Datasets:
paper_id stringlengths 10 10 | year int64 2.02k 2.03k | conference stringclasses 3
values | accepted bool 2
classes | title stringlengths 14 183 | abstract stringlengths 246 3.6k | keywords listlengths 1 28 | pdf_url stringlengths 40 40 | paper_text stringlengths 53 566k ⌀ | reviews listlengths 2 8 |
|---|---|---|---|---|---|---|---|---|---|
009LK0vLcY | 2,023 | NeurIPS 2023 | true | Finite Population Regression Adjustment and Non-asymptotic Guarantees for Treatment Effect Estimation | The design and analysis of randomized experiments is fundamental to many areas, from the physical and social sciences to industrial settings.
Regression adjustment is a popular technique to reduce the variance of estimates obtained from experiments, by utilizing information contained in auxiliary covariates.
While th... | [
"regression adjustment; treatment effect estimation; average treatment effect"
] | https://openreview.net/pdf?id=009LK0vLcY | Finite Population Regression Adjustment and Non-asymptotic Guarantees for Treatment Effect Estimation
Abstract
The design and analysis of randomized experiments is fundamental to many areas, from the physical and social sciences to industrial settings. Regression adjustment is a popular technique to reduce the varian... | [
"{\"IS_META_REVIEW\": false, \"comments\": \"SUMMARY:\\nIn this paper, authors present regression adjusted estimators for estimating the average treatment effect under the Bernoulli design.\\nIn particular, they show that by using the leverage scores and a ridge regression adjustment, favorable finite sample bounds... |
00EKYYu3fD | 2,023 | NeurIPS 2023 | true | Complexity Matters: Rethinking the Latent Space for Generative Modeling | "In generative modeling, numerous successful approaches leverage a low-dimensional latent space, e.g(...TRUNCATED) | ["generative model","latent space","distance between distributions","generative adversarial network"(...TRUNCATED) | https://openreview.net/pdf?id=00EKYYu3fD | "Complexity Matters: Rethinking the Latent Space for Generative Modeling\n\nAbstract\n\nIn generativ(...TRUNCATED) | ["{\"IS_META_REVIEW\": false, \"comments\": \"SUMMARY:\\nThis work investigates what constitutes a g(...TRUNCATED) |
01GQK1gwe3 | 2,023 | NeurIPS 2023 | false | Can Neural Networks Improve Classical Optimization of Inverse Problems? | "Finding the values of model parameters from data is an essential task in science.\nWhile iterative (...TRUNCATED) | [
"Inverse problems",
"neural networks",
"iterative optimization",
"chaos",
"convergence"
] | https://openreview.net/pdf?id=01GQK1gwe3 | "1\n\nAbstract\n\nFinding the values of model parameters from data is an essential task in science. (...TRUNCATED) | ["{\"IS_META_REVIEW\": false, \"comments\": \"SUMMARY:\\nIn this paper the authors explore whether b(...TRUNCATED) |
02Uc0G2Cym | 2,023 | NeurIPS 2023 | true | Robustness Guarantees for Adversarially Trained Neural Networks | "We study robust adversarial training of two-layer neural networks as a bi-level optimization proble(...TRUNCATED) | [
"Adversarial training",
"neural networks",
"robustness",
"guarantees"
] | https://openreview.net/pdf?id=02Uc0G2Cym | "Robustness Guarantees for Adversarially Trained Neural Networks\n\nAbstract\n\nWe study robust adve(...TRUNCATED) | ["{\"IS_META_REVIEW\": false, \"comments\": \"SUMMARY:\\nThis paper studies the optimization converg(...TRUNCATED) |
05P1U0jk8r | 2,023 | NeurIPS 2023 | true | Exploiting hidden structures in non-convex games for convergence to Nash equilibrium | "A wide array of modern machine learning applications – from adversarial models to multi-agent rei(...TRUNCATED) | [
"Nash Equilibrium",
"Games",
"Gradient",
"Non-monotone VI",
"Natural Gradient",
"Precondition"
] | https://openreview.net/pdf?id=05P1U0jk8r | "Exploiting Hidden Structures in Non-Convex Games for Convergence to Nash Equilibrium\n\nAbstract\n\(...TRUNCATED) | ["{\"IS_META_REVIEW\": false, \"comments\": \"SUMMARY:\\nThis paper proposes a preconditioned hidden(...TRUNCATED) |
08hStXdT1s | 2,023 | NeurIPS 2023 | true | Knowledge Diffusion for Distillation | "The representation gap between teacher and student is an emerging topic in knowledge distillation ((...TRUNCATED) | [
"knowledge distillation",
"diffusion models"
] | https://openreview.net/pdf?id=08hStXdT1s | "Knowledge Diffusion for Distillation\n\nAbstract\n\nThe representation gap between teacher and stud(...TRUNCATED) | ["{\"IS_META_REVIEW\": false, \"comments\": \"SUMMARY:\\nThis authors propose to explicitly eliminat(...TRUNCATED) |
08zf7kTOoh | 2,023 | NeurIPS 2023 | true | "Exposing flaws of generative model evaluation metrics and their unfair treatment of diffusion model(...TRUNCATED) | "We systematically study a wide variety of generative models spanning semantically-diverse image dat(...TRUNCATED) | ["generative models","generative model evaluation","self-supervised learning","representation learni(...TRUNCATED) | https://openreview.net/pdf?id=08zf7kTOoh | "Exposing flaws of generative model evaluation metrics and their unfair treatment of diffusion model(...TRUNCATED) | ["{\"IS_META_REVIEW\": false, \"comments\": \"SUMMARY:\\nThe authors performed extensive experimenta(...TRUNCATED) |
090ORrOAPL | 2,023 | NeurIPS 2023 | true | On the Powerfulness of Textual Outlier Exposure for Visual OoD Detection | "Successful detection of Out-of-Distribution (OoD) data is becoming increasingly important to ensure(...TRUNCATED) | [
"Out-of-distribution detection"
] | https://openreview.net/pdf?id=090ORrOAPL | "On the Powerfulness of Textual Outlier Exposure for Visual OoD Detection\n\nAbstract\n\nSuccessful (...TRUNCATED) | ["{\"IS_META_REVIEW\": false, \"comments\": \"SUMMARY:\\nThe paper notices that while outlier exposu(...TRUNCATED) |
09bZyE9tfp | 2,023 | NeurIPS 2023 | true | Online Ad Procurement in Non-stationary Autobidding Worlds | "Today's online advertisers procure digital ad impressions through interacting with autobidding plat(...TRUNCATED) | [
"autobidding",
"online advertising",
"bandit online convex optimization",
"constrained optimization"
] | https://openreview.net/pdf?id=09bZyE9tfp | "Online Ad Procurement in Non-stationary Autobidding Worlds\n\nAbstract\n\nToday's online advertiser(...TRUNCATED) | ["{\"IS_META_REVIEW\": false, \"comments\": \"SUMMARY:\\nThis work studies an advertiser's online hi(...TRUNCATED) |
0A9f2jZDGW | 2,023 | NeurIPS 2023 | true | Task Arithmetic in the Tangent Space: Improved Editing of Pre-Trained Models | "Task arithmetic has recently emerged as a cost-effective and scalable approach to edit pre-trained (...TRUNCATED) | ["model editing","transfer learning","neural tangent kernel","vision-language pre-training","deep le(...TRUNCATED) | https://openreview.net/pdf?id=0A9f2jZDGW | "Task Arithmetic in the Tangent Space: Improved Editing of Pre-Trained Models\n\nAbstract\n\nTask ar(...TRUNCATED) | ["{\"IS_META_REVIEW\": false, \"comments\": \"SUMMARY:\\nThis paper studies the \\\"task vectors\\\"(...TRUNCATED) |
NeurIPS 2023–2025 Peer Review Dataset
Structured peer-review data for 13,171 NeurIPS submissions (2023–2025), collected via the OpenReview API. Each paper entry includes acceptance decisions, full reviewer text, and an anonymized parsed version of the paper itself.
Note on selection bias. NeurIPS authors are not required to make rejection reviews public, and the vast majority do not. As a result, this dataset contains roughly 95% accepted papers. The true NeurIPS acceptance rate is ~24.5%. Downstream evaluations should use a balanced subsample.
Dataset structure
NeurIPS-2023-2025/
├── metadata.jsonl # one record per paper (see below)
├── 2023/
│ ├── reviews/ 8,935 JSON files # OpenReview metadata + reviews
│ └── anonymized_pdfs/ 3,389 JSON files # anonymized parsed paper text
├── 2024/
│ ├── reviews/ 4,236 JSON files
│ └── anonymized_pdfs/ 4,049 JSON files
└── 2025/
├── reviews/ 5,540 JSON files
└── anonymized_pdfs/ 2,279 JSON files
File formats
metadata.jsonl
One JSON object per line, one per paper. Quick-access index for filtering without loading individual files.
| Field | Type | Description |
|---|---|---|
paper_id |
str | OpenReview forum ID (matches filenames) |
year |
int | 2023, 2024, or 2025 |
conference |
str | e.g. "NeurIPS 2025" |
accepted |
bool | null | true = accepted, false = rejected, null = unknown |
title |
str | Paper title |
abstract |
str | Paper abstract |
keywords |
list[str] | Author-provided keywords |
n_reviews |
int | Number of non-meta reviews |
pdf_url |
str | Direct link to original PDF on OpenReview |
has_anon_pdf |
bool | Whether an anonymized parsed PDF is available |
{year}/reviews/{paper_id}.json
OpenReview metadata for one paper. Author names have been removed.
| Field | Description |
|---|---|
id |
OpenReview forum ID |
title |
Paper title |
abstract |
Abstract |
accepted |
bool |
keywords |
list of strings |
conference |
Venue string |
pdf_url |
Link to original PDF on OpenReview |
reviews |
List of review objects (see below) |
Each review object contains:
RECOMMENDATION— numerical score (1–6 scale for NeurIPS)REVIEWER_CONFIDENCE— confidence scoresummary,strengths,weaknesses,questions,comments— free-text fields (availability varies by year)IS_META_REVIEW— bool,truefor area-chair meta-reviews
{year}/anonymized_pdfs/{paper_id}.pdf.json
DocLing-parsed paper text, anonymized to remove author-identifying information. Format follows the DocLing JSON schema.
Key top-level fields:
texts— list of text elements, each withlabel(e.g.section_header,text,footnote) andtextcontentbody— document tree roottables,pictures— structured tables and figure references
Anonymization removes: author name blocks (structural), acknowledgments section, NER-detected PERSON/ORG spans, emails, affiliation footnotes, and name-pattern matches. See the paper for full details.
Loading examples
Load the metadata index
import json
papers = [json.loads(line) for line in open("metadata.jsonl")]
# Filter to rejected papers only
rejects = [p for p in papers if p["accepted"] == False]
print(f"{len(rejects)} rejected papers")
Load reviews for a specific paper
import json
paper_id = "qEfgajdKea" # example 2025 paper
review = json.load(open(f"2025/reviews/{paper_id}.json"))
print(review["title"])
print(f"Accepted: {review['accepted']}")
for r in review["reviews"]:
if not r.get("IS_META_REVIEW"):
print(f" Score: {r.get('RECOMMENDATION')} Confidence: {r.get('REVIEWER_CONFIDENCE')}")
Load an anonymized paper
import json
paper_id = "qEfgajdKea"
doc = json.load(open(f"2025/anonymized_pdfs/{paper_id}.pdf.json"))
# Reconstruct plain text
text = "\n\n".join(
el["text"] for el in doc["texts"]
if el.get("label") in ("section_header", "text", "title")
)
print(text[:1000])
Build a balanced evaluation set
import json, random
random.seed(10718)
papers = [json.loads(l) for l in open("metadata.jsonl")]
accepts = [p for p in papers if p["accepted"] == True and p["has_anon_pdf"]]
rejects = [p for p in papers if p["accepted"] == False and p["has_anon_pdf"]]
n = min(len(accepts), len(rejects))
balanced = random.sample(accepts, n) + random.sample(rejects, n)
print(f"Balanced set: {n} accepts + {n} rejects")
Data statistics
| Year | Papers | Accepted | Rejected | Avg reviews/paper | Anonymized PDFs |
|---|---|---|---|---|---|
| 2023 | 3,395 | 2,965 | 430 | 4.2 | 3,385 |
| 2024 | 4,236 | 4,035 | 201 | 3.9 | 4,049 |
| 2025 | 5,540 | 5,286 | 254 | 4.0 | 2,279 |
| Total | 13,171 | 12,286 | 885 | 4.0 | 9,713 |
Citation
If you use this dataset, please cite:
@misc{roytburg2026neurips,
title = {NeurIPS 2023–2025 Peer Review Dataset},
author = {Roytburg, Dani and Doshi, Prina and Jain, Aditya},
year = {2026},
url = {https://huggingface.co/datasets/djroytburg/NeurIPS-2023-2025}
}
License
Review text and paper metadata are derived from OpenReview content, shared under CC BY 4.0. Anonymized paper text is similarly licensed. Original PDFs remain the property of their respective authors and are linked but not redistributed.
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