Redirigiendo al acceso original de articulo en 23 segundos...
Inicio  /  Algorithms  /  Vol: 16 Par: 1 (2023)  /  Artículo
ARTÍCULO
TITULO

SumMER: Structural Summarization for RDF/S KGs

Georgia Eirini Trouli    
Alexandros Pappas    
Georgia Troullinou    
Lefteris Koumakis    
Nikos Papadakis and Haridimos Kondylakis    

Resumen

Knowledge graphs are becoming more and more prevalent on the web, ranging from small taxonomies, to large knowledge bases containing a vast amount of information. To construct such knowledge graphs either automatically or manually, tools are necessary for their quick exploration and understanding. Semantic summaries have been proposed as a key technology enabling the quick understanding and exploration of large knowledge graphs. Among the methods proposed for generating summaries, structural methods exploit primarily the structure of the graph in order to generate the result summaries. Approaches in the area focus on identifying the most important nodes and usually employ a single centrality measure, capturing a specific perspective on the notion of a node?s importance. Moving from one centrality measure to many however, has the potential to generate a more objective view on nodes? importance, leading to better summaries. In this paper, we present SumMER, the first structural summarization technique exploiting machine learning techniques for RDF/S KGs. SumMER explores eight centrality measures and then exploits machine learning techniques for optimally selecting the most important nodes. Then those nodes are linked formulating a subgraph out of the original graph. We experimentally show that combining centrality measures with machine learning effectively increases the quality of the generated summaries.

Palabras claves

 Artículos similares

       
 
Alexandros Z. Spyropoulos, Evangelos Ioannidis and Ioannis Antoniou    
The early intervention of law enforcement authorities to prevent an impending terrorist attack is of utmost importance to ensuring economic, financial, and social stability. From our previously published research, the key individuals who play a vital rol... ver más
Revista: Information

 
S.A. Klyatetskiy     Pág. 65 - 73
The article is about problem solving of creating an adaptive organizational IT structure of the engineering division of State Atomic Energy Corporation Rosatom.The relevance of this work is caused by the increase of simultaneously constructing nuclear po... ver más

 
Stefania Manca    
With the passing of the last testimonies, Holocaust remembrance and Holocaust education progressively rely on digital technologies to engage people in immersive, simulative, and even counterfactual memories of the Holocaust. This preliminary study invest... ver más
Revista: Information

 
Kuan Liu, Haiyuan Liu, Dongyan Sun and Lei Zhang    
The reconstruction of gene regulatory networks based on gene expression data can effectively uncover regulatory relationships between genes and provide a deeper understanding of biological control processes. Non-linear dependence is a common problem in t... ver más
Revista: Algorithms

 
Christos Makris, Georgios Pispirigos and Ioannis Orestis Rizos    
Presently, due to the extended availability of gigantic information networks and the beneficial application of graph analysis in various scientific fields, the necessity for efficient and highly scalable community detection algorithms has never been more... ver más
Revista: Information