RadixSpline:单次学习索引

Andreas Kipf, Ryan Marcus, Alexander van Renen, Mihail Stoian, A. Kemper, Tim Kraska, Thomas Neumann
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引用次数: 112

摘要

最近的研究表明,学习模型在大小和查找性能方面优于最先进的索引结构。虽然这是一个非常有希望的结果,但现有的学习结构通常难以实现且构建缓慢。事实上,我们所知道的大多数方法都需要对数据进行多次训练。我们介绍RadixSpline (RS),这是一种学习索引,可以在一次数据传递中构建,并且在大小和查找性能方面与最先进的学习索引模型(如RMI)竞争。我们使用SOSD基准评估RS,并表明它在所有数据集上都取得了具有竞争力的结果,尽管它只有两个参数。
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RadixSpline: a single-pass learned index
Recent research has shown that learned models can outperform state-of-the-art index structures in size and lookup performance. While this is a very promising result, existing learned structures are often cumbersome to implement and are slow to build. In fact, most approaches that we are aware of require multiple training passes over the data. We introduce RadixSpline (RS), a learned index that can be built in a single pass over the data and is competitive with state-of-the-art learned index models, like RMI, in size and lookup performance. We evaluate RS using the SOSD benchmark and show that it achieves competitive results on all datasets, despite the fact that it only has two parameters.
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