Saved in:
Bibliographic Details
Main Authors: Yang, Jinyu, Yang, Cheng, Chen, Junze, Liu, Zedi, Zhang, Muhan, Peng, Hanyang, Shi, Chuan
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.23241
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910247547830272
author Yang, Jinyu
Yang, Cheng
Chen, Junze
Liu, Zedi
Zhang, Muhan
Peng, Hanyang
Shi, Chuan
author_facet Yang, Jinyu
Yang, Cheng
Chen, Junze
Liu, Zedi
Zhang, Muhan
Peng, Hanyang
Shi, Chuan
contents Relational databases (RDBs) remain the cornerstone of modern data systems and support diverse predictive tasks. Recent relational deep learning (RDL) methods enable end-to-end prediction by converting RDBs into graphs, where rows are represented as nodes and inter-table interactions are represented as edges, and then applying graph-based models for representation learning. Despite the strong capability of RDL, effective self-supervised pre-training for RDBs remains non-trivial. RDB tasks often require multi-faceted information across different perspectives and granularities. For example, user churn classification may rely more on interaction patterns, whereas consumption value prediction requires both user-item behaviors and intrinsic user attributes for fine-grained regression. Such heterogeneous needs challenge RDB representation learning, as pre-training objectives should cover comprehensive information for downstream adaptation. However, existing SSL methods typically derive supervision from a single facet, such as node-level intrinsic attributes or subgraph-level relational structures, providing limited adaptability. To this end, we propose RelPrism, a multi-faceted self-supervised learning framework for RDBs. RelPrism constructs intrinsic, relational, and hybrid attributes from distinct perspectives, and applies multi-granularity clustering to each perspective to form corresponding pseudo-task pools. Pre-training over these pools exposes representations to broader perspectives and granularity levels, yielding a stronger basis for downstream adaptation. Experiments on 14 tasks across 5 real-world datasets show that RelPrism improves ROC-AUC by 4.15% for classification and reduces MAE by 10.75% for regression over state-of-the-art baselines. Our code is available at https://anonymous.4open.science/r/RelPrism.
format Preprint
id arxiv_https___arxiv_org_abs_2605_23241
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle RelPrism: A Multi-Faceted Pre-training Framework with Self-Generated Tasks for Relational Databases
Yang, Jinyu
Yang, Cheng
Chen, Junze
Liu, Zedi
Zhang, Muhan
Peng, Hanyang
Shi, Chuan
Machine Learning
Relational databases (RDBs) remain the cornerstone of modern data systems and support diverse predictive tasks. Recent relational deep learning (RDL) methods enable end-to-end prediction by converting RDBs into graphs, where rows are represented as nodes and inter-table interactions are represented as edges, and then applying graph-based models for representation learning. Despite the strong capability of RDL, effective self-supervised pre-training for RDBs remains non-trivial. RDB tasks often require multi-faceted information across different perspectives and granularities. For example, user churn classification may rely more on interaction patterns, whereas consumption value prediction requires both user-item behaviors and intrinsic user attributes for fine-grained regression. Such heterogeneous needs challenge RDB representation learning, as pre-training objectives should cover comprehensive information for downstream adaptation. However, existing SSL methods typically derive supervision from a single facet, such as node-level intrinsic attributes or subgraph-level relational structures, providing limited adaptability. To this end, we propose RelPrism, a multi-faceted self-supervised learning framework for RDBs. RelPrism constructs intrinsic, relational, and hybrid attributes from distinct perspectives, and applies multi-granularity clustering to each perspective to form corresponding pseudo-task pools. Pre-training over these pools exposes representations to broader perspectives and granularity levels, yielding a stronger basis for downstream adaptation. Experiments on 14 tasks across 5 real-world datasets show that RelPrism improves ROC-AUC by 4.15% for classification and reduces MAE by 10.75% for regression over state-of-the-art baselines. Our code is available at https://anonymous.4open.science/r/RelPrism.
title RelPrism: A Multi-Faceted Pre-training Framework with Self-Generated Tasks for Relational Databases
topic Machine Learning
url https://arxiv.org/abs/2605.23241