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Knowledge Graph Completion for Action Prediction on Situational Graphs -- A Case Study on Household Tasks

Mariam Arustashvili, Jörg Deigmöller, Heiko Paulheim

Year
2025
Access
Open access

Abstract

Knowledge Graphs are used for various purposes, including business applications, biomedical analyses, or digital twins in industry 4.0. In this paper, we investigate knowledge graphs describing household actions, which are beneficial for controlling household robots and analyzing video footage. In the latter case, the information extracted from videos is notoriously incomplete, and completing the knowledge graph for enhancing the situational picture is essential. In this paper, we show that, while a standard link prediction problem, situational knowledge graphs have special characteristics that render many link prediction algorithms not fit for the job, and unable to outperform even simple baselines.

Keywords

cs.AI

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