TL;DR
This paper presents CtrlHGen, a framework for controllable logical hypothesis generation in knowledge graphs, improving relevance and adherence to user constraints through a two-stage learning process.
Contribution
It introduces a novel controllable hypothesis generation task and a two-stage training framework with dataset augmentation and semantic rewards for abductive reasoning.
Findings
Better adherence to control conditions than baselines
Achieves superior semantic similarity performance
Effectively handles complex logical hypothesis generation
Abstract
Abductive reasoning in knowledge graphs aims to generate plausible logical hypotheses from observed entities, with broad applications in areas such as clinical diagnosis and scientific discovery. However, due to a lack of controllability, a single observation may yield numerous plausible but redundant or irrelevant hypotheses on large-scale knowledge graphs. To address this limitation, we introduce the task of controllable hypothesis generation to improve the practical utility of abductive reasoning. This task faces two key challenges when controlling for generating long and complex logical hypotheses: hypothesis space collapse and hypothesis oversensitivity. To address these challenges, we propose CtrlHGen, a Controllable logcial Hypothesis Generation framework for abductive reasoning over knowledge graphs, trained in a two-stage paradigm including supervised learning and subsequent…
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Code & Models
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