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Soft Label Pruning and Quantization for Large-Scale Dataset Distillation.

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    Dataset distillation faces storage challenges due to large soft labels. Our LPQLD method significantly reduces label size and improves accuracy for large-scale datasets like ImageNet.

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    Area of Science:

    • Computer Vision
    • Machine Learning
    • Data Compression

    Background:

    • Large-scale dataset distillation necessitates substantial storage for auxiliary soft labels, often hundreds of times larger than condensed images.
    • Existing methods are hindered by insufficient image diversity and supervision diversity, leading to performance degradation at high compression rates.

    Purpose of the Study:

    • To address the storage and performance issues in large-scale dataset distillation.
    • To propose a novel method, Label Pruning and Quantization for Large-scale Distillation (LPQLD), for efficient dataset compression.

    Main Methods:

    • Enhancing image diversity through class-wise batching and Batch Normalization (BN) supervision during synthetic data generation.
    • Improving supervision diversity via Label Pruning with Dynamic Knowledge Reuse and Label Quantization with Calibrated Student-Teacher Alignment.

    Main Results:

    • Reduced soft label storage by 78x on ImageNet-1K and 500x on ImageNet-21K.
    • Achieved accuracy improvements of up to 7.2% on ImageNet-1K and 2.8% on ImageNet-21K.
    • Demonstrated superiority across various network architectures and compared to other distillation methods.

    Conclusions:

    • LPQLD effectively overcomes the limitations of large soft label storage in dataset distillation.
    • The proposed method achieves significant compression ratios while enhancing model accuracy.
    • LPQLD represents a superior approach for efficient large-scale dataset distillation.