Skip to content
New issue

Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.

By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.

Already on GitHub? Sign in to your account

Add support for FinMTEB benchmark #1379

Open
wants to merge 12 commits into
base: v2.0.0
Choose a base branch
from
12 changes: 7 additions & 5 deletions mteb/abstasks/AbsTaskClassification.py
Original file line number Diff line number Diff line change
Expand Up @@ -75,6 +75,7 @@ class AbsTaskClassification(AbsTask):
n_experiments: int = 10
k: int = 3
train_split = "train"
sentence_column: str = "text"

def evaluate(
self,
Expand Down Expand Up @@ -137,7 +138,7 @@ def _evaluate_subset(
)
# Bootstrap `self.samples_per_label` samples per label for each split
X_sampled, y_sampled, idxs = self._undersample_data(
train_split["text"], # type: ignore
train_split[self.sentence_column], # type: ignore
train_split["label"], # type: ignore
self.samples_per_label,
idxs,
Expand All @@ -146,14 +147,15 @@ def _evaluate_subset(
evaluator = self.evaluator(
X_sampled,
y_sampled,
eval_split["text"], # type: ignore
eval_split[self.sentence_column], # type: ignore
eval_split["label"], # type: ignore
task_name=self.metadata.name,
**params,
)
scores_exp, test_cache = evaluator(
model, encode_kwargs=encode_kwargs, test_cache=test_cache
)

scores.append(scores_exp)

avg_scores: dict[str, Any] = {
Expand Down Expand Up @@ -183,20 +185,20 @@ def _calculate_metrics_from_split(
) -> ClassificationDescriptiveStatistics:
train_text = []
if hf_subset:
text = self.dataset[hf_subset][split]["text"]
text = self.dataset[hf_subset][split][self.sentence_column]
label = self.dataset[hf_subset][split]["label"]
if split != "train":
train_text = self.dataset[hf_subset]["train"]["text"]
elif compute_overall:
text = []
label = []
for hf_subset in self.metadata.eval_langs:
text.extend(self.dataset[hf_subset][split]["text"])
text.extend(self.dataset[hf_subset][split][self.sentence_column])
label.extend(self.dataset[hf_subset][split]["label"])
if split != "train":
train_text.extend(self.dataset[hf_subset]["train"]["text"])
else:
text = self.dataset[split]["text"]
text = self.dataset[split][self.sentence_column]
label = self.dataset[split]["label"]
if split != "train":
train_text = self.dataset["train"]["text"]
Expand Down
18 changes: 10 additions & 8 deletions mteb/abstasks/AbsTaskPairClassification.py
Original file line number Diff line number Diff line change
Expand Up @@ -66,6 +66,8 @@ class AbsTaskPairClassification(AbsTask):
"""

abstask_prompt = "Retrieve text that are semantically similar to the given text."
sentence_1_column: str = "sentence1"
sentence_2_column: str = "sentence2"

def _evaluate_subset(
self,
Expand All @@ -80,8 +82,8 @@ def _evaluate_subset(
"sentence_transformers.evaluation.PairClassificationEvaluator"
).setLevel(logging.WARN)
evaluator = PairClassificationEvaluator(
data_split["sentence1"],
data_split["sentence2"],
data_split[self.sentence_1_column],
data_split[self.sentence_2_column],
data_split["labels"],
task_name=self.metadata.name,
**kwargs,
Expand Down Expand Up @@ -111,14 +113,14 @@ def _calculate_metrics_from_split(
dataset = dataset[0]

sentence1 = (
dataset["sentence1"][0]
if len(dataset["sentence1"]) == 1
else dataset["sentence1"]
dataset[self.sentence_1_column][0]
if len(dataset[self.sentence_1_column]) == 1
else dataset[self.sentence_1_column]
)
sentence2 = (
dataset["sentence2"][0]
if len(dataset["sentence2"]) == 1
else dataset["sentence2"]
dataset[self.sentence_2_column][0]
if len(dataset[self.sentence_2_column]) == 1
else dataset[self.sentence_2_column]
)
labels = (
dataset["labels"][0] if len(dataset["labels"]) == 1 else dataset["labels"]
Expand Down
18 changes: 10 additions & 8 deletions mteb/abstasks/AbsTaskSTS.py
Original file line number Diff line number Diff line change
Expand Up @@ -61,6 +61,8 @@ class AbsTaskSTS(AbsTask):
"""

abstask_prompt = "Retrieve semantically similar text."
sentence_1_column: str = "sentence1"
sentence_2_column: str = "sentence2"
min_score: int
max_score: int

Expand All @@ -72,8 +74,8 @@ def normalize(x):

normalized_scores = list(map(normalize, data_split["score"]))
evaluator = STSEvaluator(
data_split["sentence1"],
data_split["sentence2"],
data_split[self.sentence_1_column],
data_split[self.sentence_2_column],
normalized_scores,
task_name=self.metadata.name,
**kwargs,
Expand All @@ -87,20 +89,20 @@ def _calculate_metrics_from_split(
self, split: str, hf_subset: str | None = None, compute_overall: bool = False
) -> STSDescriptiveStatistics:
if hf_subset:
sentence1 = self.dataset[hf_subset][split]["sentence1"]
sentence2 = self.dataset[hf_subset][split]["sentence2"]
sentence1 = self.dataset[hf_subset][split][self.sentence_1_column]
sentence2 = self.dataset[hf_subset][split][self.sentence_2_column]
score = self.dataset[hf_subset][split]["score"]
elif compute_overall:
sentence1 = []
sentence2 = []
score = []
for hf_subset in self.metadata.eval_langs:
sentence1.extend(self.dataset[hf_subset][split]["sentence1"])
sentence2.extend(self.dataset[hf_subset][split]["sentence2"])
sentence1.extend(self.dataset[hf_subset][split][self.sentence_1_column])
sentence2.extend(self.dataset[hf_subset][split][self.sentence_2_column])
score.extend(self.dataset[hf_subset][split]["score"])
else:
sentence1 = self.dataset[split]["sentence1"]
sentence2 = self.dataset[split]["sentence2"]
sentence1 = self.dataset[split][self.sentence_1_column]
sentence2 = self.dataset[split][self.sentence_2_column]
score = self.dataset[split]["score"]

sentence1_len = [len(s) for s in sentence1]
Expand Down
27 changes: 18 additions & 9 deletions mteb/abstasks/AbsTaskSummarization.py
Original file line number Diff line number Diff line change
Expand Up @@ -82,6 +82,10 @@ class AbsTaskSummarization(AbsTask):
abstask_prompt = (
"Given a news summary, retrieve other semantically similar summaries."
)

reference_summaries_column: str = "human_summaries"
generated_summaries_column: str = "machine_summaries"

# SummEval has DeprecatedSummarizationEvaluator
evaluator = SummarizationEvaluator

Expand All @@ -97,9 +101,10 @@ def _evaluate_subset(
(np.array(x) - self.min_score) / (self.max_score - self.min_score)
for x in data_split["relevance"]
]
evaluator = self.evaluator(
machine_summaries=data_split["machine_summaries"],
human_summaries=data_split["human_summaries"],

evaluator = self.evalutor(
machine_summaries=data_split[self.generated_summaries_column],
human_summaries=data_split[self.reference_summaries_column],
texts=data_split["text"],
gold_scores=normalized_scores,
task_name=self.metadata.name,
Expand All @@ -114,8 +119,12 @@ def _calculate_metrics_from_split(
) -> SummarizationDescriptiveStatistics:
if hf_subset:
text = self.dataset[hf_subset][split]["text"]
human_summaries = self.dataset[hf_subset][split]["human_summaries"]
machine_summaries = self.dataset[hf_subset][split]["machine_summaries"]
human_summaries = self.dataset[hf_subset][split][
self.reference_summaries_column
]
machine_summaries = self.dataset[hf_subset][split][
self.generated_summaries_column
]
relevance = self.dataset[hf_subset][split]["relevance"]
elif compute_overall:
text = []
Expand All @@ -126,16 +135,16 @@ def _calculate_metrics_from_split(
for hf_subset in self.metadata.eval_langs:
text.extend(self.dataset[hf_subset][split]["text"])
human_summaries.extend(
self.dataset[hf_subset][split]["human_summaries"]
self.dataset[hf_subset][split][self.reference_summaries_column]
)
machine_summaries.extend(
self.dataset[hf_subset][split]["machine_summaries"]
self.dataset[hf_subset][split][self.generated_summaries_column]
)
relevance.extend(self.dataset[hf_subset][split]["relevance"])
else:
text = self.dataset[split]["text"]
human_summaries = self.dataset[split]["human_summaries"]
machine_summaries = self.dataset[split]["machine_summaries"]
human_summaries = self.dataset[split][self.reference_summaries_column]
machine_summaries = self.dataset[split][self.generated_summaries_column]
relevance = self.dataset[split]["relevance"]

all_human_summaries = []
Expand Down
86 changes: 85 additions & 1 deletion mteb/benchmarks/benchmarks.py
Original file line number Diff line number Diff line change
Expand Up @@ -14,7 +14,8 @@

http_url_adapter = TypeAdapter(AnyUrl)
UrlString = Annotated[
str, BeforeValidator(lambda value: str(http_url_adapter.validate_python(value)))
str,
BeforeValidator(lambda value: str(http_url_adapter.validate_python(value))),
] # Allows the type to be a string, but ensures that the string is a URL


Expand Down Expand Up @@ -1471,3 +1472,86 @@ def load_results(
url={https://arxiv.org/abs/2305.19840},
}""",
)

FinMTEB = Benchmark(
name="MTEB(Finance)",
tasks=get_tasks(
languages=["eng", "zho"],
tasks=[
"FinancialPhrasebankClassification",
"FinSentClassification",
"FiQAClassification",
"SemEva2017Classification",
"FLSClassification",
"ESGClassification",
"FOMCClassification",
"FinancialFraudClassification",
"FinNSPClassification",
"FinChinaSentimentClassification",
"FinFEClassification",
"OpenFinDataSentimentClassification",
"Weibo21Classification",
"MInDS14EnClustering",
"ComplaintsClustering",
"PiiClustering",
"FinanceArxivS2SClustering",
"FinanceArxivP2PClustering",
"WikiCompany2IndustryClustering",
"MInDS14ZhClustering",
"FinNLClustering",
"CCKS2022Clustering",
"CCKS2020Clustering",
"CCKS2019Clustering",
"HeadlineACPairClassification",
"HeadlinePDDPairClassification",
"HeadlinePDUPairClassification",
"AFQMC",
"FinFactReranking",
"FiQA2018Reranking",
"HC3Reranking",
"FinEvaReranking",
"DISCFinLLMReranking",
"FiQA2018",
"FinanceBenchRetrieval",
"HC3Retrieval",
"Apple10KRetrieval",
"FinQARetrieval",
"TATQARetrieval",
"USNewsRetrieval",
"TradeTheEventEncyclopediaRetrieval",
"TradeTheEventNewsRetrieval",
"TheGoldmanEnRetrieval",
"FinTruthQARetrieval",
"FinEvaRetrieval",
"AlphaFinRetrieval",
"DISCFinLLMRetrieval",
"DISCFinLLMComputingRetrieval",
"DuEEFinRetrieval",
"SmoothNLPRetrieval",
"THUCNewsRetrieval",
"FinEvaEncyclopediaRetrieval",
"TheGoldmanZhRetrieval",
"FINAL",
"FinSTS",
"AFQMC",
"BQ",
"Ectsum",
"FINDsum",
"FNS2022sum",
"FiNNAsum",
"FinEvaHeadlinesum",
"FinEvasum",
],
),
description="FinMTEB is an embedding benchmark consists of 64 financial domain-specific text datasets, across English and Chinese.",
reference="https://arxiv.org/abs/2409.18511v1",
citation="""@misc{tang2024needdomainspecificembeddingmodels,
title={Do We Need Domain-Specific Embedding Models? An Empirical Investigation},
author={Yixuan Tang and Yi Yang},
year={2024},
eprint={2409.18511},
archivePrefix={arXiv},
primaryClass={cs.CL},
url={https://arxiv.org/abs/2409.18511},
}""",
)
24 changes: 24 additions & 0 deletions mteb/tasks/Classification/__init__.py
Original file line number Diff line number Diff line change
Expand Up @@ -96,7 +96,13 @@
Diversity5LegalBenchClassification,
Diversity6LegalBenchClassification,
EmotionClassification,
ESGClassification,
FinancialFraudClassification,
FinancialPhrasebankClassification,
FinSentClassification,
FiQAClassification,
FLSClassification,
FOMCClassification,
FrenkEnClassification,
FunctionOfDecisionSectionLegalBenchClassification,
ImdbClassification,
Expand Down Expand Up @@ -150,6 +156,7 @@
SCDDVerificationLegalBenchClassification,
SDSEyeProtectionClassification,
SDSGlovesClassification,
SemEva2017Classification,
TelemarketingSalesRuleLegalBenchClassification,
TextualismToolDictionariesLegalBenchClassification,
TextualismToolPlainLegalBenchClassification,
Expand Down Expand Up @@ -308,12 +315,17 @@
from .urd import UrduRomanSentimentClassification
from .vie import VieStudentFeedbackClassification
from .zho import (
FinChinaSentimentClassification,
FinFEClassification,
FinNSPClassification,
IFlyTek,
JDReview,
MultilingualSentiment,
OnlineShopping,
OpenFinDataSentimentClassification,
TNews,
Waimai,
Weibo21Classification,
YueOpenriceReviewClassification,
)
from .zul import IsiZuluNewsClassification
Expand Down Expand Up @@ -622,4 +634,16 @@
"HindiDiscourseClassification",
"SentimentAnalysisHindi",
"MalayalamNewsClassification",
"ESGClassification",
"FLSClassification",
"FOMCClassification",
"FiQAClassification",
"FinSentClassification",
"FinancialFraudClassification",
"SemEva2017Classification",
"FinChinaSentimentClassification",
"FinFEClassification",
"FinNSPClassification",
"OpenFinDataSentimentClassification",
"Weibo21Classification",
]
21 changes: 21 additions & 0 deletions mteb/tasks/Classification/eng/ESGClassification.py
Original file line number Diff line number Diff line change
@@ -0,0 +1,21 @@
from __future__ import annotations

from mteb.abstasks.AbsTaskClassification import AbsTaskClassification
from mteb.abstasks.TaskMetadata import TaskMetadata


class ESGClassification(AbsTaskClassification):
metadata = TaskMetadata(
name="ESGClassification",
description="A finance dataset performs sentence classification under the environmental, social, and corporate governance (ESG) framework.",
reference="https://arxiv.org/abs/2309.13064",
dataset={
"path": "FinanceMTEB/ESG",
"revision": "521d56feabadda80b11d6adcc6b335d4c5ad8285",
},
type="Classification",
category="s2s",
eval_splits=["test"],
eval_langs=["eng-Latn"],
main_score="accuracy",
)
Loading
Loading