一种基于边缘架构的支持向量机模型划分框架

Mansi Sahi, Md. Al Maruf, Akramul Azim, Nitin Auluck
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引用次数: 0

摘要

当前的物联网应用产生了大量复杂的数据,这些数据需要敏捷分析才能获得深刻的见解,通常是通过应用机器学习(ML)技术。支持向量机(SVM)就是这样一种机器学习技术,已被用于目标检测、图像分类、文本分类和模式识别。然而,在大数据上训练一个简单的SVM模型需要耗费大量的计算时间。因此,模型无法实时做出反应和适应。迫切需要加快培训进程。由于组织通常使用云进行数据处理,因此加快培训过程具有降低成本的优势。本文提出了一种模型划分方法,将基于随机梯度下降的支持向量机(SGD-SVM)的任务划分到不同的边缘设备上进行并发计算,从而显著减少了训练时间。与集中式云方法相比,所提出的划分机制不仅减少了训练时间,而且保持了近似的精度。为了开发智能目标检测系统,我们在基于边缘的体系结构上使用SGD-SVM进行了实验,以评估所提出方法的性能。结果表明,该方法将训练时间缩短了47%,准确率降低了2%,并提供了最优的分区数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Framework for Partitioning Support Vector Machine Models on Edge Architectures
Current IoT applications generate huge volumes of complex data that requires agile analysis in order to obtain deep insights, often by applying Machine Learning (ML) techniques. Support vector machine (SVM) is one such ML technique that has been used in object detection, image classification, text categorization and Pattern Recognition. However, training even a simple SVM model on big data takes a significant amount of computational time. Due to this, the model is unable to react and adapt in real-time. There is an urgent need to speedup the training process. Since organizations typically use the cloud for this data processing, accelerating the training process has the advantage of bringing down costs. In this paper, we propose a model partitioning approach that partitions the tasks of Stochastic Gradient Descent based Support Vector Machines (SGD-SVM) on various edge devices for concurrent computation, thus reducing the training time significantly. The proposed partitioning mechanism not only brings down the training time but also maintains the approximate accuracy over the centralized cloud approach. With a goal of developing a smart objection detection system, we conduct experiments to evaluate the performance of the proposed method using SGD-SVM on an edge based architecture. The results illustrate that the proposed approach significantly reduces the training time by 47%, while decreasing the accuracy by 2%, and offering an optimal number of partitions.
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