English

A Hypergraph-Based Framework for Exploratory Business Intelligence

Databases 2026-03-27 v2 Information Retrieval

Abstract

Business Intelligence (BI) analysis is evolving towards Exploratory BI, an iterative, multi-round exploration paradigm where analysts progressively refine their understanding. However, traditional BI systems impose critical limits for Exploratory BI: heavy reliance on expert knowledge, high computational costs, static schemas, and lack of reusability. We present ExBI, a novel system that introduces the hypergraph data model with operators, including Source, Join, and View, to enable dynamic schema evolution and materialized view reuse. Using sampling-based algorithms with provable estimation guarantees, ExBI addresses the computational bottlenecks, while maintaining analytical accuracy. Experiments on LDBC datasets demonstrate that ExBI achieves significant speedups over existing systems: on average 16.21x (up to 146.25x) compared to Neo4j and 46.67x (up to 230.53x) compared to MySQL, while maintaining high accuracy with an average error rate of only 0.27% for COUNT, enabling efficient and accurate large-scale exploratory BI workflows.

Keywords

Cite

@article{arxiv.2603.10625,
  title  = {A Hypergraph-Based Framework for Exploratory Business Intelligence},
  author = {Yunkai Lou and Shunyang Li and Longbin Lai and Jianke Yu and Wenyuan Yu and Ying Zhang},
  journal= {arXiv preprint arXiv:2603.10625},
  year   = {2026}
}
R2 v1 2026-07-01T11:14:27.891Z