• Title/Summary/Keyword: K means clustering

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Kernel Pattern Recognition using K-means Clustering Method (K-평균 군집방법을 이요한 가중커널분류기)

  • 백장선;심정욱
    • The Korean Journal of Applied Statistics
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    • v.13 no.2
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    • pp.447-455
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    • 2000
  • We propose a weighted kernel pattern recognition method using the K -means clustering algorithm to reduce computation and storage required for the full kernel classifier. This technique finds a set of reference vectors and weights which are used to approximate the kernel classifier. Since the hierarchical clustering method implemented in the 'Weighted Parzen Window (WP\V) classifier is not able to rearrange the proper clusters, we adopt the K -means algorithm to find reference vectors and weights from the more properly rearranged clusters \Ve find that the proposed method outperforms the \VP\V method for the repre~entativeness of the reference vectors and the data reduction.

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Comparisons on Clustering Methods: Use of LMS Log Variables on Academic Courses

  • Jo, Il-Hyun;PARK, Yeonjeong;SONG, Jongwoo
    • Educational Technology International
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    • v.18 no.2
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    • pp.159-191
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    • 2017
  • Academic analytics guides university decision-makers to assign limited resources more effectively. Especially, diverse academic courses clustered by the usage patterns and levels on Learning Management System(LMS) help understanding instructors' pedagogical approach and the integration level of technologies. Further, the clustering results can contribute deciding proper range and levels of financial and technical supports. However, in spite of diverse analytic methodologies, clustering analysis methods often provide different results. The purpose of this study is to present implications by using three different clustering analysis including Gaussian Mixture Model, K-Means clustering, and Hierarchical clustering. As a case, we have clustered academic courses based on the usage levels and patterns of LMS in higher education using those three clustering techniques. In this study, 2,639 courses opened during 2013 fall semester in a large private university located in South Korea were analyzed with 13 observation variables that represent the characteristics of academic courses. The results of analysis show that the strengths and weakness of each clustering analysis and suggest that academic leaders and university staff should look into the usage levels and patterns of LMS with more elaborated view and take an integrated approach with different analytic methods for their strategic decision on development of LMS.

Clustering Method of Weighted Preference Using K-means Algorithm and Bayesian Network for Recommender System (추천시스템을 위한 k-means 기법과 베이시안 네트워크를 이용한 가중치 선호도 군집 방법)

  • Park, Wha-Beum;Cho, Young-Sung;Ko, Hyung-Hwa
    • Journal of Information Technology Applications and Management
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    • v.20 no.3_spc
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    • pp.219-230
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    • 2013
  • Real time accessiblity and agility in Ubiquitous-commerce is required under ubiquitous computing environment. The Research has been actively processed in e-commerce so as to improve the accuracy of recommendation. Existing Collaborative filtering (CF) can not reflect contents of the items and has the problem of the process of selection in the neighborhood user group and the problems of sparsity and scalability as well. Although a system has been practically used to improve these defects, it still does not reflect attributes of the item. In this paper, to solve this problem, We can use a implicit method which is used by customer's data and purchase history data. We propose a new clustering method of weighted preference for customer using k-means clustering and Bayesian network in order to improve the accuracy of recommendation. To verify improved performance of the proposed system, we make experiments with dataset collected in a cosmetic internet shopping mall.

A Performance Comparison of Cluster Validity Indices based on K-means Algorithm (K-means 알고리즘 기반 클러스터링 인덱스 비교 연구)

  • Shim, Yo-Sung;Chung, Ji-Won;Choi, In-Chan
    • Asia pacific journal of information systems
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    • v.16 no.1
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    • pp.127-144
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    • 2006
  • The K-means algorithm is widely used at the initial stage of data analysis in data mining process, partly because of its low time complexity and the simplicity of practical implementation. Cluster validity indices are used along with the algorithm in order to determine the number of clusters as well as the clustering results of datasets. In this paper, we present a performance comparison of sixteen indices, which are selected from forty indices in literature, while considering their applicability to nonhierarchical clustering algorithms. Data sets used in the experiment are generated based on multivariate normal distribution. In particular, four error types including standardization, outlier generation, error perturbation, and noise dimension addition are considered in the comparison. Through the experiment the effects of varying number of points, attributes, and clusters on the performance are analyzed. The result of the simulation experiment shows that Calinski and Harabasz index performs the best through the all datasets and that Davis and Bouldin index becomes a strong competitor as the number of points increases in dataset.

k-means clustering analysis of a movie poster colors using OpenCV, and recommendation system (OpenCV를 활용한 k-means clustering 기반의 포스터 색감 분석 기법 및 추천 시스템)

  • Kim, Tae Hong;OH, Sujin;Kim, Ung-Mo
    • Proceedings of the Korea Information Processing Society Conference
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    • 2018.10a
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    • pp.569-572
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    • 2018
  • 본 연구는 영화 포스터를 대상으로 OpenCV를 활용하여 k-means clustering 기반의 색감을 분석하는 기법을 제안한다. 또한 이를 활용하여 영화 포스터 간의 유사도를 구하고 특정 영화와 대표색을 가지는 영화를 추천하는 시스템을 제안한다. 이를 위해 본 연구에서 다음과 같은 가정을 기반으로 한다. 첫 번째, 포스터는 해당 영화를 가장 잘 나타내는 이미지로, 포스터의 색감은 영화의 전반적인 분위기를 가진다. 두 번째, 영화 사이에 유사한 색감을 가진다면, 해당 영화들은 유사한 분위기를 가진다. 본 연구에서는 2단계로 나누어 연구를 진행한다. 우선 k-means clustering 기법을 통하여 데이터를 전처리 하여 영화별 대표색을 선정한다. 이 때, 선정된 대표색을 이용하여 각 영화간 색감 유사도를 분석한 결과를 통해, 같은 장르의 영화도는 유사도가 높음을 확인할 수 있었다. 다음으로 앞의 색감 유사도 분석을 통하여 특정 영화와 높은 유사도를 가지는 영화를 추천한다. 본 연구에서 추천된 영화는 기존의 영화 선택 기준에 비하여 사용자 본인의 취향을 반영한다. 본 연구 내용이 영화를 추천하는 과정에서 반영된다면 추천 시스템의 정확도와 사용자 만족도 향상에 기여할 것으로 기대된다.

More Efficient k-Modes Clustering Algorithm

  • Kim, Dae-Won;Chae, Yi-Geun
    • Journal of the Korean Data and Information Science Society
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    • v.16 no.3
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    • pp.549-556
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    • 2005
  • A hard-type centroids in the conventional clustering algorithm such as k-modes algorithm cannot keep the uncertainty inherently in data sets as long as possible before actual clustering(decision) are made. Therefore, we propose the k-populations algorithm to extend clustering ability and to heed the data characteristics. This k-population algorithm as found to give markedly better clustering results through various experiments.

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Differentially Private k-Means Clustering based on Dynamic Space Partitioning using a Quad-Tree (쿼드 트리를 이용한 동적 공간 분할 기반 차분 프라이버시 k-평균 클러스터링 알고리즘)

  • Goo, Hanjun;Jung, Woohwan;Oh, Seongwoong;Kwon, Suyong;Shim, Kyuseok
    • Journal of KIISE
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    • v.45 no.3
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    • pp.288-293
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    • 2018
  • There have recently been several studies investigating how to apply a privacy preserving technique to publish data. Differential privacy can protect personal information regardless of an attacker's background knowledge by adding probabilistic noise to the original data. To perform differentially private k-means clustering, the existing algorithm builds a differentially private histogram and performs the k-means clustering. Since it constructs an equi-width histogram without considering the distribution of data, there are many buckets to which noise should be added. We propose a k-means clustering algorithm using a quad-tree that captures the distribution of data by using a small number of buckets. Our experiments show that the proposed algorithm shows better performance than the existing algorithm.

Privacy-Preserving K-means Clustering using Homomorphic Encryption in a Multiple Clients Environment (다중 클라이언트 환경에서 동형 암호를 이용한 프라이버시 보장형 K-평균 클러스터링)

  • Kwon, Hee-Yong;Im, Jong-Hyuk;Lee, Mun-Kyu
    • The Journal of Korean Institute of Next Generation Computing
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    • v.15 no.4
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    • pp.7-17
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    • 2019
  • Machine learning is one of the most accurate techniques to predict and analyze various phenomena. K-means clustering is a kind of machine learning technique that classifies given data into clusters of similar data. Because it is desirable to perform an analysis based on a lot of data for better performance, K-means clustering can be performed in a model with a server that calculates the centroids of the clusters, and a number of clients that provide data to server. However, this model has the problem that if the clients' data are associated with private information, the server can infringe clients' privacy. In this paper, to solve this problem in a model with a number of clients, we propose a privacy-preserving K-means clustering method that can perform machine learning, concealing private information using homomorphic encryption.

A Study on Process Data Compression Method by Clustering Method (클러스터링 기법을 이용한 공정 데이터의 압축 저장 기법에 관한 연구)

  • Kim Yoonsik;Mo Kyung Joo;Yoon En Sup
    • Journal of the Korean Institute of Gas
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    • v.4 no.4 s.12
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    • pp.58-64
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    • 2000
  • Data compression and retrieval method are investigated for the effective utilization of measured process data. In this paper, a new data compression method, Clustering Compression(CC), which is based on the k-means clustering algorithm and piecewise linear approximation method is suggested. Case studies on industrial data set showed the superior performance of clustering based techniques compared to other conventional methods and showed that CC could handle the compression of multi-dimensional data.

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Comparison of clustering with yeast microarray gene expression data (효모 마이크로어레이 유전자발현 데이터에 대한 군집화 비교)

  • Lee, Kyung-A;Kim, Jae-Hee
    • Journal of the Korean Data and Information Science Society
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    • v.22 no.4
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    • pp.741-753
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    • 2011
  • We accomplish clustering analyses for yeast cell cycle microarray expression data. We compare model-based clustering, K-means, PAM, SOM and hierarchical Ward method with yeast data. As the validity measure for clustering results, connectivity, Dunn Index and silhouette values are computed and compared.