--- license: mit base_model: microsoft/deberta-v3-base tags: - cross-encoder - web-agent - computer-use - mind2web - candidate-generation - sentence-transformers datasets: - osunlp/Multimodal-Mind2Web language: - en library_name: sentence-transformers pipeline_tag: text-ranking --- # mind2web-candidate-ranker A **DeBERTa-v3-base cross-encoder** fine-tuned for **candidate generation in web agents**: given a natural-language task (plus action history) and a DOM element, it scores how likely that element is the next action target. It is stage 1 of a two-stage computer-use agent (rank DOM elements → LLM picks the action → Playwright executes). Trained on [Mind2Web](https://osu-nlp-group.github.io/Mind2Web/) (2,000+ tasks across 137 real websites). ## Results Evaluated on the three official Mind2Web generalization splits: | split | acc@1 | recall@3 | recall@5 | recall@10 | recall@20 | MRR | |---|---|---|---|---|---|---| | test_task (unseen tasks) | 60.2% | 83.5% | 89.4% | 93.0% | 93.8% | 0.725 | | test_website (unseen websites) | 50.9% | 76.1% | 85.3% | 92.6% | 95.3% | 0.656 | | test_domain (unseen domains) | 55.4% | 79.8% | 87.1% | 92.8% | 94.5% | 0.689 | ~93% recall@10 on entirely unseen domains. The recall curve plateaus at k≈20, making top-20 a good cost/recall operating point for the downstream LLM. ## Usage ```python from sentence_transformers import CrossEncoder model = CrossEncoder("torontodeveloper/mind2web-candidate-ranker", num_labels=1, max_length=512) candidate = "tag: input | aria_label: Destination | placeholder: To?" query = "task is: Search for a flight from Toronto to New York. Type NYC into the destination field.\nPrevious actions: " score = model.predict([(candidate, query)]) ``` Candidates are serialized DOM elements (`tag`, `aria_label`, `placeholder`, `name`, `is_clickable`, bounding box, etc.); the query is the task description plus the last few actions. Score all interactable elements on a page and keep the top-k. ## Training - Base model: `microsoft/deberta-v3-base` (86M params) - Data: Mind2Web train split — 7,775 actions, 1 positive + 3 sampled negatives each (31,100 pairs) - 3 epochs, batch size 8, lr 3e-5, BCEWithLogitsLoss, linear warmup - Single T4 GPU (~85 minutes), **fp32** ## ⚠️ Precision note DeBERTa-v3's disentangled attention **overflows fp16** (NaN logits). Load and run this model in **fp32** (or bf16 on Ampere+). Newer transformers versions may default to fp16 on GPU — pass `torch_dtype=torch.float32` explicitly if needed. ## Pipeline context This model is the candidate generator from [mind2web-computer-use-agent](https://github.com/torontodeveloper/mind2web-computer-use-agent): stage 2 (action prediction) uses FLAN-T5 / GPT-class models over the top-k candidates, and stage 3 executes via Playwright. Architecture follows [MindAct](https://github.com/OSU-NLP-Group/Mind2Web) (Deng et al., 2023).