LGCVDec 5, 2024

Quantized and Interpretable Learning Scheme for Deep Neural Networks in Classification Task

arXiv:2412.03915v14 citationsh-index: 2CICT
Originality Incremental advance
AI Analysis

This work addresses the problem of high computational demands and low interpretability for deep learning models in resource-limited settings, representing an incremental improvement.

The paper tackles the challenge of deploying deep neural networks in resource-constrained environments by combining saliency-guided training with quantization techniques, resulting in models that maintain classification accuracy while improving efficiency and interpretability on MNIST and CIFAR-10 datasets.

Deep learning techniques have proven highly effective in image classification, but their deployment in resourceconstrained environments remains challenging due to high computational demands. Furthermore, their interpretability is of high importance which demands even more available resources. In this work, we introduce an approach that combines saliency-guided training with quantization techniques to create an interpretable and resource-efficient model without compromising accuracy. We utilize Parameterized Clipping Activation (PACT) to perform quantization-aware training, specifically targeting activations and weights to optimize precision while minimizing resource usage. Concurrently, saliency-guided training is employed to enhance interpretability by iteratively masking features with low gradient values, leading to more focused and meaningful saliency maps. This training procedure helps in mitigating noisy gradients and yields models that provide clearer, more interpretable insights into their decision-making processes. To evaluate the impact of our approach, we conduct experiments using famous Convolutional Neural Networks (CNN) architecture on the MNIST and CIFAR-10 benchmark datasets as two popular datasets. We compare the saliency maps generated by standard and quantized models to assess the influence of quantization on both interpretability and classification accuracy. Our results demonstrate that the combined use of saliency-guided training and PACT-based quantization not only maintains classification performance but also produces models that are significantly more efficient and interpretable, making them suitable for deployment in resource-limited settings.

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