نتایج جستجو برای: means clustering method

تعداد نتایج: 1976222  

2016
Marcin PIETRZYKOWSKI Marcin PLUCIŃSKI

Mini-model method (MM-method) is an instance-based learning algorithm similarly as the k-nearest neighbor method, GRNN network or RBF network but its idea is different. MM operates only on data from the local neighborhood of a query. The paper presents new version of the MM-method which is based on k-means clustering algorithm. The domain of the model is calculated using k-means algorithm. Clus...

2003
Nandita Das

Hedge fund databases vary as to the type of funds to include and in their classification scheme. Investment strategy and/or investment style are the basis for classification. Considerable variation is observed in the definitions, return calculation methodologies, and assumptions. There exists a myriad of classifications, some overlapping and some mutually exclusive. There is a need for an ‘alte...

Journal: :CoRR 2017
Anup Bhattacharya Ragesh Jaiswal

In this work, we study the k-means cost function. The (Euclidean) k-means problem can be described as follows: given a dataset X ⊆ R and a positive integer k, find a set of k centers C ⊆ R such that Φ(C,X) def = ∑ x∈X minc∈C ||x− c|| 2 is minimized. Let ∆k(X) def = minC⊆Rd Φ(C,X) denote the cost of the optimal k-means solution. It is simple to observe that for any dataset X, ∆k(X) decreases as ...

2003
Yu Guan Ali A. Ghorbani Nabil Belacel

As the Internet spreads to each corner of the world, computers are exposed to miscellaneous intrusions from the World Wide Web. We need effective intrusion detection systems to protect our computers from these unauthorized or malicious actions. Traditional instance-based learning methods for Intrusion Detection can only detect known intrusions since these methods classify instances based on wha...

Journal: :Signal Processing 2016
Chaolu Feng Dazhe Zhao Min Huang

Due to intensity overlaps between interested objects caused by noise and intensity inhomogeneity, image segmentation is still an open problem. In this paper, we propose a framework to segment images in the well-known image model in which intensities of the observed image are viewed as a product of the true image and the bias field. In the proposed framework, a CUDA accelerated non-local means d...

Journal: :Appl. Soft Comput. 2012
Fouad Khan

K-means is one of the most widely used clustering algorithms in various disciplines, especially for large datasets. However the method is known to be highly sensitive to initial seed selection of cluster centers. K-means++ has been proposed to overcome this problem and has been shown to have better accuracy and computational efficiency than k-means. In many clustering problems though –such as w...

2014
Jiulun Fan Jing Li J. L. Fan J. Li

Suppressed fuzzy c-means (S-FCM) clustering algorithm with the intention of combining the higher speed of hard c-means clustering algorithm and the better classification performance of fuzzy c-means clustering algorithm had been studied by many researchers and applied in many fields. In the algorithm, how to select the suppressed rate is a key step. In this paper, we give a method to select the...

2014
Ye TIAN Peng YANG

Cluster ensemble has been shown to be an effective thought of improving the accuracy and stability of single clustering algorithms. It consists of generating a set of partition results from a same data set and combining them into a final one. In this paper, we develop a novel cluster ensemble method named Cluster Ensemble algorithm using the Binary k-means and Spectral Clustering (CEBKSC). By u...

Journal: :IEEE Trans. Information Theory 2015
Christos Boutsidis Anastasios Zouzias Michael W. Mahoney Petros Drineas

We study the topic of dimensionality reduction for k-means clustering. Dimensionality reduction encompasses the union of two approaches: 1) feature selection and 2) feature extraction. A feature selection-based algorithm for k-means clustering selects a small subset of the input features and then applies k-means clustering on the selected features. A feature extraction-based algorithm for k-mea...

Journal: :iranian journal of fuzzy systems 0
sheng-chih yang department of computer science and information engineering, national chin-yi university of technology, taichung city 411, taiwan, roc cheng-jian lin department of computer science and information engineering, national chin-yi university of technology, taichung city 411, taiwan, roc hsueh-yi lin department of computer science and information engineering, national chin-yi university of technology, taichung city 411, taiwan, roc jyun-guo wang department of computer science and information engineering, national chin-yi university of technology, taichung city 411, taiwan, roc cheng-yi yu department of computer science and information engineering, national chin-yi university of technology, taichung city 411, taiwan, roc

in this study, an image backlight compensation method using adaptive luminance modification is proposed for efficiently obtaining clear images.the proposed method combines the fuzzy c-means clustering method, a recurrent functional neural fuzzy network (rfnfn), and a modified differential evolution.the proposed rfnfn is based on the two backlight factors that can accurately detect the compensat...

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