2019
DOI: 10.11591/ijece.v9i3.pp2103-2111
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Complete agglomerative hierarchy document’s clustering based on fuzzy luhn’s gibbs latent dirichlet allocation

Abstract: Agglomerative hierarchical is a bottom up clustering method, where the distances between documents can be retrieved by extracting feature values using a topic-based latent dirichlet allocation method. To reduce the number of features, term selection can be done using Luhn's Idea. Those methods can be used to build the better clusters for document. But, there is less research discusses it. Therefore, in this research, the term weighting calculation uses Luhn's Idea to select the terms by defining upper and lowe… Show more

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“…K-means is one of the simplest forms of the unsupervised algorithm [33] used to solve clustering problems. The algorithm defines certain data by a specific number if the clusters are determined a priori [14].…”
Section: Web Service Clusteringmentioning
confidence: 99%
“…K-means is one of the simplest forms of the unsupervised algorithm [33] used to solve clustering problems. The algorithm defines certain data by a specific number if the clusters are determined a priori [14].…”
Section: Web Service Clusteringmentioning
confidence: 99%