scholarly journals Mining Semantic Knowledge Graphs to Add Explainability to Black Box Recommender Systems

IEEE Access ◽  
2019 ◽  
Vol 7 ◽  
pp. 110563-110579 ◽  
Author(s):  
Mohammed Alshammari ◽  
Olfa Nasraoui ◽  
Scott Sanders
Author(s):  
Navin Tatyaba Gopal ◽  
Anish Raj Khobragade

The Knowledge graphs (KGs) catches structured data and relationships among a bunch of entities and items. Generally, constitute an attractive origin of information that can advance the recommender systems. But, present methodologies of this area depend on manual element thus don’t permit for start to end training. This article proposes, Knowledge Graph along with Label Smoothness (KG-LS) to offer better suggestions for the recommender Systems. Our methodology processes user-specific entities by prior application of a function capability that recognizes key KG-relationships for a specific user. In this manner, we change the KG in a specific-user weighted graph followed by application of a graph neural network to process customized entity embedding. To give better preliminary predisposition, label smoothness comes into picture, which places items in the KG which probably going to have identical user significant names/scores. Use of, label smoothness gives regularization above the edge weights thus; we demonstrate that it is comparable to a label propagation plan on the graph. Additionally building-up a productive usage that symbolizes solid adaptability concerning the size of knowledge graph. Experimentation on 4 datasets shows that our strategy beats best in class baselines. This process likewise accomplishes solid execution in cold start situations where user-entity communications remain meager.


2021 ◽  
Author(s):  
Tulio Vidal Rolim ◽  
Caio Viktor S. Avila ◽  
Narciso Moura A. Junior ◽  
Francisca Jamires Costa ◽  
Roberval Gomes Mariano ◽  
...  

A integração de dados permite a descoberta de informações que à priori não eram possíveis em fontes distintas e isoladas. Para tanto, a utilização de Grafos de Conhecimento Semântico (Semantic Knowledge Graphs) fornece uma visão homogênea a partir de fontes heterogêneas integradas semânticamente. Este trabalho descreve o processo de construção e validação de KG-E, um Grafo de Conhecimento Semântico contendo dados de empresas cadastradas na Rede Nacional para a Simplificação do Registro e da Legalização de Empresas e Negócios (REDESIM) e de Sancionados a partir do Cadastro de Empresas Inidôneas e Suspensas (CEIS). KGE-E foi validado através de um estudo de caso com base em questões de competência, apresentando satisfatibilidade quanto às questões relativas ao domínio. Por fim, os resultados sugerem que KG-E demonstrou ser uma visão integrada e enriquecida semanticamente das bases do REDESIM e CEIS, facilitando a construção de aplicações para análises futuras sobre os dados integrados, permitindo desta forma novos insights no âmbito fiscal-empresarial.


2018 ◽  
Vol 137 ◽  
pp. 211-222 ◽  
Author(s):  
Vincent Lully ◽  
Philippe Laublet ◽  
Milan Stankovic ◽  
Filip Radulovic

2013 ◽  
Vol 41 (2) ◽  
pp. 109-149 ◽  
Author(s):  
Marcin Sydow ◽  
Mariusz Pikuła ◽  
Ralf Schenkel

Author(s):  
Peter Grobe ◽  
Roman Baum ◽  
Philipp Bhatty ◽  
Christian Köhler ◽  
Sandra Meid ◽  
...  

The landscape of currently existing repositories of specimen data consists of isolated islands, with each applying its own underlying data model. Using standardized protocols such as DarwinCore or ABCD, specimen data and metadata are exchanged and published on web portals such as GBIF. However, data models differ across repositories. This can lead to problems when comparing and integrating content from different systems. for example, in one system there is a field with the label 'determination', in another there is a field with the label 'taxonomic identification'. Both might refer to the same concepts of organism identification process (e.g., 'obi:organism identification assay'; http://purl.obolibrary.org/obo/OBI_0001624), but the intuitive meaning of the content is not clear and the understanding of the providers of the information might differ from that of the users. Without additional information, data integration across isolated repositories is thus difficult and error-prone. As a consequence, interoperability and retrievability of data across isolated repositories is difficult. Linked Open Data (LOD) promises an improvement. URIs can be used for concepts that are ideally created and accepted by a community and that provide machine-readable meanings. LOD thereby supports transfer of data into information and then into knowledge, thus making the data FAIR (Findable, Accessible, Interoperable, Reusable; Wilkinson et al. 2016). Annotating specimen associated data with LOD, therefore, seems to be a promising approach to guarantee interoperability across different repositories. However, all currently used specimen collection management systems are based on relational database systems, which lack semantic transparency and thus do not provide easily accessible, machine-readable meanings for the terms used in their data models. As a consequence, transferring their data contents into an LOD framework may lead to loss or misinterpretation of information. This discrepancy between LOD and relational databases results from the lack of semantic transparency and machine-readability of data in relational databases. Storing specimen collection data as semantic Knowledge Graphs provides semantic transparency and machine-readability of data. Semantic Knowledge Graphs are graphs that are based on the syntax of ‘Subject – Property – Object’ of the Resource Description Framework (RDF). The ‘Subject’ and ‘Property’ position is taken by URIs and the ‘Object’ position can be taken either by a URI or by a label or value. Since a given URI can take the ‘Subject’ position in one RDF statement and the ‘Object’ position in another RDF statement, several RDF statements can be connected to form a directed labeled graph, i.e. a semantic graph. Semantic Knowledge Graphs are graphs in which each described specimen and its parts and properties possess their own URI and thus can be individually referenced. These URIs are used to describe the respective specimen and its properties using the RDF syntax. Additional RDF statements specify the ontology class that each part and property instantiates. The reference to the URIs of the instantiated ontology classes guarantees the Findability, Interoperability, and Reusability of information contained in semantic Knowledge Graphs. Specimen collection data contained in semantic Knowledge Graphs can be made Accessible in a human-readable form through an interface and in a machine-readable form through a SPARQL endpoint (https://en.wikipedia.org/wiki/SPARQL). As a consequence, semantic Knowledge Graphs comply with the FAIR guiding principles. By using URIs for the semantic Knowledge Graph of each specimen in the collection, it is also available as LOD. With semantic Morph·D·Base, we have implemented a prototype to this approach that is based on Semantic Programming. We present the prototype and discuss different aspects of how specimen collection data are handled. By using community created terminologies and standardized methods for the contents created (e.g. species identification) as well as URIs for each expression, we make the data and metadata semantically transparent and communicable. The source code for Semantic Programming and for semantic Morph·D·Base is available from https://github.com/SemanticProgramming. The prototype of semantic Morph·D·Base can be accessed here: https://proto.morphdbase.de.


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