A New Hardware Approach to Self-Organizing Maps

L. Dias, M. G. Coutinho, E. Gaura, Marcelo A. C. Fernandes
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引用次数: 2

Abstract

Self-Organizing Maps (SOMs) are widely used as a data mining technique for applications that require data dimensionality reduction and clustering. Given the complexity of the SOM learning phase and the massive dimensionality of many data sets as well as their sample size in Big Data applications, high-speed processing is critical when implementing SOM approaches. This paper proposes a new hardware approach to SOM implementation, exploiting parallelization, to optimize the system’s processing time. Unlike most implementations in the literature, this proposed approach allows the parallelization of the data dimensions instead of the map, ensuring high processing speed regardless of data dimensions. An implementation with field-programmable gate arrays (FPGA) is presented and evaluated. Key evaluation metrics are processing time (or throughput) and FPGA area occupancy (or hardware resources).
自组织地图的一种新的硬件方法
自组织映射(SOMs)作为一种数据挖掘技术被广泛用于需要数据降维和聚类的应用程序。考虑到SOM学习阶段的复杂性,以及大数据应用中许多数据集的巨大维度及其样本量,在实施SOM方法时,高速处理至关重要。本文提出了一种新的SOM硬件实现方法,利用并行化来优化系统的处理时间。与文献中的大多数实现不同,这种建议的方法允许并行化数据维度而不是映射,从而确保无论数据维度如何都具有高处理速度。提出了一种现场可编程门阵列(FPGA)实现方法,并对其进行了评价。关键的评估指标是处理时间(或吞吐量)和FPGA区域占用(或硬件资源)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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