نتایج جستجو برای: mean clustering method

تعداد نتایج: 2188180  

2014
Ya-Zhou Ren Carlotta Domeniconi Guoji Zhang Guo-Xian Yu

The mean shift algorithm is a nonparametric clustering technique that does not make assumptions on the number of clusters and on their shapes. It achieves this goal by performing kernel density estimation, and iteratively locating the local maxima of the kernel mixture. The set of points that converge to the same mode defines a cluster. While appealing, the performance of the mean shift algorit...

2010
Themos Stafylakis Vassilios Katsouros George Carayannis

In this paper, we investigate the use of the mean shift algorithm with respect to speaker clustering. The algorithm is an elegant nonparametric technique that has become very popular in image segmentation, video tracking and other image processing and computer vision tasks. Its primary aim is to detect the modes of the underlying density and consequently merge those observations being attracted...

2016
Daniel M. de Brito Vinicius Maracaja-Coutinho Savio T. de Farias Leonardo V. Batista Thaís G. do Rêgo Dawn L Arnold

Genomic Islands (GIs) are regions of bacterial genomes that are acquired from other organisms by the phenomenon of horizontal transfer. These regions are often responsible for many important acquired adaptations of the bacteria, with great impact on their evolution and behavior. Nevertheless, these adaptations are usually associated with pathogenicity, antibiotic resistance, degradation and met...

2014
Varsha Singh

A Genetic Algorithm for K-Mean Clustering Varsha Singh Asst. Prof. JSSATE, Noida, Uttar Pradesh, India Prof A K Misra Professor, Deptt of CSE, MNNIT Allahabad, Uttar Pradesh, India _________________________________________________________________________________________ Abstract: Clustering techniques have obtained adequate results when are applied to data mining problems. Clustering is the pro...

Journal: :CoRR 2016
Brijnesh J. Jain

To devise efficient solutions for approximating a mean partition in consensus clustering, Dimitriadou et al. [3] presented a necessary condition of optimality for a consensus function based on least square distances. We show that their result is pivotal for deriving interesting properties of consensus clustering beyond optimization. For this, we present the necessary condition of optimality in ...

Journal: :فیزیک زمین و فضا 0
سعید هادیلو دانشجوی کارشناسی ارشد ژئوفیزیک، گروه فیزیک زمین، مؤسسة ژئوفیزیک دانشگاه تهران، ایران حمیدرضا سیاه کوهی دانشیار، گروه فیزیک زمین، مؤسسة ژئوفیزیک دانشگاه تهران، ایران علی عدالت مشاور، شرکت مشاوران تهران

reservoir models are initially generated from estimates of specific rock properties and maps of reservoir heterogeneity. many types of information are used in reservoir model construction. one of the most important sources of information comes from wells, including well logs and core samples. unfortunately well log and core data are local measurements that may not reflect the reservoir behavior...

2014
Gursharan Saini Harpreet Kaur

Clustering is a method which divides data objects into groups based on the information found in data that describes the objects and relationships among them. There are a variety of algorithms have been developed in recent years for solving problems of data clustering. Data clustering algorithms can be either hierarchical or partitioned. Most promising among them are K-means algorithm which is p...

2009
Mohammad Hossein Fazel Zarandi Marzie Zarinbal I. Burhan Türksen

Fuzzy clustering is well known as a robust and efficient way to reduce computation cost to obtain the better results. In the literature, many robust fuzzy clustering models have been presented such as Fuzzy C-Mean (FCM) and Possibilistic C-Mean (PCM), where these methods are Type-I Fuzzy clustering. Type-II Fuzzy sets, on the other hand, can provide better performance than Type-I Fuzzy sets, es...

Journal: :IEEE Trans. Information Theory 2018
K. Pavan Srinath Ramji Venkataramanan

This paper considers the problem of estimating a high-dimensional vector of parameters θ ∈ R from a noisy observation. The noise vector is i.i.d. Gaussian with known variance. For a squared-error loss function, the James-Stein (JS) estimator is known to dominate the simple maximum-likelihood (ML) estimator when the dimension n exceeds two. The JS-estimator shrinks the observed vector towards th...

2017
Rosemary M. McCloskey Art F. Y. Poon

Clustering infections by genetic similarity is a popular technique for identifying potential outbreaks of infectious disease, in part because sequences are now routinely collected for clinical management of many infections. A diverse number of nonparametric clustering methods have been developed for this purpose. These methods are generally intuitive, rapid to compute, and readily scale with la...

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