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Specialized Embedding Approximation for Edge Intelligence: A Case Study in Urban Sound Classification

机译:边缘情报专门嵌入近似:城市声音分类的案例研究

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Embedding models that encode semantic information into low-dimensional vector representations are useful in various machine learning tasks with limited training data. However, these models are typically too large to support inference in small edge devices, which motivates training of smaller yet comparably predictive student embedding models through knowledge distillation (KD). While knowledge distillation traditionally uses the teacher’s original training dataset to train the student, we hypothesize that using a dataset similar to the student’s target domain allows for better compression and training efficiency for the said domain, at the cost of reduced generality across other (non-pertinent) domains. Hence, we introduce Specialized Embedding Approximation (SEA) to train a student featurizer to approximate the teacher’s embedding manifold for a given target domain. We demonstrate the feasibility of SEA in the context of acoustic event classification for urban noise monitoring and show that leveraging a dataset related to this target domain not only improves the baseline performance of the original embedding model but also yields competitive students with >1 order of magnitude lesser storage and activation memory. We further investigate the impact of using random and informed sampling techniques for dimensionality reduction in SEA.
机译:将语义信息编码成低维矢量表示的嵌入模型对于具有有限训练数据的机器学习任务是有用的。然而,这些模型通常太大,不能通过知识蒸馏(KD)激励较小且相当预测的学生嵌入模型的训练。虽然知识蒸馏传统上使用教师的原始培训数据集来训练学生,但我们假设使用类似于学生的目标域的数据集允许对所述域的更好的压缩和培训效率,以减少越野(非相关的)域。因此,我们介绍了专门的嵌入近似(海),培训学生Featurizer以估计教师的嵌入式歧管,用于给定的目标域。我们展示了海洋在城市噪声监测的声学事件分类中的可行性,并显示利用与该目标域相关的数据集不仅可以提高原始嵌入模型的基线性能,而且还产生了竞争力的学生> 1级存储和激活内存较小。我们进一步调查了使用随机和知情采样技术对海上的维数减少的影响。

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