--- license: apache-2.0 language: - zh - en - es - fr - de - ru - ja - ko base_model: - Qwen/Qwen3-Embedding-4B library_name: transformers --- # Querit-Reranker-4B ## HighLights Querit-Reranker-4B is a multilingual cross-encoder reranker initialized from Qwen3-Embedding-4B and further trained with a data-centric, reranking-oriented pipeline. Rather than relying on backbone scale alone, the model first learns broad query-document relevance matching from large-scale ranking supervision and then adapts to target ranking distributions through synthetic-query mining with teacher scores as continuous soft labels. Selected checkpoints from different data mixtures and training runs are further consolidated with spherical linear interpolation (SLERP), yielding a single deployable reranker without runtime ensembling overhead. By jointly encoding each query-document pair, Querit-Reranker-4B captures fine-grained relevance signals for second-stage ranking and achieves strong performance across multilingual and English retrieval benchmarks. As of June 20, 2026, Querit-Reranker-4B achieves the best average score of **71.09** among publicly available models on the **MTEB Multilingual v2 reranking tasks**, averaged over six tasks. ![Reranking performance on MTEB-multilingual-v2](./MTEB-multilingual-v2.png) ### Model Description - **Model type:** Text Reranking - **Language(s) (NLP):** Multilingual (Chinese, English, Spanish, French, German, Russian, Korean, Japanese) - **Training Stage:** Pretraining & Post-training - **Number of Total Parameters:** 4.02B - **Number of Paramaters (Non-Embedding):** 3.63B - **Number of Layers:** 36 - **Number of Attention Heads:** 32 - **Context Length:** 128k ## Citation If you find Querit-Reranker useful for your research or applications, please cite our paper: **Querit-Reranker: Training Compact Multilingual Rerankers via Efficient Label-Free Distribution Adaptation** Yunfei Zhong, Jun Yang, Wei Huang, Yinqiong Cai, Haosheng Qian, Yixing Fan, Ruqing Zhang, Lixin Su, Daiting Shi, and Jiafeng Guo. arXiv:2606.19037, 2026. ```bibtex @misc{zhong2026queritrerankertrainingcompactmultilingual, title={Querit-Reranker: Training Compact Multilingual Rerankers via Efficient Label-Free Distribution Adaptation}, author={Yunfei Zhong and Jun Yang and Wei Huang and Yinqiong Cai and Haosheng Qian and Yixing Fan and Ruqing Zhang and Lixin Su and Daiting Shi and Jiafeng Guo}, year={2026}, eprint={2606.19037}, archivePrefix={arXiv}, primaryClass={cs.IR}, url={https://arxiv.org/abs/2606.19037}, } ```