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Can Persistent Homology provide an efficient alternative for Evaluation of Knowledge Graph Completion Methods?

30 January 2023
Anson Bastos
Kuldeep Singh
Abhishek Nadgeri
Johannes Hoffart
Toyotaro Suzumura
Manish Singh
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Abstract

In this paper we present a novel method, Knowledge Persistence\textit{Knowledge Persistence}Knowledge Persistence (KP\mathcal{KP}KP), for faster evaluation of Knowledge Graph (KG) completion approaches. Current ranking-based evaluation is quadratic in the size of the KG, leading to long evaluation times and consequently a high carbon footprint. KP\mathcal{KP}KP addresses this by representing the topology of the KG completion methods through the lens of topological data analysis, concretely using persistent homology. The characteristics of persistent homology allow KP\mathcal{KP}KP to evaluate the quality of the KG completion looking only at a fraction of the data. Experimental results on standard datasets show that the proposed metric is highly correlated with ranking metrics (Hits@N, MR, MRR). Performance evaluation shows that KP\mathcal{KP}KP is computationally efficient: In some cases, the evaluation time (validation+test) of a KG completion method has been reduced from 18 hours (using Hits@10) to 27 seconds (using KP\mathcal{KP}KP), and on average (across methods & data) reduces the evaluation time (validation+test) by ≈\approx≈ 99.96%\textbf{99.96}\%99.96%.

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