Publications des scientifiques de l'IRD

Bezirganyan G., Sellami S., Berti-Equille Laure, Fournier S. (2025). LUMA : a benchmark dataset for learning from uncertain and multimodal data. Proceedings of the 48th International ACM SIGIR Conference on Research and Development in Information Retrieval, Sigir 2025, 3782-3791.

Titre du document
LUMA : a benchmark dataset for learning from uncertain and multimodal data
Année de publication
2025
Type de document
Article référencé dans le Web of Science WOS:001587983900423
Auteurs
Bezirganyan G., Sellami S., Berti-Equille Laure, Fournier S.
Source
Proceedings of the 48th International ACM SIGIR Conference on Research and Development in Information Retrieval, Sigir 2025, 2025, 3782-3791
Multimodal Deep Learning enhances decision-making by integrating diverse information sources, such as texts, images, audio, and videos. To develop trustworthy multimodal approaches, it is essential to understand how uncertainty impacts these models. We propose LUMA, a unique multimodal dataset, featuring audio, image, and textual data from 50 classes, specifically designed for learning from uncertain data. It extends the well-known CIFAR 10/100 dataset with audio samples extracted from three audio corpora, and text data generated using the Gemma-7B Large Language Model (LLM). The LUMA dataset enables the controlled injection of varying types and degrees of uncertainty to achieve and tailor specific experiments and benchmarking initiatives. LUMA is also available as a Python package including the functions for generating multiple variants of the dataset with controlling the diversity of the data, the amount of noise for each modality, and adding out-of-distribution samples. A baseline pre-trained model is also provided alongside three uncertainty quantification methods: Monte-Carlo Dropout, Deep Ensemble, and Reliable Conflictive Multi-View Learning. This comprehensive dataset and its tools are intended to promote and support the development, evaluation, and benchmarking of trustworthy and robust multimodal deep learning approaches. We anticipate that the LUMA dataset will help the research community to design more trustworthy and robust machine learning approaches for safety critical applications. The code and instructions for downloading and processing the dataset can be found at: https://github.com/bezirganyan/LUMA.
Plan de classement
Sciences fondamentales / Techniques d'analyse et de recherche [020] ; Informatique [122]
Localisation
Fonds IRD [F B010095848]
Identifiant IRD
fdi:010095848
Contact
  • Coordonnées :
    Mission Science Ouverte (MSO)
    IRD - Délégation régionale Île-de-France & Ouest
    Campus Condorcet - Hôtel à projets
    8 cours des Humanités - 93322 Aubervilliers Cedex
    Horizon Pleins textes
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