VITA: Versatile Time Representation Learning for Temporal Hyper-Relational Knowledge Graphs
ChongIn Un, Yuhuan Lu, Tianyue Yang, Dingqi Yang

TL;DR
VITA introduces a flexible time representation learning method for temporal hyper-relational knowledge graphs, effectively capturing various types of temporal validity to improve link prediction accuracy significantly.
Contribution
The paper proposes a novel versatile time representation that handles all four types of temporal validity and learns from both time value and timespan, advancing temporal KG modeling.
Findings
VITA outperforms baselines by up to 75.3% in link prediction tasks.
Effective modeling of all four types of temporal validity.
Thorough evaluation and ablation studies validate key design choices.
Abstract
Knowledge graphs (KGs) have become an effective paradigm for managing real-world facts, which are not only complex but also dynamically evolve over time. The temporal validity of facts often serves as a strong clue in downstream link prediction tasks, which predicts a missing element in a fact. Traditional link prediction techniques on temporal KGs either consider a sequence of temporal snapshots of KGs with an ad-hoc defined time interval or expand a temporal fact over its validity period under a predefined time granularity; these approaches not only suffer from the sensitivity of the selection of time interval/granularity, but also face the computational challenges when handling facts with long (even infinite) validity. Although the recent hyper-relational KGs represent the temporal validity of a fact as qualifiers describing the fact, it is still suboptimal due to its ignorance of…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Bioinformatics and Genomic Networks · Machine Learning in Healthcare
