but some important information differs/missing. |
2 | They flew out of the nest in groups.They flew into the nest together. | The two sentences are not equivalent, but share some details. |
1 | The woman is playing the violin.The young lady enjoys listening to the guitar. | The two sentences are not equivalent, but are on the same topic. |
0 | The black dog is running through the snow.A race car driver is driving his car through the mud. | The two sentences are completely dissimilar. |
raw-data
: the raw data how it was convertet with deepl.comdata
: the data: sentence1, sentence2, similarity_scoreconvert.py
: script to convert data from raw-data
to data
import csv
with open(filepath, newline="", encoding="utf-8") as csvfile:
csv_dict_reader = csv.DictReader(
csvfile,
dialect='excel',
fieldnames=["sentence1", "sentence2", "similarity_score"],
)
for row in csv_dict_reader:
print(row)
none
Language | 1st train | 1000st train | last train | 1st dev | 1000st dev | last dev | 1st test | 1000st test | last test |
---|---|---|---|---|---|---|---|---|---|
de | ok | ok | ok | ok | ok | ok | ok | ok | ok |
en | ok | ok | ok | ok | ok | ok | ok | ok | ok |
es | |||||||||
fr | |||||||||
it | |||||||||
ja | |||||||||
nl | ok | ok | partially English | ok | ok | ok | ok | ok | poor grammar |
pl | |||||||||
pt | |||||||||
ru | |||||||||
zh |