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Kernel Machine Classification Using Universal Embeddings

机译:使用通用嵌入的内核机器分类

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Summary form only given. Visual inference over a transmission channel is increasingly becoming an important problem in a variety of applications. In such applications, low latency and bit-rate consumption are often critical performance metrics, making data compression necessary. In this paper, we examine feature compression for support vector machine (SVM)-based inference using quantized randomized embeddings. We demonstrate that embedding the features is equivalent to using the SVM kernel trick with a mapping to a lower dimensional space. Furthermore, we show that universal embeddings - a recently proposed quantized embedding design - approximate a radial basis function (RBF) kernel, commonly used for kernel-based inference. Our experimental results demonstrate that quantized embeddings achieve 50% rate reduction, while maintaining the same inference performance. Moreover, universal embeddings achieve a further reduction in bit-rate over conventional quantized embedding methods, validating the theoretical predictions.
机译:仅提供摘要表格。在各种应用中,通过传输通道进行视觉推断正日益成为重要的问题。在此类应用中,低等待时间和比特率消耗通常是关键的性能指标,因此需要进行数据压缩。在本文中,我们使用量化的随机嵌入检查了基于支持向量机(SVM)的推理的特征压缩。我们证明了嵌入功能等同于使用SVM内核技巧并映射到较低维度的空间。此外,我们显示通用嵌入-一种最近提出的量化嵌入设计-近似通常用于基于内核的推理的径向基函数(RBF)内核。我们的实验结果表明,量化嵌入可将速率降低50%,同时保持相同的推理性能。而且,与传统的量化嵌入方法相比,通用嵌入实现了比特率的进一步降低,从而验证了理论预测。

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