Schema engineering for enterprise knowledge graphs: A reflecting survey and case study

Author(s):  
Jonas Jetschni ◽  
Vera G. Meister
Keyword(s):  
Semantic Web ◽  
2021 ◽  
pp. 1-20
Author(s):  
Pierre Monnin ◽  
Chedy Raïssi ◽  
Amedeo Napoli ◽  
Adrien Coulet

Knowledge graphs are freely aggregated, published, and edited in the Web of data, and thus may overlap. Hence, a key task resides in aligning (or matching) their content. This task encompasses the identification, within an aggregated knowledge graph, of nodes that are equivalent, more specific, or weakly related. In this article, we propose to match nodes within a knowledge graph by (i) learning node embeddings with Graph Convolutional Networks such that similar nodes have low distances in the embedding space, and (ii) clustering nodes based on their embeddings, in order to suggest alignment relations between nodes of a same cluster. We conducted experiments with this approach on the real world application of aligning knowledge in the field of pharmacogenomics, which motivated our study. We particularly investigated the interplay between domain knowledge and GCN models with the two following focuses. First, we applied inference rules associated with domain knowledge, independently or combined, before learning node embeddings, and we measured the improvements in matching results. Second, while our GCN model is agnostic to the exact alignment relations (e.g., equivalence, weak similarity), we observed that distances in the embedding space are coherent with the “strength” of these different relations (e.g., smaller distances for equivalences), letting us considering clustering and distances in the embedding space as a means to suggest alignment relations in our case study.


Author(s):  
Ilaria Tiddi ◽  
Daniel Balliet ◽  
Annette ten Teije

Author(s):  
Jorge Martinez-Gil ◽  
Riad Mokadem ◽  
Franck Morvan ◽  
Josef Küng ◽  
Abdelkader Hameurlain

Author(s):  
Mariam Alaverdian ◽  
William Gilroy ◽  
Veronica Kirgios ◽  
Xia Li ◽  
Carolina Matuk ◽  
...  

2019 ◽  
Vol 59 ◽  
pp. 100486 ◽  
Author(s):  
W.X. Wilcke ◽  
V. de Boer ◽  
M.T.M. de Kleijn ◽  
F.A.H. van Harmelen ◽  
H.J. Scholten

2021 ◽  
pp. 106-124
Author(s):  
Bernardo Alkmim ◽  
Edward Haeusler ◽  
Daniel Schwabe

Author(s):  
Yukun Jiang ◽  
Xin Gao ◽  
Wenxin Su ◽  
Jinrong Li

Construction safety standards (CSS) have knowledge characteristics, but few studies have introduced knowledge graphs (KG) as a tool into CSS management. In order to improve CSS knowledge management, this paper first analyzed the knowledge structure of 218 standards and obtained three knowledge levels of CSS. Second, a concept layer was designed which consisted of five levels of concepts and eight types of relationships. Third, an entity layer containing 147 entities was constructed via entity identification, attribute extraction and entity extraction. Finally, 177 nodes and 11 types of attributes were collected and the construction of a knowledge graph of construction safety standard (KGCSS) was completed using knowledge storage. Furthermore, we implemented knowledge inference and obtained CSS planning, i.e., the list of standard work plans used to guide the development and revision of CSS. In addition, we conducted CSS knowledge retrieval; a process which supports interrogative input. The construction of KGCSS thus facilitates the analysis, querying, and sharing of safety standards knowledge.


Algorithms ◽  
2021 ◽  
Vol 14 (8) ◽  
pp. 241
Author(s):  
Lan Huang ◽  
Yuanwei Zhao ◽  
Bo Wang ◽  
Dongxu Zhang ◽  
Rui Zhang ◽  
...  

Knowledge graph-based data integration is a practical methodology for heterogeneous legacy database-integrated service construction. However, it is neither efficient nor economical to build a new cross-domain knowledge graph on top of the schemas of each legacy database for the specific integration application rather than reusing the existing high-quality knowledge graphs. Consequently, a question arises as to whether the existing knowledge graph is compatible with cross-domain queries and with heterogenous schemas of the legacy systems. An effective criterion is urgently needed in order to evaluate such compatibility as it limits the quality upbound of the integration. This research studies the semantic similarity of the schemas from the aspect of properties. It provides a set of in-depth criteria, namely coverage and flexibility, to evaluate the pairwise compatibility between the schemas. It takes advantage of the properties of knowledge graphs to evaluate the overlaps between schemas and defines the weights of entity types in order to perform precise compatibility computation. The effectiveness of the criteria obtained to evaluate the compatibility between knowledge graphs and cross-domain queries is demonstrated using a case study.


2018 ◽  
Author(s):  
W.X. Wilcke ◽  
V. de Boer ◽  
M.T.M. de Kleijn ◽  
F.A.H. van Harmelen ◽  
H.J. Scholten

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