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Book ChapterDOI

Review of Approaches for Linked Data Ontology Enrichment

TLDR
While the initial rapid growth of LOD was contributed by techniques that converted structured data into the LOD space, the ontology enrichment is more involved and requires several techniques from natural language processing, machine learning and also methods that cleverly make use of the existing ontology statements to obtain new statements.
Abstract
Semantic Web technology has established a framework for creating a “web of data” where the nodes correspond to resources of interest in a domain and the edges correspond to logical statements that link these resources using binary relations of interest in the domain. The framework provides a standardized way of describing a domain of interest so that the description is machine-processable. This enables applications to share data and knowledge about entities in an unambiguous manner. Also, as all resources are represented using IRIs, a massive distributed network of datasets gets created. Applications can dynamically discover these datasets, access most recent data, interpret it using the associated meta-data (ontologies) and integrate them into their operations. While the Linked Open Data (LOD) initiative, based on the Semantic Web standards, has resulted in a huge web corpus of domain datasets, it is well-known that the majority of the statements in a dataset are of the type that link specific individuals to specific individuals (e.g. Paris is the capital of France) and there is major need to augment the datasets with statements that link higher-level entities (e.g. A statement about Countries and Cities such as “Every country has a city as its capital”). Adding statements of this kind is part of the task of enrichment of the LOD datasets called “ontology enrichment”. In this paper, we review various recent research efforts that address this task. We investigate different types of ontology enrichments that are possible and summarize the research efforts in each category. We observe that while the initial rapid growth of LOD was contributed by techniques that converted structured data into the LOD space, the ontology enrichment is more involved and requires several techniques from natural language processing, machine learning and also methods that cleverly make use of the existing ontology statements to obtain new statements.

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PARIS: Probabilistic Alignment of Relations, Instances, and Schema

TL;DR: Paris as mentioned in this paper is a probabilistic approach for ontology alignment, i.e., it measures degrees of matchings based on probability estimates, and it can align not only instances, but also relations and classes.
Proceedings ArticleDOI

Enriching domain ontologies using question-answer datasets

TL;DR: This paper proposes a novel approach to extract triples from Question-Answer pairs for the purpose of ontology enrichment, particularly focussing upon T-Box enrichment, and preliminary results obtained reveal the potential of the system to convert Question- answer pairs to meaningful triples that can be added to the ontologies, thus enhancing the quality of the ontology.
Journal ArticleDOI

Semantic Enrichment of Linked Personal Authority Data: A Case Study of Elites in Late Imperial China

TL;DR: The study uses the Database of Names and Biographies (DNB) as an example to explore how in the transformation of original data into linked data, semantic enrichment can enhance engagement in digital humanities.
Book ChapterDOI

Survey on Schema Induction from Knowledge Graphs

TL;DR: This paper overviews existing schema induction approaches by mainly considering their learning methods, the types of learned axioms and the external resources that may be used during the learning process and points out the challenges and directions for schema induction.
Proceedings ArticleDOI

Qualitative Knowledge Graph Model Construction Method of Transformer Maintenance

TL;DR: In this paper, the authors proposed a method for establishing the knowledge graph of transformer operation and maintenance based on the physical structure and physical characteristics of the equipment, and the hierarchy of knowledge entity was constructed according to the physical relationship and application relationship between the ontology.
References
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Proceedings Article

Distributed Representations of Words and Phrases and their Compositionality

TL;DR: This paper presents a simple method for finding phrases in text, and shows that learning good vector representations for millions of phrases is possible and describes a simple alternative to the hierarchical softmax called negative sampling.
Posted Content

Distributed Representations of Words and Phrases and their Compositionality

TL;DR: In this paper, the Skip-gram model is used to learn high-quality distributed vector representations that capture a large number of precise syntactic and semantic word relationships and improve both the quality of the vectors and the training speed.
Proceedings ArticleDOI

Automatic acquisition of hyponyms from large text corpora

TL;DR: A set of lexico-syntactic patterns that are easily recognizable, that occur frequently and across text genre boundaries, and that indisputably indicate the lexical relation of interest are identified.
Journal ArticleDOI

DBpedia - A Large-scale, Multilingual Knowledge Base Extracted from Wikipedia

TL;DR: An overview of the DBpedia community project is given, including its architecture, technical implementation, maintenance, internationalisation, usage statistics and applications, including DBpedia one of the central interlinking hubs in the Linked Open Data (LOD) cloud.
Proceedings Article

Open information extraction from the web

TL;DR: Open Information Extraction (OIE) as mentioned in this paper is a new extraction paradigm where the system makes a single data-driven pass over its corpus and extracts a large set of relational tuples without requiring any human input.
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