神经网络在高效学习指标设计中的适用性研究

Domenico Amato, Giosuè Lo Bosco, Raffaele Giancarlo
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引用次数: 3

摘要

为了在经典数据结构中获得时间/空间上的改进,将机器学习技术与数据结构的技术相结合是一个新兴的趋势。这个新领域被命名为“学习数据结构”。其研究的动机是计算机体系结构范式的变化,这将有利于使用图形处理单元和张量处理单元,而不是传统的中央处理单元。反过来,这将有利于使用神经网络作为经典数据结构的构建块。事实上,作为学习数据结构的主要支柱之一,学习布隆过滤器广泛使用神经网络来改进经典过滤器的性能。然而,在学习索引领域中还没有使用神经网络的报道,而学习索引是该新领域的另一个主要支柱。在这个贡献中,我们提供了第一个,也是非常需要的,关于使用神经网络作为学习索引的构建块的比较实验分析。这里报告的结果强调了为学习索引量身定制非常专业的神经网络的设计需求,并为这些开发奠定了坚实的基础。我们的研究结果在方法上很重要,对于从事神经网络设计和实现的科学家和工程师都很感兴趣,同时也考虑到所涉及的应用领域的重要性,例如计算机网络和数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Suitability of Neural Networks as Building Blocks for The Design of Efficient Learned Indexes
With the aim of obtaining time/space improvements in classic Data Structures, an emerging trend is to combine Machine Learning techniques with the ones proper of Data Structures. This new area goes under the name of Learned Data Structures. The motivation for its study is a perceived change of paradigm in Computer Architectures that would favour the use of Graphics Processing Units and Tensor Processing Units over conventional Central Processing Units. In turn, that would favour the use of Neural Networks as building blocks of Classic Data Structures. Indeed, Learned Bloom Filters, which are one of the main pillars of Learned Data Structures, make extensive use of Neural Networks to improve the performance of classic Filters. However, no use of Neural Networks is reported in the realm of Learned Indexes, which is another main pillar of that new area. In this contribution, we provide the first, and much needed, comparative experimental analysis regarding the use of Neural Networks as building blocks of Learned Indexes. The results reported here highlight the need for the design of very specialized Neural Networks tailored to Learned Indexes and it establishes a solid ground for those developments. Our findings, methodologically important, are of interest to both Scientists and Engineers working in Neural Networks Design and Implementation, in view also of the importance of the application areas involved, e.g., Computer Networks and Data Bases.
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