Theme Identification for RDF Graphs Based on LSTM Neural Reccurent Network

Author(s):  
Siham Eddamiri ◽  
Elmoukhtar Zemmouri ◽  
Asmaa Benghabrit
Author(s):  
Hanane Ouksili ◽  
Zoubida Kedad ◽  
Stéphane Lopes

2020 ◽  
Vol 16 (2) ◽  
pp. 223-247
Author(s):  
Siham Eddamiri ◽  
Asmaa Benghabrit ◽  
Elmoukhtar Zemmouri

Purpose The purpose of this paper is to present a generic pipeline for Resource Description Framework (RDF) graph mining to provide a comprehensive review of each step in the knowledge discovery from data process. The authors also investigate different approaches and combinations to extract feature vectors from RDF graphs to apply the clustering and theme identification tasks. Design/methodology/approach The proposed methodology comprises four steps. First, the authors generate several graph substructures (Walks, Set of Walks, Walks with backward and Set of Walks with backward). Second, the authors build neural language models to extract numerical vectors of the generated sequences by using word embedding techniques (Word2Vec and Doc2Vec) combined with term frequency-inverse document frequency (TF-IDF). Third, the authors use the well-known K-means algorithm to cluster the RDF graph. Finally, the authors extract the most relevant rdf:type from the grouped vertices to describe the semantics of each theme by generating the labels. Findings The experimental evaluation on the state of the art data sets (AIFB, BGS and Conference) shows that the combination of Set of Walks-with-backward with TF-IDF and Doc2vec techniques give excellent results. In fact, the clustering results reach more than 97% and 90% in terms of purity and F-measure, respectively. Concerning the theme identification, the results show that by using the same combination, the purity and F-measure criteria reach more than 90% for all the considered data sets. Originality/value The originality of this paper lies in two aspects: first, a new machine learning pipeline for RDF data is presented; second, an efficient process to identify and extract relevant graph substructures from an RDF graph is proposed. The proposed techniques were combined with different neural language models to improve the accuracy and relevance of the obtained feature vectors that will be fed to the clustering mechanism.


2021 ◽  
pp. 1-13
Author(s):  
Elena Tsoy ◽  
Alissa Bernstein Sideman ◽  
Stefanie D. Piña Escudero ◽  
Maritza Pintado-Caipa ◽  
Suchanan Kanjanapong ◽  
...  

Background: Timely diagnosis of dementia is a global healthcare priority, particularly in low to middle income countries where rapid increases in older adult populations are expected. Objective: To investigate global perspectives on the role of brief cognitive assessments (BCAs) in dementia diagnosis, strengths and limitations of existing measures, and future directions and needs. Methods: This is a qualitative study of 18 dementia experts from different areas of the world. Participants were selected using purposeful sampling based on the following criteria: 1) practicing in countries with projected growth of older adult population of over 100%by 2050; 2) expertise in dementia diagnosis and treatment; 3) involvement in clinical practice and training; and 4) recognition as a national dementia expert based on leadership positions within healthcare system, research, and/or policy work. Participants were individually interviewed in their language of choice over secure videoconference sessions. Interviews were analyzed by a multidisciplinary team using theme identification approach. Results: Four domains with subthemes emerged illustrating participants’ perspectives: 1) strengths of BCAs; 2) limitations of BCAs; 3) needs related to the use of BCAs; and 4) characteristics of an ideal BCA. While most experts agreed that BCAs were important and useful for dementia diagnosis, the themes emphasized the need for development and validation of novel measures that are sensitive, psychometrically sound, and culturally appropriate. Conclusion: BCAs are important for guiding diagnosis and care for dementia patients. Findings provide a roadmap for novel BCA development to assist in diagnostic decision making for clinicians serving a rapidly growing and diverse dementia population.


2014 ◽  
Vol 33 (4) ◽  
pp. 555-581 ◽  
Author(s):  
Roberto De Virgilio ◽  
Antonio Maccioni ◽  
Riccardo Torlone

Author(s):  
Mikhail Galkin ◽  
Diego Collarana ◽  
Ignacio Traverso-Ribón ◽  
Maria-Esther Vidal ◽  
Sören Auer
Keyword(s):  

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