MCTC Benchmark Collection
This repository provides a standardized and optimized collection of classic datasets for Multi-class Text Classification (MCTC). Specifically designed for robust evaluation, this collection features a 10-fold cross-validation setup and specialized metadata for analyzing document and label distributions.
🚀 Key Features
- Standardized Benchmarks: Includes curated versions of ACM, OHSUMED, REUTERS, and TWITTER.
- 10-Fold Cross-Validation: Every dataset is pre-split into 10 independent folds to ensure statistically significant results and easy reproducibility.
- Efficient Index-Based Architecture: A single
samples.pklstores the raw content, while splits are managed via lightweight index files (.pkl). This ensures high consistency across folds while optimizing storage. - Head/Tail Categorization: Includes specialized metadata (
label_cls.pklandtext_cls.pkl) to distinguish between Head and Tail entities, enabling deep performance analysis on imbalanced data. - Spherical K-Means Clustering: Each fold includes pre-computed cluster assignments (
text_cluster.h5) and cluster centroids (cluster_centroids.h5), generated via Spherical K-Means on text embeddings. These enable semantic grouping and cluster-aware evaluation.
📂 Repository Structure
.
├── {DATASET_NAME} # ACM, OHSUMED, REUTERS, TWITTER
│ ├── samples.pkl # Global repository: list of dicts with {idx, text, labels}
│ ├── label_cls.pkl # Label classification: Defines labels as 'Head' or 'Tail'
│ ├── text_cls.pkl # Text classification: Defines samples as 'Head' or 'Tail'
│ ├── relevance_map.pkl # Ground-truth relevance mapping for classification tasks
│ └── fold_{0..9} # 10 independent folds for cross-validation
│ ├── train.pkl # Sample indices for training
│ ├── val.pkl # Sample indices for validation
│ ├── test.pkl # Sample indices for testing
│ ├── labels_descriptions.pkl # Specific descriptions for labels in this fold
│ ├── cluster_centroids.h5 # Spherical K-Means centroids for this fold
│ └── text_cluster.h5 # Mapping of text_idx → cluster_idx for this fold
└── README.md
🛠️ Usage
To maintain the exact directory structure and indices, download the repository using the huggingface_hub:
from huggingface_hub import snapshot_download
import pickle
# Download the entire repository from the official MCTC link
repo_path = snapshot_download(repo_id="celsofranssa/MCTC", repo_type="dataset")
# Example: Load ACM Samples and Fold 0 Training Split
with open(f"{repo_path}/ACM/samples.pkl", "rb") as f:
all_samples = pickle.load(f)
with open(f"{repo_path}/ACM/fold_0/train.pkl", "rb") as f:
train_indices = pickle.load(f)
# Resolve samples
train_set = [all_samples[idx] for idx in train_indices]
print(f"Loaded {len(train_set)} samples for training.")
Loading Cluster Data
import h5py
import numpy as np
# Load cluster centroids for ACM, Fold 0
with h5py.File(f"{repo_path}/ACM/fold_0/cluster_centroids.h5", "r") as f:
centroids = f["centroids"][:] # np.ndarray of shape (n_clusters, dim)
n_clusters = f.attrs["n_clusters"]
dim = f.attrs["dim"]
print(f"Centroids shape: {centroids.shape} | n_clusters={n_clusters}, dim={dim}")
# Load text → cluster assignments for ACM, Fold 0
with h5py.File(f"{repo_path}/ACM/fold_0/text_cluster.h5", "r") as f:
text_ids = f["text_ids"][:] # np.ndarray of text indices
cluster_ids = f["cluster_ids"][:] # np.ndarray of cluster assignments
# Reconstruct the dict {text_idx: cluster_idx}
text_to_cluster = dict(zip(text_ids.tolist(), cluster_ids.tolist()))
print(f"Loaded cluster assignments for {len(text_to_cluster)} texts.")
📊 Technical Specifications
Core Metadata Files
label_cls.pkl: Essential for analyzing model performance on infrequent labels (Tail) vs. frequent ones (Head).text_cls.pkl: Categorizes documents based on their label frequency composition.relevance_map.pkl: Provides the ground-truth mapping, indicating which labels are relevant for each text sample.
Cluster Files (per fold)
cluster_centroids.h5: Stores the Spherical K-Means centroids fitted on the development set (train + val) of each fold.- Dataset
centroids:float32array of shape(n_clusters, dim). - Attributes:
fold_idx,n_clusters,dim.
- Dataset
text_cluster.h5: Stores the cluster assignment for every text (train, val, and test) in the fold, resolved against the centroids above.- Dataset
text_ids: integer array of sample indices (gzip-compressed). - Dataset
cluster_ids: integer array of assigned cluster indices (gzip-compressed). - Attributes:
fold_idx,num_texts.
- Dataset
Clustering Methodology
The clusters were produced using Spherical K-Means via FAISS, which minimizes Euclidean distance on L2-normalized embeddings — an operation mathematically equivalent to maximizing Cosine Similarity. Key design choices:
- Fit on development set only (train + val): centroids are never influenced by test data, preserving evaluation integrity.
- Predict on all splits: train, val, and test texts are all assigned to the nearest centroid via Inner Product search on normalized vectors (
faiss.IndexFlatIP). - Reproducibility: a fixed
seed=42andniter=32are used uniformly across all folds and datasets.
🎓 Citation
If you use this benchmark collection in your research, please cite our work:
@inproceedings{CelsoFranssa_2025,
title={Muitas Classes Desbalanceadas? N{\~a}o Classifique-Ranqueie! Uma Abordagem Baseada em Retrieval-Augmented Generation (RAG)-labels para Classifica{\c{c}}{\~a}o Textual Multi-classe},
author={Fran{\c{c}}a, Celso and Nunes, Ian and Salles, Thiago and Cunha, Washington and Jallais, Gabriel and Rocha, Leonardo and Gon{\c{c}}alves, Marcos Andr{\'e}},
booktitle={Simp{\'o}sio Brasileiro de Banco de Dados (SBBD)},
pages={264--277},
year={2025},
organization={SBC}
}