--- license: mit library_name: sentence-transformers pipeline_tag: text-ranking tags: - cross-encoder - reranker - climate-fact-checking - comp90042 --- # New-Methodology finetuned rerankers Cross-encoder / reranker checkpoints produced by `scripts/02_train_reranker.py` and related experiments. ## Subfolders | HF path | Local source | |---------|--------------| | `finetuned_reranker/` | `outputs/retrieval/models/finetuned_reranker` | | `ce_minilm_hybrid_hard_epochs2/` | `outputs/retrieval/models/ce_cross-encoder__ms-marco-MiniLM-L6-v2__hybrid_hard__epochs2` | | `finetuned_bge_reranker/` | `outputs/retrieval/models/finetuned_bge_reranker` | | `finetuned_minilm_hardneg/` | `outputs/retrieval/models/finetuned_minilm_hardneg` | | `finetuned_reranker_s60/` | `outputs/retrieval/models/finetuned_reranker_s60` | | `pairwise_reranker/` | `outputs/reranker/pairwise/pairwise_reranker` | ## Load example (sentence-transformers) ```python from sentence_transformers import CrossEncoder model = CrossEncoder("jasperyeoh2/new-methodology-rerankers", trust_remote_code=True) # For a specific checkpoint, clone and point model_name_or_path to the subfolder. ``` ## Recommended for MMR pipeline Production MMR (λ=0.5) uses **zero-shot** `cross-encoder/ms-marco-MiniLM-L6-v2`, not these finetuned weights. Finetuned checkpoints are kept for reproducibility and ablation.