TL;DR
This paper introduces Triple Set Prediction (TSP), a new task for automatic knowledge graph completion that predicts missing triples without prior element knowledge, along with evaluation metrics and a fast subgraph-based prediction method.
Contribution
It proposes the TSP task, new evaluation metrics, and the GPHT method, advancing knowledge graph completion by predicting entire missing triple sets efficiently.
Findings
GPHT outperforms baseline methods in prediction speed.
Methods achieve reasonable accuracy on TSP.
New datasets demonstrate effectiveness of the approach.
Abstract
Knowledge graph (KG) completion aims to find out missing triples in a KG. Some tasks, such as link prediction and instance completion, have been proposed for KG completion. They are triple-level tasks with some elements in a missing triple given to predict the missing element of the triple. However, knowing some elements of the missing triple in advance is not always a realistic setting. In this paper, we propose a novel graph-level automatic KG completion task called Triple Set Prediction (TSP) which assumes none of the elements in the missing triples is given. TSP is to predict a set of missing triples given a set of known triples. To properly and accurately evaluate this new task, we propose 4 evaluation metrics including 3 classification metrics and 1 ranking metric, considering both the partial-open-world and the closed-world assumptions. Furthermore, to tackle the huge candidate…
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Taxonomy
MethodsSparse Evolutionary Training
