license: bigscience-bloom-rail-1.0
datasets:
- xnli
language:
- fr
- en
pipeline_tag: zero-shot-classification
Presentation
We introduce the Bloomz-7b1-mt-NLI model, fine-tuned from the Bloomz-7b1-mt-chat-dpo foundation model. This model is trained on a Natural Language Inference (NLI) task in a language-agnostic manner. The NLI task involves determining the semantic relationship between a hypothesis and a set of premises, often expressed as pairs of sentences.
The goal is to predict textual entailment (does sentence A imply/contradict/neither sentence B?) and is a classification task (given two sentences, predict one of the three labels). If sentence A is called premise, and sentence B is called hypothesis, then the goal of the modelization is to estimate the following:
Language-agnostic approach
It should be noted that hypotheses and premises are randomly chosen between English and French, with each language combination representing a probability of 25%.
Performance
class | precision (%) | f1-score (%) | support |
---|---|---|---|
global | 83.31 | 83.02 | 5,010 |
contradiction | 81.27 | 86.63 | 1,670 |
entailment | 87.54 | 83.57 | 1,670 |
neutral | 81.13 | 78.86 | 1,670 |
Benchmark
Here are the performances for both the hypothesis and premise in French:
model | accuracy (%) | MCC (x100) |
---|---|---|
cmarkea/distilcamembert-base-nli | 77.45 | 66.24 |
BaptisteDoyen/camembert-base-xnli | 81.72 | 72.67 |
MoritzLaurer/mDeBERTa-v3-base-mnli-xnli | 83.43 | 75.15 |
cmarkea/bloomz-560m-nli | 68.70 | 53.57 |
cmarkea/bloomz-3b-nli | 81.08 | 71.66 |
cmarkea/bloomz-7b1-mt-nli | 83.13 | 74.89 |
And now the hypothesis in French and the premise in English (cross-language context):
model | accuracy (%) | MCC (x100) |
---|---|---|
cmarkea/distilcamembert-base-nli | 16.89 | -26.82 |
BaptisteDoyen/camembert-base-xnli | 74.59 | 61.97 |
MoritzLaurer/mDeBERTa-v3-base-mnli-xnli | 85.15 | 77.74 |
cmarkea/bloomz-560m-nli | 68.84 | 53.55 |
cmarkea/bloomz-3b-nli | 82.12 | 73.22 |
cmarkea/bloomz-7b1-mt-nli | 85.43 | 78.25 |
Zero-shot Classification
The primary interest of training such models lies in their zero-shot classification performance. This means that the model is able to classify any text with any label without a specific training. What sets the Bloomz-3b-NLI LLMs apart in this domain is their ability to model and extract information from significantly more complex and lengthy test structures compared to models like BERT, RoBERTa, or CamemBERT.
The zero-shot classification task can be summarized by: With i representing a hypothesis composed of a template (for example, "This text is about {}.") and #C candidate labels ("cinema", "politics", etc.), the set of hypotheses is composed of {"This text is about cinema.", "This text is about politics.", ...}. It is these hypotheses that we will measure against the premise, which is the sentence we aim to classify.
Performance
The model is evaluated based on sentiment analysis evaluation on the French film review site Allociné. The dataset is labeled into 2 classes, positive comments and negative comments. We then use the hypothesis template "Ce commentaire est {}. and the candidate classes "positif" and "negatif".
model | accuracy (%) | MCC (x100) |
---|---|---|
cmarkea/distilcamembert-base-nli | 80.59 | 63.71 |
BaptisteDoyen/camembert-base-xnli | 86.37 | 73.74 |
MoritzLaurer/mDeBERTa-v3-base-mnli-xnli | 84.97 | 70.05 |
cmarkea/bloomz-560m-nli | 71.13 | 46.3 |
cmarkea/bloomz-3b-nli | 89.06 | 78.10 |
cmarkea/bloomz-7b1-mt-nli | 95.12 | 90.27 |
How to use Bloomz-7b1-mt-NLI
from transformers import pipeline
classifier = pipeline(
task='zero-shot-classification',
model="cmarkea/bloomz-7b1-mt-nli"
)
result = classifier (
sequences="Le style très cinéphile de Quentin Tarantino "
"se reconnaît entre autres par sa narration postmoderne "
"et non linéaire, ses dialogues travaillés souvent "
"émaillés de références à la culture populaire, et ses "
"scènes hautement esthétiques mais d'une violence "
"extrême, inspirées de films d'exploitation, d'arts "
"martiaux ou de western spaghetti.",
candidate_labels="cinéma, technologie, littérature, politique",
hypothesis_template="Ce texte parle de {}."
)
result
{"labels": ["cinéma",
"littérature",
"technologie",
"politique"],
"scores": [0.8745610117912292,
0.10403601825237274,
0.014962797053158283,
0.0064402492716908455]}
# Resilience in cross-language French/English context
result = classifier (
sequences="Quentin Tarantino's very cinephile style is "
"recognized, among other things, by his postmodern and "
"non-linear narration, his elaborate dialogues often "
"peppered with references to popular culture, and his "
"highly aesthetic but extremely violent scenes, inspired by "
"exploitation films, martial arts or spaghetti western.",
candidate_labels="cinéma, technologie, littérature, politique",
hypothesis_template="Ce texte parle de {}."
)
result
{"labels": ["cinéma",
"littérature",
"technologie",
"politique"],
"scores": [0.9314399361610413,
0.04960821941494942,
0.013468802906572819,
0.005483036395162344]}