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Visualizing Compression of Deep Learning Models for Classification

机译:可视化对分类深度学习模型的压缩

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Deep learning models have made great strides in tasks like classification and object detection. However, these models are often computationally intensive, require vast amounts of data in the domain, and typically contain millions or even billions of parameters. They are also relative black-boxes when it comes to being able to interpret and analyze their functionality on data or evaluating the suitability of the network for the data that is available. To address these issues, we investigate compression techniques available off-the-shelf that aid in reducing the dimensionality of the parameter space within a Convolutional Neural Network. In this way, compression will allow us to interpret and evaluate the network more efficiently as only important features will be propagated throughout the network.
机译:深度学习模型在分类和对象检测等任务中取得了很大的进步。但是,这些模型通常是计算密集型的,需要域中的大量数据,通常包含数百万或甚至数十亿个参数。当能够解释和分析数据的功能或评估网络的适用性时,它们也是相对的黑色盒子。为了解决这些问题,我们调查可提供的压缩技术,帮助降低卷积神经网络内参数空间的维度。通过这种方式,压缩将允许我们更有效地解释和评估网络,因为只有在整个网络中传播的重要功能。

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