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metadata
license: apache-2.0
task_categories:
  - visual-question-answering
  - reinforcement-learning
language:
  - en
tags:
  - multimodal
  - regression
  - deep-imbalanced-regression
  - mllm
  - number representation
size_categories:
  - 100K<n<1M
pretty_name: MLLM Deep Imbalanced Regression Benchmarks

MLLM Deep Imbalanced Regression Benchmarks

The official dataset release for CCC-GRPO: Injecting Distributional Awareness into MLLMs via Reinforcement Learning for Deep Imbalanced Regression, accepted at ICML 2026.

Yao Du, Shanshan Song, Xiaomeng Li

[Paper] [Code]

Overview

This repository contains four multimodal deep imbalanced regression benchmarks used to evaluate CCC-GRPO. The training splits follow naturally long-tailed target distributions, while the test splits are balanced. No validation splits are used.

The benchmark covers 129,563 image-text regression samples across facial age estimation, movie rating prediction, and skeletal age estimation.

Benchmark

Dataset Train Test Total Target Domain
AgeDB-DIR 12,208 2,140 14,348 Age (years) In-the-wild faces
IMDB-WIKI-DIR 81,911 11,016 92,927 Age (years) Web-scale faces
IMDB-Movie-DIR 7,049 1,203 8,252 IMDb movie score Movie posters
BoneAge-DIR 12,528 1,508 14,036 Bone maturity (months) Medical imaging
Total 113,696 15,867 129,563 - -

Repository Structure

Images and sample metadata are packaged as WebDataset tar shards:

agedb/{train,test}/*.tar
imdb_wiki/{train,test}/*.tar
imdb_movie/{train,test}/*.tar
boneage/{train,test}/*.tar

Each WebDataset sample contains an image and a JSON record with:

Field Description
dataset Benchmark name
split train or test
image Image filename inside the shard
problem Regression prompt
solution Numerical target

The original training and test annotations are also provided:

Dataset Train annotation Test annotation
AgeDB-DIR agedb/agedb_train.jsonl agedb/test_conversation_from_agedb.json
IMDB-WIKI-DIR imdb_wiki/imdb_train_peak_compressed_3500_leq100.jsonl imdb_wiki/test_conversation_from_imdb_leq100.json
IMDB-Movie-DIR imdb_movie/train.jsonl imdb_movie/test.json
BoneAge-DIR boneage/boneage_train.jsonl boneage/test_conversation_from_boneage.json

Loading

Download the complete repository:

hf download ChanganYao/DeepImbalancedRegressionForMLLMs \
  --repo-type dataset \
  --local-dir data

Load one benchmark directly with datasets:

from datasets import load_dataset

dataset = load_dataset(
    "webdataset",
    data_files={
        "train": "hf://datasets/ChanganYao/DeepImbalancedRegressionForMLLMs/agedb/train/*.tar",
        "test": "hf://datasets/ChanganYao/DeepImbalancedRegressionForMLLMs/agedb/test/*.tar",
    },
)

Replace agedb with imdb_wiki, imdb_movie, or boneage to load another benchmark.

CCC-GRPO

CCC-GRPO introduces batch-level Concordance Correlation Coefficient supervision for multimodal deep imbalanced regression. Instead of assigning rewards independently to each prediction, it evaluates numerical responses in the context of the mini-batch to align the prediction and target distributions.

Training and evaluation code is available at xmed-lab/CCC-GRPO.

Citation

@misc{du2026injectingdistributionalawarenessmllms,
  title={Injecting Distributional Awareness into MLLMs via Reinforcement Learning for Deep Imbalanced Regression},
  author={Yao Du and Shanshan Song and Xiaomeng Li},
  year={2026},
  eprint={2605.01402},
  archivePrefix={arXiv},
  primaryClass={cs.CL}
}