--- language: en license: apache-2.0 library_name: transformers base_model: bert-base-uncased model_name: cross-encoder-bert-base-DistillRankNET source: https://github.com/xpmir/cross-encoders paper: http://arxiv.org/abs/2603.03010 tags: - cross-encoder - sequence-classification - tensorboard datasets: - msmarco pipeline_tag: text-classification --- # cross-encoder-bert-base-DistillRankNET [![Paper](https://img.shields.io/badge/Paper-Arxiv-red)](http://arxiv.org/abs/2603.03010) [![All Models](https://img.shields.io/badge/🤗%20Hugging%20Face%20Models-blue)](https://huggingface.co/collections/xpmir/reproducing-cross-encoders) [![GitHub](https://img.shields.io/badge/GitHub-Code-blue)](https://github.com/xpmir/cross-encoders) This model is a cross-encoder based on `bert-base-uncased`. It was trained on Ms-Marco using loss `distillRankNET` as part of a reproducibility paper for training cross encoders: "**[Reproducing and Comparing Distillation Techniques for Cross-Encoders](http://arxiv.org/abs/2603.03010)**", see the paper for more details. ### Contents - [Model Description](#model-description) - [Usage](#usage) - [Evals](#evaluations) ## Model Description This model is intended for **re-ranking** the top results returned by a retrieval system (like BM25, Bi-Encoders or SPLADE). - **Training Data:** MS MARCO Passage - **Language:** English - **Loss** distillRankNET Training can be easily reproduced using the assiciated repository. The exact training configuration used for this model is also detailed in [config.yaml](./config.yaml). ## Usage Quick Start: ```python from transformers import AutoTokenizer, AutoModelForSequenceClassification import torch tokenizer = AutoTokenizer.from_pretrained("bert-base-uncased") model = AutoModelForSequenceClassification.from_pretrained("xpmir/cross-encoder-bert-base-DistillRankNET") features = tokenizer("What is experimaestro ?", "Experimaestro is a powerful framework for ML experiments management...", padding=True, truncation=True, return_tensors="pt") model.eval() with torch.no_grad(): scores = model(**features).logits print(scores) ``` ## Evaluations We provide evaluations of this cross-encoder re-ranking the top `1000` documents retrieved by `naver/splade-v3-distilbert`. | dataset | RR@10 | nDCG@10 | |:-------------------|:----------|:----------| | msmarco_dev | 36.42 | 42.84 | | trec2019 | 95.74 | 74.15 | | trec2020 | 94.25 | 72.10 | | fever | 81.04 | 80.99 | | arguana | 22.80 | 34.31 | | climate_fever | 29.17 | 21.50 | | dbpedia | 76.58 | 45.80 | | fiqa | 43.41 | 35.34 | | hotpotqa | 89.45 | 72.86 | | nfcorpus | 56.85 | 34.36 | | nq | 52.57 | 57.27 | | quora | 76.95 | 78.94 | | scidocs | 28.31 | 15.65 | | scifact | 67.81 | 70.21 | | touche | 63.22 | 34.36 | | trec_covid | 89.83 | 68.52 | | robust04 | 69.69 | 47.75 | | lotte_writing | 64.88 | 55.85 | | lotte_recreation | 58.11 | 52.84 | | lotte_science | 43.32 | 36.06 | | lotte_technology | 49.62 | 41.06 | | lotte_lifestyle | 70.00 | 60.53 | | **Mean In Domain** | **75.47** | **63.03** | | **BEIR 13** | **59.85** | **50.01** | | **LoTTE (OOD)** | **59.27** | **49.01** |