|国家预印本平台
首页|On the Costs and Benefits of Learned Indexing for Dynamic High-Dimensional Data: Extended Version

On the Costs and Benefits of Learned Indexing for Dynamic High-Dimensional Data: Extended Version

On the Costs and Benefits of Learned Indexing for Dynamic High-Dimensional Data: Extended Version

来源:Arxiv_logoArxiv
英文摘要

One of the main challenges within the growing research area of learned indexing is the lack of adaptability to dynamically expanding datasets. This paper explores the dynamization of a static learned index for complex data through operations such as node splitting and broadening, enabling efficient adaptation to new data. Furthermore, we evaluate the trade-offs between static and dynamic approaches by introducing an amortized cost model to assess query performance in tandem with the build costs of the index structure, enabling experimental determination of when a dynamic learned index outperforms its static counterpart. We apply the dynamization method to a static learned index and demonstrate that its superior scaling quickly surpasses the static implementation in terms of overall costs as the database grows. This is an extended version of the paper presented at DAWAK 2025.

Terézia Slanináková、Jaroslav Olha、David Procházka、Matej Antol、Vlastislav Dohnal

计算技术、计算机技术

Terézia Slanináková,Jaroslav Olha,David Procházka,Matej Antol,Vlastislav Dohnal.On the Costs and Benefits of Learned Indexing for Dynamic High-Dimensional Data: Extended Version[EB/OL].(2025-07-08)[2025-07-25].https://arxiv.org/abs/2507.05865.点此复制

评论