ModernBERT Cross-Encoder: Semantic Similarity (STS)

Cross encoders are high performing encoder models that compare two texts and output a 0-1 score. I've found the cross-encoders/roberta-large-stsb model to be very useful in creating evaluators for LLM outputs. They're simple to use, fast and very accurate.

Like many people, I was excited about the architecture and training uplift from the ModernBERT architecture (answerdotai/ModernBERT-large). So I've applied it to the stsb cross encoder, which is a very handy model. Additionally, I've added pretraining from a much larger semi-synthetic dataset dleemiller/wiki-sim that targets this kind of objective. The inference performance efficiency, expanded context and simplicity make this a really nice platform as an evaluator model.


Features

  • High performing: Achieves Pearson: 0.9256 and Spearman: 0.9215 on the STS-Benchmark test set.
  • Efficient architecture: Based on the ModernBERT-large design (395M parameters), offering faster inference speeds.
  • Extended context length: Processes sequences up to 8192 tokens, great for LLM output evals.
  • Diversified training: Pretrained on dleemiller/wiki-sim and fine-tuned on sentence-transformers/stsb.

Performance

Model STS-B Test Pearson STS-B Test Spearman Context Length Parameters Speed
ModernCE-large-sts 0.9256 0.9215 8192 395M Medium
ModernCE-base-sts 0.9162 0.9122 8192 149M Fast
stsb-roberta-large 0.9147 - 512 355M Slow
stsb-distilroberta-base 0.8792 - 512 82M Fast

Usage

To use ModernCE for semantic similarity tasks, you can load the model with the Hugging Face sentence-transformers library:

from sentence_transformers import CrossEncoder

# Load ModernCE model
model = CrossEncoder("dleemiller/ModernCE-large-sts")

# Predict similarity scores for sentence pairs
sentence_pairs = [
    ("It's a wonderful day outside.", "It's so sunny today!"),
    ("It's a wonderful day outside.", "He drove to work earlier."),
]
scores = model.predict(sentence_pairs)

print(scores)  # Outputs: array([0.9184, 0.0123], dtype=float32)

Output

The model returns similarity scores in the range [0, 1], where higher scores indicate stronger semantic similarity.


Training Details

Pretraining

The model was pretrained on the pair-score-sampled subset of the dleemiller/wiki-sim dataset. This dataset provides diverse sentence pairs with semantic similarity scores, helping the model build a robust understanding of relationships between sentences.

  • Classifier Dropout: a somewhat large classifier dropout of 0.3, to reduce overreliance on teacher scores.
  • Objective: STS-B scores from cross-encoder/stsb-roberta-large.

Fine-Tuning

Fine-tuning was performed on the sentence-transformers/stsb dataset.

Validation Results

The model achieved the following test set performance after fine-tuning:

  • Pearson Correlation: 0.9256
  • Spearman Correlation: 0.9215

Model Card

  • Architecture: ModernBERT-large
  • Tokenizer: Custom tokenizer trained with modern techniques for long-context handling.
  • Pretraining Data: dleemiller/wiki-sim (pair-score-sampled)
  • Fine-Tuning Data: sentence-transformers/stsb

Thank You

Thanks to the AnswerAI team for providing the ModernBERT models, and the Sentence Transformers team for their leadership in transformer encoder models.


Citation

If you use this model in your research, please cite:

@misc{moderncestsb2025,
  author = {Miller, D. Lee},
  title = {ModernCE STS: An STS cross encoder model},
  year = {2025},
  publisher = {Hugging Face Hub},
  url = {https://huggingface.co/dleemiller/ModernCE-large-sts},
}

License

This model is licensed under the MIT License.

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