Computational and human-based methods for knowledge discovery over knowledge graphs

Research output: ThesisDoctoral thesis

Authors

  • Ariam Rivas Méndez

Research Organisations

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Details

Original languageEnglish
QualificationDoctor of Engineering
Awarding Institution
Supervised by
  • Maria Esther Vidal Serodio, Supervisor
Date of Award9 May 2023
Place of PublicationHannover
Publication statusPublished - 2023

Abstract

The modern world has evolved, accompanied by the huge exploitation of data and information. Daily, increasing volumes of data from various sources and formats are stored, resulting in a challenging strategy to manage and integrate them to discover new knowledge. The appropriate use of data in various sectors of society, such as education, healthcare, e-commerce, and industry, provides advantages for decision support in these areas. However, knowledge discovery becomes challenging since data may come from heterogeneous sources with important information hidden. Thus, new approaches that adapt to the new challenges of knowledge discovery in such heterogeneous data environments are required. The semantic web and knowledge graphs (KGs) are becoming increasingly relevant on the road to knowledge discovery. This thesis tackles the problem of knowledge discovery over KGs built from heterogeneous data sources. We provide a neuro-symbolic artificial intelligence system that integrates symbolic and sub-symbolic frameworks to exploit the semantics encoded in a KG and its structure. The symbolic system relies on existing approaches of deductive databases to make explicit, implicit knowledge encoded in a KG. The proposed deductive database $DS$ can derive new statements to ego networks given an abstract target prediction. Thus, $DS$ minimizes data sparsity in KGs. In addition, a sub-symbolic system relies on knowledge graph embedding (KGE) models. KGE models are commonly applied in the KG completion task to represent entities in a KG in a low-dimensional vector space. However, KGE models are known to suffer from data sparsity, and a symbolic system assists in overcoming this fact. The proposed approach discovers knowledge given a target prediction in a KG and extracts unknown implicit information related to the target prediction. As a proof of concept, we have implemented the neuro-symbolic system on top of a KG for lung cancer to predict polypharmacy treatment effectiveness. The symbolic system implements a deductive system to deduce pharmacokinetic drug-drug interactions encoded in a set of rules through the Datalog program. Additionally, the sub-symbolic system predicts treatment effectiveness using a KGE model, which preserves the KG structure. An ablation study on the components of our approach is conducted, considering state-of-the-art KGE methods. The observed results provide evidence for the benefits of the neuro-symbolic integration of our approach, where the neuro-symbolic system for an abstract target prediction exhibits improved results. The enhancement of the results occurs because the symbolic system increases the prediction capacity of the sub-symbolic system. Moreover, the proposed neuro-symbolic artificial intelligence system in Industry 4.0 (I4.0) is evaluated, demonstrating its effectiveness in determining relatedness among standards and analyzing their properties to detect unknown relations in the I4.0KG. The results achieved allow us to conclude that the proposed neuro-symbolic approach for an abstract target prediction improves the prediction capability of KGE models by minimizing data sparsity in KGs.

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Cite this

Computational and human-based methods for knowledge discovery over knowledge graphs. / Rivas Méndez, Ariam.
Hannover, 2023. 144 p.

Research output: ThesisDoctoral thesis

Rivas Méndez, A 2023, 'Computational and human-based methods for knowledge discovery over knowledge graphs', Doctor of Engineering, Leibniz University Hannover, Hannover. https://doi.org/10.15488/13744
Rivas Méndez, A. (2023). Computational and human-based methods for knowledge discovery over knowledge graphs. [Doctoral thesis, Leibniz University Hannover]. https://doi.org/10.15488/13744
Rivas Méndez A. Computational and human-based methods for knowledge discovery over knowledge graphs. Hannover, 2023. 144 p. doi: 10.15488/13744
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