نتایج جستجو برای: partitional clustering

تعداد نتایج: 103004  

2008
David Vernet Ruben Nicolas Elisabet Golobardes Albert Fornells Carles Garriga Susana Puig Joseph Malvehy

Nowadays melanoma is one of the most important cancers to study due to its social impact. This dermatologic cancer has increased its frequency and mortality during last years. In particular, mortality is around twenty percent in non early detected ones. For this reason, the aim of medical researchers is to improve the early diagnosis through a best melanoma characterization using pattern matchi...

2008
B. Bahmani Firouzi T. Niknam M. Nayeripour

Clustering is a very well known technique in data mining. One of the most widely used clustering techniques is the kmeans algorithm. Solutions obtained from this technique depend on the initialization of cluster centers and the final solution converges to local minima. In order to overcome K-means algorithm shortcomings, this paper proposes a hybrid evolutionary algorithm based on the combinati...

2008
Marcelo Nunes Ribeiro Manoel J. R. Neto Ricardo B. C. Prudêncio

Feature selection has improved the performance of text clustering. Global feature selection tries to identify a single subset of features which are relevant to all clusters. However, the clustering process might be improved by considering different subsets of features for locally describing each cluster. In this work, we introduce the method ZOOM-IN to perform local feature selection for partit...

Journal: :International journal of neural systems 2014
Héctor D. Menéndez David F. Barrero David Camacho

Clustering is one of the most versatile tools for data analysis. In the recent years, clustering that seeks the continuity of data (in opposition to classical centroid-based approaches) has attracted an increasing research interest. It is a challenging problem with a remarkable practical interest. The most popular continuity clustering method is the spectral clustering (SC) algorithm, which is ...

2006
Ian Davidson Kiri Wagstaff Sugato Basu

Clustering with constraints is an active area of machine learning and data mining research. Previous empirical work has convincingly shown that adding constraints to clustering improves performance, with respect to the true data labels. However, in most of these experiments, results are averaged over different randomly chosen constraint sets, thereby masking interesting properties of individual...

2003
Shi Zhong Joydeep Ghosh

This paper presents a general framework for adapting any generative (model-based) clustering algorithm to provide balanced solutions, i.e., clusters of comparable sizes. Partitional, model-based clustering algorithms are viewed as an iterative two-step optimization process—iterative model re-estimation and sample re-assignment. Instead of a maximum-likelihood (ML) assignment, a balanceconstrain...

Journal: :JCP 2007
Danielle Nuzillard Cosmin Lazar

Analyzing unknown data sets such as multispectral images often requires unsupervised techniques. Data clustering is a well known and widely used approach in such cases. Multi-spectral image segmentation requires pixel classification according to a similarity criterion. For this particular data, partitional clustering seems to be more appropriate. Classical K-means algorithm has important drawba...

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