Model Card for Model ID

ModernBERT multi-task fine-tuned on tasksource NLI tasks, including MNLI, ANLI, SICK, WANLI, doc-nli, LingNLI, FOLIO, FOL-NLI, LogicNLI, Label-NLI and all datasets in the below table). This is the equivalent of an "instruct" version. The model was trained for 200k steps on an Nvidia A30 GPU.

It is very good at reasoning tasks (better than llama 3.1 8B Instruct on ANLI and FOLIO), long context reasoning, sentiment analysis and zero-shot classification with new labels.

test_name test_accuracy
glue/mnli 0.87
glue/qnli 0.93
glue/rte 0.85
glue/mrpc 0.87
glue/qqp 0.9
glue/cola 0.86
glue/sst2 0.96
super_glue/boolq 0.64
super_glue/cb 0.89
super_glue/multirc 0.82
super_glue/wic 0.67
super_glue/axg 0.89
anli/a1 0.66
anli/a2 0.49
anli/a3 0.44
sick/label 0.93
sick/entailment_AB 0.91
snli 0.83
scitail/snli_format 0.94
hans 1
WANLI 0.74
recast/recast_ner 0.87
recast/recast_sentiment 0.99
recast/recast_verbnet 0.88
recast/recast_megaveridicality 0.88
recast/recast_verbcorner 0.94
recast/recast_kg_relations 0.91
recast/recast_factuality 0.94
recast/recast_puns 0.96
probability_words_nli/reasoning_1hop 0.99
probability_words_nli/usnli 0.72
probability_words_nli/reasoning_2hop 0.98
nan-nli 0.85
nli_fever 0.78
breaking_nli 0.99
conj_nli 0.74
fracas 0.86
dialogue_nli 0.93
mpe 0.74
dnc 0.92
recast_white/fnplus 0.82
recast_white/sprl 0.9
recast_white/dpr 0.68
robust_nli/IS_CS 0.79
robust_nli/LI_LI 0.99
robust_nli/ST_WO 0.85
robust_nli/PI_SP 0.74
robust_nli/PI_CD 0.8
robust_nli/ST_SE 0.81
robust_nli/ST_NE 0.86
robust_nli/ST_LM 0.87
robust_nli_is_sd 1
robust_nli_li_ts 0.89
add_one_rte 0.94
paws/labeled_final 0.95
pragmeval/pdtb 0.64
lex_glue/scotus 0.55
lex_glue/ledgar 0.8
dynasent/dynabench.dynasent.r1.all/r1 0.81
dynasent/dynabench.dynasent.r2.all/r2 0.75
cycic_classification 0.9
lingnli 0.84
monotonicity-entailment 0.97
scinli 0.8
naturallogic 0.96
dynahate 0.78
syntactic-augmentation-nli 0.92
autotnli 0.94
defeasible-nli/atomic 0.81
defeasible-nli/snli 0.78
help-nli 0.96
nli-veridicality-transitivity 0.98
lonli 0.97
dadc-limit-nli 0.69
folio 0.66
tomi-nli 0.48
puzzte 0.6
temporal-nli 0.92
counterfactually-augmented-snli 0.79
cnli 0.87
boolq-natural-perturbations 0.66
equate 0.63
logiqa-2.0-nli 0.52
mindgames 0.96
ConTRoL-nli 0.67
logical-fallacy 0.37
cladder 0.87
conceptrules_v2 1
zero-shot-label-nli 0.82
scone 0.98
monli 1
SpaceNLI 1
propsegment/nli 0.88
FLD.v2/default 0.91
FLD.v2/star 0.76
SDOH-NLI 0.98
scifact_entailment 0.84
AdjectiveScaleProbe-nli 0.99
resnli 1
semantic_fragments_nli 0.99
dataset_train_nli 0.94
nlgraph 0.94
ruletaker 0.99
PARARULE-Plus 1
logical-entailment 0.86
nope 0.44
LogicNLI 0.86
contract-nli/contractnli_a/seg 0.87
contract-nli/contractnli_b/full 0.79
nli4ct_semeval2024 0.67
biosift-nli 0.92
SIGA-nli 0.53
FOL-nli 0.8
doc-nli 0.77
mctest-nli 0.87
natural-language-satisfiability 0.9
idioms-nli 0.81
lifecycle-entailment 0.78
MSciNLI 0.85
hover-3way/nli 0.88
seahorse_summarization_evaluation 0.73
missing-item-prediction/contrastive 0.79
Pol_NLI 0.89
synthetic-retrieval-NLI/count 0.64
synthetic-retrieval-NLI/position 0.89
synthetic-retrieval-NLI/binary 0.91
babi_nli 0.97
gen_debiased_nli 0.91

Usage

[ZS] Zero-shot classification pipeline

from transformers import pipeline
classifier = pipeline("zero-shot-classification",model="tasksource/ModernBERT-base-nli")

text = "one day I will see the world"
candidate_labels = ['travel', 'cooking', 'dancing']
classifier(text, candidate_labels)

NLI training data of this model includes label-nli, a NLI dataset specially constructed to improve this kind of zero-shot classification.

[NLI] Natural language inference pipeline

from transformers import pipeline
pipe = pipeline("text-classification",model="tasksource/ModernBERT-base-nli")
pipe([dict(text='there is a cat',
  text_pair='there is a black cat')]) #list of (premise,hypothesis)

Backbone for further fune-tuning

This checkpoint has stronger reasoning and fine-grained abilities than the base version and can be used for further fine-tuning.

Citation

@inproceedings{sileo-2024-tasksource,
    title = "tasksource: A Large Collection of {NLP} tasks with a Structured Dataset Preprocessing Framework",
    author = "Sileo, Damien",
    booktitle = "Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024)",
    month = may,
    year = "2024",
    address = "Torino, Italia",
    publisher = "ELRA and ICCL",
    url = "https://aclanthology.org/2024.lrec-main.1361",
    pages = "15655--15684",
}
Downloads last month
574
Safetensors
Model size
150M params
Tensor type
F32
·
Inference Examples
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social visibility and check back later, or deploy to Inference Endpoints (dedicated) instead.

Model tree for tasksource/ModernBERT-base-nli

Finetuned
(57)
this model
Finetunes
2 models

Datasets used to train tasksource/ModernBERT-base-nli

Spaces using tasksource/ModernBERT-base-nli 2