VISE-KG

VISE: Validated and Invalidated Symbolic Explanations for Knowledge Graph Integrity

This collection includes all the data necessary to reproduce the results from the experimental evaluation of VISE at EXPLIMED @ ECAI'24. The data is an anonymized synthetic lung cancer benchmark that comprises clinical data extracted from heterogeneous sources such as publications, clinical trials, and clinical records representing patients diagnosed with lung cancer. We evaluate the VISE approach on three anonymized Lung Cancer KGs: LC-𝐾𝐺1, LC-𝐾𝐺2,and LC-𝐾𝐺3

The collection comprises nine data sets of three different sizes:

  • LC Knowledge Graph 1 (LC-KG1) models 29 lung cancer patients
  • LC Knowledge Graph 2 (LC-KG2) models 203 lung cancer patients
  • LC Knowledge Graph 3 (LC-KG3) models 319 lung cancer patients

Three distinct KGs of different sizes are available, each with its own characteristics.

  • "Original KG": The original KG comprises anonymized lung cancer patients with different medical characteristics.
  • "Enriched KG": Utilizes an inductive learning technique of KG completion through self-supervised symbolic learning over the original KG.
  • "Transformed KG": Denotes a transformation of the KG depending on SHACL shapes evaluated across the enriched KGs. This procedure is used to determine the validity of the data.

VISE is also evaluated with KGs comprising 1242 lung cancer patients (LungCancer-OriginalKG, LungCancer-EnrichedKG, and LungCancer-TransformedKG).

Our experimental results demonstrate the effectiveness of this hybrid strategy, which combines the strengths of symbolic, numerical, and constraint validation paradigms.

Daten und Ressourcen

Zitieren als

Disha Purohit, Yashrajsinh Chudasama, Maria Torrente, Maria-Esther Vidal (2024). Datensatz: VISE-KG. https://doi.org/10.57702/w3ghyku2

DOI abgerufen: 14. September 2024

Zusätzliche Informationen

Feld Wert
Erstellt 14. September 2024
Letzte Aktualisierung 1. Oktober 2024
Lizenz cc-by: Creative Commons Attribution
Quelle https://github.com/SDM-TIB/VISE
Autor Disha Purohit
Weitere Autoren
Yashrajsinh Chudasama
Maria Torrente
Maria-Esther Vidal
E-Mail des Autors Disha Purohit
Verantwortlicher Disha Purohit
E-Mail des Verantwortlichen Disha Purohit
Sprache English
Access Rights Public