CVAIJan 13, 2025

Dataset Distillation via Committee Voting

arXiv:2501.07575v111 citationsh-index: 4Has Code
Originality Incremental advance
AI Analysis

This work addresses the problem of efficient model training for researchers and practitioners by providing a more robust distilled dataset method, though it is incremental as it builds on prior distillation approaches.

The paper tackles dataset distillation by introducing Committee Voting for Dataset Distillation (CV-DD), which uses multiple models to create distilled datasets, resulting in improved generalization and reduced overfitting, with experiments showing it outperforms existing methods across various datasets.

Dataset distillation aims to synthesize a smaller, representative dataset that preserves the essential properties of the original data, enabling efficient model training with reduced computational resources. Prior work has primarily focused on improving the alignment or matching process between original and synthetic data, or on enhancing the efficiency of distilling large datasets. In this work, we introduce ${\bf C}$ommittee ${\bf V}$oting for ${\bf D}$ataset ${\bf D}$istillation (CV-DD), a novel and orthogonal approach that leverages the collective wisdom of multiple models or experts to create high-quality distilled datasets. We start by showing how to establish a strong baseline that already achieves state-of-the-art accuracy through leveraging recent advancements and thoughtful adjustments in model design and optimization processes. By integrating distributions and predictions from a committee of models while generating high-quality soft labels, our method captures a wider spectrum of data features, reduces model-specific biases and the adverse effects of distribution shifts, leading to significant improvements in generalization. This voting-based strategy not only promotes diversity and robustness within the distilled dataset but also significantly reduces overfitting, resulting in improved performance on post-eval tasks. Extensive experiments across various datasets and IPCs (images per class) demonstrate that Committee Voting leads to more reliable and adaptable distilled data compared to single/multi-model distillation methods, demonstrating its potential for efficient and accurate dataset distillation. Code is available at: https://github.com/Jiacheng8/CV-DD.

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