2014
DOI: 10.1109/tsc.2013.28
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Probabilistic Matchmaking Methods for Automated Service Discovery

Abstract: Abstract-Automated service discovery enables human users or software agents to form queries and to search and discover the services based on different requirements. This enables implementation of high-level functionalities such as service recommendation, composition, and provisioning. The current service search and discovery on the Web is mainly supported by text and keyword based solutions which offer very limited semantic expressiveness to service developers and consumers. This paper presents a method using … Show more

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Cited by 59 publications
(21 citation statements)
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“…For example, [Cassar et al 2014] utilise Ontology Web Language for Services (OWL-S) to describe sensor services semantically and apply LDA (a generative probabilistic unsupervised machine-learning technique) to map service descriptions into latent factors (topics). A ranking process is performed on latent factors based on their similarities with user queries.…”
Section: Fig 4 Taxonomy Of Indexing Approachesmentioning
confidence: 99%
“…For example, [Cassar et al 2014] utilise Ontology Web Language for Services (OWL-S) to describe sensor services semantically and apply LDA (a generative probabilistic unsupervised machine-learning technique) to map service descriptions into latent factors (topics). A ranking process is performed on latent factors based on their similarities with user queries.…”
Section: Fig 4 Taxonomy Of Indexing Approachesmentioning
confidence: 99%
“…It mostly employs content-oriented ranking paradigms, e.g., by analysing the relevance of Web service descriptions with regard to queries [27]. To improve the discovery performance, machine learning based methods can be applied to perform deep semantic analysis on the service descriptions, for example, the work in [12] first applies Latent Dirichlet Allocation [39] to derive a latent factor model from service descriptions, and then computes service matchmaking using the latent model. The experiments show that the discovery results are more promising than the existing methods.…”
Section: Related Workmentioning
confidence: 99%
“…Matching queries with sensor service descriptions is only able to retrieve a list of relevant services (which are semantically ''equivalent'' to each other). In order to improve ranking, the work in [13] proposes a hybrid method which applies both probabilistic inference [12] and semantic reasoning on service descriptions. However, in reality, it is reasonable to assume that detailed descriptions on sensor services are always available for performing sophisticated analysis.…”
Section: Related Workmentioning
confidence: 99%
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“…Cassar et. al., [3] suggested a method which uses probabilistic machine-learning techniques to abstract the underlying components from semantically enriched service annotations. The model is constructed using latent factors and helps to exhibit the different service annotations by a vector form.…”
Section: Introductionmentioning
confidence: 99%