2012
DOI: 10.1007/s11761-011-0099-2
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A recommender system based on historical usage data for web service discovery

Abstract: The tremendous growth in the amount of available web services impulses many researchers on proposing recommender systems to help users discover services. Most of the proposed solutions analyzed query strings and web service descriptions to generate recommendations. However, these text-based recommendation approaches depend mainly on user's perspective, languages, and notations, which easily decrease recommendation's efficiency. In this paper, we present an approach in which we take into account historical usag… Show more

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Cited by 40 publications
(30 citation statements)
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“…Chan et al, e.g., developed a recommendation system that captures implicit knowledge by incorporating historical usage data [21]. In their work, however, generated recommendation values are neither used for automatic service composition, nor do they evolve by learning from history.…”
Section: Learning Recommendation Systemmentioning
confidence: 99%
“…Chan et al, e.g., developed a recommendation system that captures implicit knowledge by incorporating historical usage data [21]. In their work, however, generated recommendation values are neither used for automatic service composition, nor do they evolve by learning from history.…”
Section: Learning Recommendation Systemmentioning
confidence: 99%
“…Chan et al, e.g., developed a recommendation system that captures implicit knowledge by incorporating historical usage data [7]. In their work, however, generated recommendation values are neither used for automatic service composition, nor do they evolve by learning from history.…”
Section: Adaptive Recommendation Systemmentioning
confidence: 99%
“…In our platform, we deployed our algorithms in parallel with a search engine which based on the classical query-string method. Inspired by the test method in literature [9], we use the results returned by the search engine as reference to validate the accuracy of our service recommender system. We use the value of precision, recall and F-Measure to evaluate efficiency of our recommender system.…”
Section: B Evaluationmentioning
confidence: 99%