--- license: other base_model: Qwen/Qwen2.5-7B-Instruct tags: - academic-paper-review - llama-factory - sft - iclr-trained - qwen2.5 language: - en --- # PaperLens-7B-Text-OpenReview-ICLR SFT fine-tune of **[Qwen/Qwen2.5-7B-Instruct](https://huggingface.co/Qwen/Qwen2.5-7B-Instruct)** trained to predict ICLR-style Accept/Reject verdicts on academic papers from the paper text. - **Modality**: text - **Training data**: iclr-21k (85/5/10 balanced split) - **Checkpoint**: step 1322, end of epoch 2 of 4 (7B → ep2 by convention) - **Hyperparams**: LR 1e-6, cosine_then_constant scheduler (decay_ratio 0.75, min_lr_rate 0.001), batch size 32, cutoff_len 24480, framework LLaMA-Factory + FSDP2. ## Quickstart — serve + submit a PDF or LaTeX source dir Easiest path uses the [PaperLens orchestrator](https://github.com/zlab-princeton/PaperLens) (paperprep + scoring server + web UI all wired up). Clone, run setup, and chain into the UI: ```bash git clone https://github.com/zlab-princeton/PaperLens.git cd PaperLens uv tool install . # installs the `paperlens` CLI globally on PATH paperlens setup --serve # in the wizard, pick: size=7B · modality=text · domain=iclr # → web UI on http://localhost:8003 (PDF upload + LaTeX dir browse) ``` Or hit the API directly (FastAPI on the same port): ```bash # Submit an anonymized PDF; poll for the verdict JOB=$(curl -s -F file=@anonymized.pdf http://localhost:8003/submit | jq -r .job_id) curl http://localhost:8003/status/$JOB # → job dict: state, verdict, p_accept, ... # Submit a LaTeX source directory (anonymized) or an arXiv id curl -X POST http://localhost:8003/submit_latex \ -H "Content-Type: application/json" \ -d '{"path": "/abs/path/to/anonymized_latex_dir"}' curl -X POST http://localhost:8003/submit_arxiv \ -H "Content-Type: application/json" \ -d '{"arxiv_id": "2511.08364"}' ``` Headless one-shot (no server): ```bash paperlens run /abs/path/to/anonymized.pdf ``` Lower-level: stand up just a vLLM scoring server with pre-prep'd sharegpt rows (skips paperprep): ```bash vllm serve skonan/PaperLens-7B-Text-OpenReview-ICLR --task generate --gpu-memory-utilization 0.85 # OpenAI-compat API on :8000 — format prompts per the "Prompt format" section below. ``` ## Test results (in-distribution, calibrated) Evaluated on `iclr-balanced-test`. Calibration threshold picked on `iclr-balanced-val`. Score = `logprob(Accept) − logprob(Reject)` at the decision-token position. `pA` = predicted accept rate; `A_rec` / `R_rec` = accept / reject recall. | n_test | Acc | AUC | pA | A_rec | R_rec | |---|---|---|---|---|---| | 2495 | 67.0% | 0.650 | 49% | 66.0% | 67.9% | ## Note on training-size asymmetry ICLR-trained models saw ~21k examples (4 epochs ≈ 2644 / 5296 steps). Arxiv-trained vs ICLR-trained models saw a ~3× data gap — direct comparisons should account for it. ## Prompt format Inputs are sharegpt-style 3-turn conversations: `system`, `human`, `gpt`. **SYSTEM is the same string across all 8 PaperLens models. USER preamble differs per training domain.** Vision variants append one `` token per page-screenshot at the end of the user message. ### SYSTEM (all PaperLens models) ```text You are an expert academic reviewer tasked with evaluating research papers. ``` ### ICLR-trained USER preamble (verbatim) ```text I am giving you a paper. I want to predict its acceptance outcome at ICLR. - Your answer will either be: \boxed{Accept} or \boxed{Reject} - Note: ICLR generally has a ~30% acceptance rate # ...paper body in markdown... ``` ### ASSISTANT (gold) ```text Outcome: \boxed{Accept} ``` or ```text Outcome: \boxed{Reject} ``` At inference, the decision logprobs at the boxed-token position (5th generated token under the `qwen` template) are used for calibration; either parse the text or read logprobs directly. ## Concrete example (TEXT, ARXIV-trained) ```text [SYSTEM] You are an expert academic reviewer tasked with evaluating research papers. [USER] I am giving you a paper submitted to a top machine-learning venue. Predict its acceptance outcome. - Your answer will either be: \boxed{Accept} or \boxed{Reject} - Note: typical top-tier ML venues have ~25-30% acceptance rates # SSAST: SELF-SUPERVISED AUDIO SPECTROGRAM TRANSFORMER ## Abstract ... ~32k chars of paper body ... [ASSISTANT] Outcome: \boxed{Accept} ``` ## Related models + datasets in the PaperLens collection All 8 single-domain SFT models (this one plus 7 siblings) plus the companion **PaperLens-Text** and **PaperLens-Vision** datasets live in the [PaperLens collection](https://huggingface.co/collections/skonan/paperlens-6a0c79da423c3a436b7f6b1a). Pairwise comparisons across {3B, 7B} × {text, vision} × {arxiv, openreview-iclr} are intended.