Knowledge Distillation: Enhancing Neural Network Compression with Integrated Gradients
Journal:
arXiv
Published Date:
Mar 17, 2025
Abstract
Efficient deployment of deep neural networks on resource-constrained devices
demands advanced compression techniques that preserve accuracy and
interoperability. This paper proposes a machine learning framework that
augments Knowledge Distillation (KD) with Integrated Gradients (IG), an
attribution method, to optimise the compression of convolutional neural
networks. We introduce a novel data augmentation strategy where IG maps,
precomputed from a teacher model, are overlaid onto training images to guide a
compact student model toward critical feature representations. This approach
leverages the teacher's decision-making insights, enhancing the student's
ability to replicate complex patterns with reduced parameters. Experiments on
CIFAR-10 demonstrate the efficacy of our method: a student model, compressed
4.1-fold from the MobileNet-V2 teacher, achieves 92.5% classification accuracy,
surpassing the baseline student's 91.4% and traditional KD approaches, while
reducing inference latency from 140 ms to 13 ms--a tenfold speedup. We perform
hyperparameter optimisation for efficient learning. Comprehensive ablation
studies dissect the contributions of KD and IG, revealing synergistic effects
that boost both performance and model explainability. Our method's emphasis on
feature-level guidance via IG distinguishes it from conventional KD, offering a
data-driven solution for mining transferable knowledge in neural architectures.
This work contributes to machine learning by providing a scalable,
interpretable compression technique, ideal for edge computing applications
where efficiency and transparency are paramount.