Piecewise Linear Approximation in Learned Index Structures: Theoretical and Empirical Analysis
Abstract
A growing trend in the database and system communities is to augment conventional index structures, such as B+-trees, with machine learning (ML) models. Among these, error-bounded Piecewise Linear Approximation (-PLA) has emerged as a popular choice due to its simplicity and effectiveness. Despite its central role in many learned indexes, the design and analysis of -PLA fitting algorithms remain underexplored. In this paper, we revisit -PLA from both theoretical and empirical perspectives, with a focus on its application in learned index structures. We first establish a fundamentally improved lower bound of on the expected segment coverage for existing -PLA fitting algorithms, where is a data-dependent constant. We then present a comprehensive benchmark of state-of-the-art -PLA algorithms when used in different learned data structures. Our results highlight key trade-offs among model accuracy, model size, and query performance, providing actionable guidelines for the principled design of future learned data structures.
Cite
@article{arxiv.2506.20139,
title = {Piecewise Linear Approximation in Learned Index Structures: Theoretical and Empirical Analysis},
author = {Jiayong Qin and Xianyu Zhu and Qiyu Liu and Guangyi Zhang and Zhigang Cai and Jianwei Liao and Sha Hu and Jingshu Peng and Yingxia Shao and Lei Chen},
journal= {arXiv preprint arXiv:2506.20139},
year = {2025}
}