Proceedings of the 23rd International Conference on World Wide Web 2014
DOI: 10.1145/2566486.2567982
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RDF analytics

Abstract: The development of Semantic Web (RDF) brings new requirements for data analytics tools and methods, going beyond querying to semantics-rich analytics through warehouse-style tools. In this work, we fully redesign, from the bottom up, core data analytics concepts and tools in the context of RDF data, leading to the first complete formal framework for warehouse-style RDF analytics. Notably, we define i) analytical schemas tailored to heterogeneous, semantics-rich RDF graph, ii) analytical queries which (beyond r… Show more

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Cited by 29 publications
(4 citation statements)
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References 27 publications
(28 reference statements)
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“…These approaches use several techniques for retrieving the best match results, by exploiting Information Retrieval (IR) techniques [18,19], and/or by adapting existing IR systems, like Elasticsearch, to the needs of RDF, for example, see [1,2,20] and others. As regards (c), there are several interactive information access systems, including browsing systems, such as [3,4,21] and also systems that can aid users that are not familiar with query languages to access the RDF knowledge base, for example, faceted search [6,7,13], interactive analytics services [22,23] and also systems for assisting the query building process, such as the system A-Qub [8]. Finally, regarding (d) Natural Language interface systems [24], where the input and output is given in natural language, and it returns short and precise answers, that is, through conversational access and Question Answering systems [25][26][27][28].…”
Section: Access Systems Over Rdfmentioning
confidence: 99%
“…These approaches use several techniques for retrieving the best match results, by exploiting Information Retrieval (IR) techniques [18,19], and/or by adapting existing IR systems, like Elasticsearch, to the needs of RDF, for example, see [1,2,20] and others. As regards (c), there are several interactive information access systems, including browsing systems, such as [3,4,21] and also systems that can aid users that are not familiar with query languages to access the RDF knowledge base, for example, faceted search [6,7,13], interactive analytics services [22,23] and also systems for assisting the query building process, such as the system A-Qub [8]. Finally, regarding (d) Natural Language interface systems [24], where the input and output is given in natural language, and it returns short and precise answers, that is, through conversational access and Question Answering systems [25][26][27][28].…”
Section: Access Systems Over Rdfmentioning
confidence: 99%
“…Such statistical linked data are just different serialization and publication formats of traditional OLAP cubes. Other work has suggested "lenses" over RDF data [20] for the purpose of RDF data analysis, i.e., analytical schemas which can be used for OLAP queries on RDF data. Similarly, superimposed multidimensional schemas [37] define a mapping between a multidimensional model and a KG in order to allow for the formulation of OLAP queries.…”
Section: Olap and Semantic Web Technologiesmentioning
confidence: 99%
“…We identified 10 studies that used intent concepts. 8 of them are used to express requirements at the execution level such as the Analytica Queries (AnQ) model in [8] that facilitates expressing user queries that need to be performed on data. Two studies were focusing on representing the high-level goals of the analysts: the Scientist's Intent Ontology [10] and the Goal Oriented Model [6].…”
Section: Role Of Requirement Models In Engineering Analytics Processesmentioning
confidence: 99%