985 resultados para Semantic Web -- TFM
Resumo:
The W3C Linked Data Platform (LDP) candidate recom- mendation defines a standard HTTP-based protocol for read/write Linked Data. The W3C R2RML recommendation defines a language to map re- lational databases (RDBs) and RDF. This paper presents morph-LDP, a novel system that combines these two W3C standardization initiatives to expose relational data as read/write Linked Data for LDP-aware ap- plications, whilst allowing legacy applications to continue using their relational databases.
Resumo:
The Web of Data currently comprises ? 62 billion triples from more than 2,000 different datasets covering many fields of knowledge3. This volume of structured Linked Data can be seen as a particular case of Big Data, referred to as Big Semantic Data [4]. Obviously, powerful computational configurations are tradi- tionally required to deal with the scalability problems arising to Big Semantic Data. It is not surprising that this ?data revolution? has competed in parallel with the growth of mobile computing. Smartphones and tablets are massively used at the expense of traditional computers but, to date, mobile devices have more limited computation resources. Therefore, one question that we may ask ourselves would be: can (potentially large) semantic datasets be consumed natively on mobile devices? Currently, only a few mobile apps (e.g., [1, 9, 2, 8]) make use of semantic data that they store in the mobile devices, while many others access existing SPARQL endpoints or Linked Data directly. Two main reasons can be considered for this fact. On the one hand, in spite of some initial approaches [6, 3], there are no well-established triplestores for mobile devices. This is an important limitation because any po- tential app must assume both RDF storage and SPARQL resolution. On the other hand, the particular features of these devices (little storage space, less computational power or more limited bandwidths) limit the adoption of seman- tic data for different uses and purposes. This paper introduces our HDTourist mobile application prototype. It con- sumes urban data from DBpedia4 to help tourists visiting a foreign city. Although it is a simple app, its functionality allows illustrating how semantic data can be stored and queried with limited resources. Our prototype is implemented for An- droid, but its foundations, explained in Section 2, can be deployed in any other platform. The app is described in Section 3, and Section 4 concludes about our current achievements and devises the future work.
Resumo:
In many applications (like social or sensor networks) the in- formation generated can be represented as a continuous stream of RDF items, where each item describes an application event (social network post, sensor measurement, etc). In this paper we focus on compressing RDF streams. In particular, we propose an approach for lossless RDF stream compression, named RDSZ (RDF Differential Stream compressor based on Zlib). This approach takes advantage of the structural similarities among items in a stream by combining a differential item encoding mechanism with the general purpose stream compressor Zlib. Empirical evaluation using several RDF stream datasets shows that this combi- nation produces gains in compression ratios with respect to using Zlib alone.
Resumo:
This paper aims to present a preliminary version of asupport-system in the air transport passenger domain. This system relies upon an underlying on-tological structure representing a normative framework to facilitatethe provision of contextualized relevant legal information.This information includes the pas-senger's rights and itenhances self-litigation and the decision-making process of passengers.Our contribution is based in the attempt of rendering a user-centric-legal informationgroundedon case-scenarios of the most pronounced incidents related to the consumer complaints in the EU.A number ofadvantages with re-spect to the current state-of-the-art services are discussed and a case study illu-strates a possible technological application.
Resumo:
Sentiment and Emotion Analysis strongly depend on quality language resources, especially sentiment dictionaries. These resources are usually scattered, heterogeneous and limited to specific domains of appli- cation by simple algorithms. The EUROSENTIMENT project addresses these issues by 1) developing a common language resource representation model for sentiment analysis, and APIs for sentiment analysis services based on established Linked Data formats (lemon, Marl, NIF and ONYX) 2) by creating a Language Resource Pool (a.k.a. LRP) that makes avail- able to the community existing scattered language resources and services for sentiment analysis in an interoperable way. In this paper we describe the available language resources and services in the LRP and some sam- ple applications that can be developed on top of the EUROSENTIMENT LRP.
Resumo:
RDF streams are sequences of timestamped RDF statements or graphs, which can be generated by several types of data sources (sensors, social networks, etc.). They may provide data at high volumes and rates, and be consumed by applications that require real-time responses. Hence it is important to publish and interchange them efficiently. In this paper, we exploit a key feature of RDF data streams, which is the regularity of their structure and data values, proposing a compressed, efficient RDF interchange (ERI) format, which can reduce the amount of data transmitted when processing RDF streams. Our experimental evaluation shows that our format produces state-of-the-art streaming compression, remaining efficient in performance.
Resumo:
En los últimos años la evolución de la información compartida por internet ha cambiado enormemente, llegando a convertirse en lo que llamamos hoy la Web Semántica. Este término, acuñado en 2004, muestra una manera más “inteligente” de compartir los datos, de tal manera que éstos puedan ser entendibles por una máquina o por cualquier persona en el mundo. Ahora mismo se encuentra en fase de expansión, prueba de ello es la cantidad de grupos de investigación que están actualmente dedicando sus esfuerzos al desarrollo e implementación de la misma y la amplitud de temáticas que tienen sus trabajos. Con la aparición de la Web Semántica, la tendencia de las bases de datos de nueva creación se está empezando a inclinar hacia la creación de ontologías más o menos sencillas que describan las bases de datos y así beneficiarse de las posibilidades de interoperabilidad que aporta. Con el presente trabajo se pretende el estudio de los beneficios que aporta la implementación de una ontología en una base de datos relacional ya creada, los trabajos necesarios para ello y las herramientas necesarias para hacerlo. Para ello se han tomado unos datos de gran interés y, como continuación a su trabajo, se ha implementado la ontología. Estos datos provienen del estudio de un método para la obtención automatizada del linaje de las parcelas registradas en el catastro español. Abstract: In the last years the evolution of the information shared on the Internet has dramatically changed, emerging what is called Semantic Web. This term appeared in 2004, defining a “smarter” way of sharing data. Data that could be understood by machines or by any human around the world. Nowadays, the Semantic Web is in expansion phase, as it can be probed by the amount of research groups working on this approach and the wide thematic range of their work. With the appearance of the Semantic Web, current database technologies are supported by the creation of ontologies which describe them and therefore get a new set of interoperability possibilities from them. This work focuses in the study of the benefits given by the implementation of an ontology in a created relational database, the steps to follow and the tools necessary to get it done. The study has been done by using data of considerable interest, coming from a study of the lineage of parcels registered in the Spanish cadaster. As a continuation of this work an ontology has been implemented.
Resumo:
Linked Data is the key paradigm of the Semantic Web, a new generation of the World Wide Web that promises to bring meaning (semantics) to data. A large number of both public and private organizations have published their data following the Linked Data principles, or have done so with data from other organizations. To this extent, since the generation and publication of Linked Data are intensive engineering processes that require high attention in order to achieve high quality, and since experience has shown that existing general guidelines are not always sufficient to be applied to every domain, this paper presents a set of guidelines for generating and publishing Linked Data in the context of energy consumption in buildings (one aspect of Building Information Models). These guidelines offer a comprehensive description of the tasks to perform, including a list of steps, tools that help in achieving the task, various alternatives for performing the task, and best practices and recommendations. Furthermore, this paper presents a complete example on the generation and publication of Linked Data about energy consumption in buildings, following the presented guidelines, in which the energy consumption data of council sites (e.g., buildings and lights) belonging to the Leeds City Council jurisdiction have been generated and published as Linked Data.
Resumo:
Query rewriting is one of the fundamental steps in ontologybased data access (OBDA) approaches. It takes as inputs an ontology and a query written according to that ontology, and produces as an output a set of queries that should be evaluated to account for the inferences that should be considered for that query and ontology. Different query rewriting systems give support to different ontology languages with varying expressiveness, and the rewritten queries obtained as an output do also vary in expressiveness. This heterogeneity has traditionally made it difficult to compare different approaches, and the area lacks in general commonly agreed benchmarks that could be used not only for such comparisons but also for improving OBDA support. In this paper we compile data, dimensions and measurements that have been used to evaluate some of the most recent systems, we analyse and characterise these assets, and provide a unified set of them that could be used as a starting point towards a more systematic benchmarking process for such systems. Finally, we apply this initial benchmark with some of the most relevant OBDA approaches in the state of the art.
Resumo:
La web semántica aporta un mayor conocimiento a los datos para que estos puedan ser procesados por las máquinas. Esto es posible gracias a estándares como por ejemplo Resource Framework Description (RDF). Éste, aporta un marco para que la información pueda ser representada de una manera más comprensible para las maquinas. Muchas veces la información no se encuentra codificada en RDF pero igualmente es interesante aprovecharse de sus características. Es por ello que surge la necesidad de crear una herramienta que permita consultas entre distintas fuentes de datos apoyándose en el estándar RDF independientemente del formato de origen de los datos. De esta manera se conseguirá realizar consultas entre las diversas fuentes, las cuales, sin la unificación en un estándar semántico, serían mucho más difíciles de conseguir.---ABSTRACT---The Semantic Web provides a new knowledge framework to data, therefore computers would become capable of analyzing the data. Standards, as Resource Framework Description (RDF), help to achieve it. RDF promotes the easier way for computers on how to describe data. Sometimes data are coded in a different way from RDF, nevertheless it would also be interesting to examine it. Accordingly, the need to create new software emerges. The software, based on RDF, would be able to combine information from different sources regardless of its format. Consequently, several sources, whatever their original formats were, could be queried on an easier way since a common semantic standard is available.
Resumo:
In this paper we define the notion of an axiom dependency hypergraph, which explicitly represents how axioms are included into a module by the algorithm for computing locality-based modules. A locality-based module of an ontology corresponds to a set of connected nodes in the hypergraph, and atoms of an ontology to strongly connected components. Collapsing the strongly connected components into single nodes yields a condensed hypergraph that comprises a representation of the atomic decomposition of the ontology. To speed up the condensation of the hypergraph, we first reduce its size by collapsing the strongly connected components of its graph fragment employing a linear time graph algorithm. This approach helps to significantly reduce the time needed for computing the atomic decomposition of an ontology. We provide an experimental evaluation for computing the atomic decomposition of large biomedical ontologies. We also demonstrate a significant improvement in the time needed to extract locality-based modules from an axiom dependency hypergraph and its condensed version.
Resumo:
Postprint
Resumo:
Postprint
Resumo:
Postprint