Topic
Semantic Web
About: Semantic Web is a research topic. Over the lifetime, 26987 publications have been published within this topic receiving 534275 citations. The topic is also known as: Sem Web & SemWeb.
Papers published on a yearly basis
Papers
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09 May 2008162 citations
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11 Jul 2010TL;DR: This paper presents an alternative IC semantics for OWL that allows applications to work with the CWA and the weak UNA and shows that IC validation can be reduced to query answering under certain conditions.
Abstract: In many data-centric semantic web applications, it is desirable to use OWL to encode the Integrity Constraints (IC) that must be satisfied by instance data. However, challenges arise due to the Open World Assumption (OWA) and the lack of a Unique Name Assumption (UNA) in OWL's standard semantics. In particular, conditions that trigger constraint violations in systems using the Closed World Assumption (CWA), will generate new inferences in standard OWL-based reasoning applications. In this paper, we present an alternative IC semantics for OWL that allows applications to work with the CWA and the weak UNA. Ontology modelers can choose which OWL axioms to be interpreted with our IC semantics. Thus application developers are able to combine open world reasoning with closed world constraint validation in a flexible way. We also show that IC validation can be reduced to query answering under certain conditions. Finally, we describe our prototype implementation based on the OWL reasoner Pellet.
162 citations
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12 Oct 2013TL;DR: SPrank as mentioned in this paper is a hybrid recommendation algorithm able to compute top-N item recommendations from implicit feedback exploiting the information available in the so-called Web of Data, which leverages DBpedia, a well-known knowledge base in the LOD compass, to extract semantic path-based features and to eventually compute recommendations using a learning to rank algorithm.
Abstract: The advent of the Linked Open Data (LOD) initiative gave birth to a variety of open knowledge bases freely accessible on the Web. They provide a valuable source of information that can improve conventional recommender systems, if properly exploited. In this paper we present SPrank, a novel hybrid recommendation algorithm able to compute top-N item recommendations from implicit feedback exploiting the information available in the so called Web of Data. We leverage DBpedia, a well-known knowledge base in the LOD compass, to extract semantic path-based features and to eventually compute recommendations using a learning to rank algorithm. Experiments with datasets on two different domains show that the proposed approach outperforms in terms of prediction accuracy several state-of-the-art top-N recommendation algorithms for implicit feedback in situations affected by different degrees of data sparsity.
161 citations
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TL;DR: The benefits, trends, current possibilities, and the potential this holds for the biosciences are reviewed.
Abstract: New knowledge is produced at a continuously increasing speed, and the list of papers, databases and other knowledge sources that a researcher in the life sciences needs to cope with is actually turning into a problem rather than an asset. The adequate management of knowledge is therefore becoming fundamentally important for life scientists, especially if they work with approaches that thoroughly depend on knowledge integration, such as systems biology. Several initiatives to organize biological knowledge sources into a readily exploitable resourceome are presently being carried out. Ontologies and Semantic Web technologies revolutionize these efforts. Here, we review the benefits, trends, current possibilities, and the potential this holds for the biosciences.
161 citations
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15 Aug 2005TL;DR: The algorithms used to discover a number of other instances of large-scale phrase-level replication within the two data sets collected in December 2002 and June 2004 are described.
Abstract: Two years ago, we conducted a study on the evolution of web pages over time. In the course of that study, we discovered a large number of machine-generated "spam" web pages emanating from a handful of web servers in Germany. These spam web pages were dynamically assembled by stitching together grammatically well-formed German sentences drawn from a large collection of sentences. This discovery motivated us to develop techniques for finding other instances of such "slice and dice" generation of web pages, where pages are automatically generated by stitching together phrases drawn from a limited corpus. We applied these techniques to two data sets, a set of 151 million web pages collected in December 2002 and a set of 96 million web pages collected in June 2004. We found a number of other instances of large-scale phrase-level replication within the two data sets. This paper describes the algorithms we used to discover this type of replication, and highlights the results of our data mining.
161 citations