Search Results - K‐means cluster algorithm parameter determination

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  1. 1

    Urban storm flood simulation using improved SWMM based on Kmeans clustering of parameter samples by Sun, Yue, Liu, Chengshuai, Du, Xian, Yang, Fan, Yao, Yichen, Soomro, Shan‐e‐hyder, Hu, Caihong

    ISSN: 1753-318X, 1753-318X
    Published: Oxford, UK Blackwell Publishing Ltd 01.12.2022
    Published in Journal of flood risk management (01.12.2022)
    “… Calibrated uncertain parameters from 76 papers were selected as samples, and the Kmeans clustering algorithm was used to cluster and calculate the parameter values…”
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    Journal Article
  2. 2

    Determination of the appropriate parameters for Kmeans clustering using selection of region clusters based on density DBSCAN (SRCD‐DBSCAN) by Limwattanapibool, Onapa, Arch‐int, Somjit

    ISSN: 0266-4720, 1468-0394
    Published: Oxford Blackwell Publishing Ltd 01.06.2017
    Published in Expert systems (01.06.2017)
    “… An inappropriate determination of the number of clusters or the initial cluster centre decreases the accuracy of Kmeans clustering…”
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    Journal Article
  3. 3

    Search Space Reduction for Determination of Earthquake Source Parameters Using PCA and k-Means Clustering by Lee, Seongjae, Kim, Taehyoun

    ISSN: 1687-725X, 1687-7268
    Published: Cairo, Egypt Hindawi Publishing Corporation 07.09.2020
    Published in Journal of sensors (07.09.2020)
    “…The characteristics of an earthquake can be derived by estimating the source geometries of the earthquake using parameter inversion that minimizes the L2 norm of residuals between the measured…”
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  4. 4

    Enhanced Multi‐Objective Optimization Model for Bridge Performance Assessment and Prediction, Based on Improved PCA, KMeans Clustering, and Kaplan–Meier Survival Algorithm by Gui, Chengzhong, Duan, Zhi, Huang, Zuwei, Sun, Zhiguo, Qiao, Wei, Cheng, Yu

    ISSN: 2577-8196, 2577-8196
    Published: Hoboken, USA John Wiley & Sons, Inc 01.01.2025
    Published in Engineering reports (Hoboken, N.J.) (01.01.2025)
    “…‐source heterogeneous data, selection of key sub‐parameters using Principal Component Analysis (PCA), enhanced K…”
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    Journal Article
  5. 5

    Research on Urban Storm Flood Simulation by Coupling K-means Machine Learning Algorithm and GIS Spatial Analysis Technology into SWMM Model by Liu, Chengshuai, Hu, Caihong, Zhao, Chenchen, Sun, Yue, Xie, Tianning, Wang, Huiliang

    ISSN: 0920-4741, 1573-1650
    Published: Dordrecht Springer Netherlands 01.04.2024
    Published in Water resources management (01.04.2024)
    “… The K-means clustering machine learning algorithm is used to determine the uncertain parameters of the SWMM model, while GIS spatial analysis techniques enhance the two-dimensional realism of flood simulation…”
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  6. 6

    Determination of Customer Satisfaction using Improved K-means algorithm by Zare, Hamed, Emadi, Sima

    ISSN: 1432-7643, 1433-7479
    Published: Berlin/Heidelberg Springer Berlin Heidelberg 01.11.2020
    Published in Soft computing (Berlin, Germany) (01.11.2020)
    “…). To accurately predict customer’s behaviour, clustering, especially K -means, is one of the most important data mining techniques used in customer relationship management marketing, with which it is possible to identify customers…”
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  7. 7

    Open cluster membership probability based on K-means clustering algorithm by El Aziz, Mohamed Abd, Selim, I. M., Essam, A.

    ISSN: 0922-6435, 1572-9508
    Published: Dordrecht Springer Netherlands 01.08.2016
    Published in Experimental astronomy (01.08.2016)
    “… So in this paper, we presented a new method for the determination of open cluster membership based on K-means clustering algorithm…”
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  8. 8

    Determination of impact fragments from particle analysis via smoothed particle hydrodynamics and k-means clustering by Sakong, Jae, Woo, Sung-Choong, Kim, Tae-Won

    ISSN: 0734-743X, 1879-3509
    Published: Oxford Elsevier Ltd 01.12.2019
    “…•A method to determine the fragment distribution from the particle dispersion by using a clustering algorithm was suggested…”
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    Journal Article
  9. 9

    Comparison of K-Means and Fuzzy c-Means Algorithm Performance for Automated Determination of the Arterial Input Function by Yin, Jiandong, Sun, Hongzan, Yang, Jiawen, Guo, Qiyong

    ISSN: 1932-6203, 1932-6203
    Published: United States Public Library of Science 04.02.2014
    Published in PloS one (04.02.2014)
    “… Two automatic methods have been reported that are based on two frequently used clustering algorithms: fuzzy c-means (FCM) and K-means…”
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  10. 10

    Large-Scale Automatic K-Means Clustering for Heterogeneous Many-Core Supercomputer by Yu, Teng, Zhao, Wenlai, Liu, Pan, Janjic, Vladimir, Yan, Xiaohan, Wang, Shicai, Fu, Haohuan, Yang, Guangwen, Thomson, John

    ISSN: 1045-9219, 1558-2183
    Published: New York IEEE 01.05.2020
    “… Furthermore, we propose an automatic hyper-parameter determination process for k-means clustering, by automatically generating and executing the clustering…”
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  11. 11

    Non-hierarchical cluster analysis for determination of resistance to worm infection in meat sheep by Araujo, Johnny Iglesias Mendes, da Silva Santos, Natanael Pereira, de Oliveira, Max Brandão, Sena, Luciano Silva, Biagiotti, Daniel, de Araujo Rego Neto, Aurino, Sarmento, José Lindenberg Rocha

    ISSN: 0049-4747, 1573-7438, 1573-7438
    Published: Dordrecht Springer Netherlands 01.03.2021
    Published in Tropical animal health and production (01.03.2021)
    “… Inês sheep by combining different sets of gastrointestinal parasite resistance indicator traits, using the k -means algorithm…”
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  12. 12

    Combining data-intelligent algorithms for the assessment and predictive modeling of groundwater resources quality in parts of southeastern Nigeria by Egbueri, Johnbosco C., Agbasi, Johnson C.

    ISSN: 0944-1344, 1614-7499, 1614-7499
    Published: Berlin/Heidelberg Springer Berlin Heidelberg 01.08.2022
    “…Machine learning algorithms have proven useful in the estimation, classification, and prediction of water quality parameters…”
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  13. 13

    Unsupervised machine learning effectively clusters pediatric spastic cerebral palsy patients for determination of optimal responders to selective dorsal rhizotomy by Hou, Xiaobin, Yan, Yanyun, Zhan, Qijia, Wang, Junlu, Xiao, Bo, Jiang, Wenbin

    ISSN: 2045-2322, 2045-2322
    Published: London Nature Publishing Group UK 19.05.2023
    Published in Scientific reports (19.05.2023)
    “… Spasticity of lower limbs, the number of target muscles, motor functions, and other clinical parameters were used as input variables for unsupervised machine learning to cluster all included patients…”
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  14. 14

    Determination of essential phenotypic elements of clusters in high-dimensional entities—DEPECHE by Theorell, Axel, Bryceson, Yenan Troi, Theorell, Jakob

    ISSN: 1932-6203, 1932-6203
    Published: United States Public Library of Science 07.03.2019
    Published in PloS one (07.03.2019)
    “… complex data interpretable. Here, we introduce DEPECHE, a rapid, parameter free, sparse k-means-based algorithm for clustering of multi- and megavariate single-cell data…”
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  15. 15

    A Hybrid-Weight TOPSIS and Clustering Approach for Optimal GNSS Station Selection in Multi-GNSS Precise Orbit Determination by Jin, Weitong, Li, Xing, Chen, Liang, Sheng, Chuanzhen, Yuan, Yongqiang, Zhang, Keke, Li, Xingxing, Zhang, Jingkui, Zhang, Xulun, Yu, Baoguo

    ISSN: 2072-4292, 2072-4292
    Published: Basel MDPI AG 01.11.2025
    Published in Remote sensing (Basel, Switzerland) (01.11.2025)
    “…) model with spherical k-means clustering, effectively resolving the challenge of balancing station data quality with uniform spatial distribution…”
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  16. 16

    Determination of Interrupt-Coalescence Latency of Remote Hosts Through Active Measurement by Salehin, Khondaker, Sahasrabudhe, Vinitmadhukar, Rojas-Cessa, Roberto

    ISSN: 2169-3536, 2169-3536
    Published: Piscataway IEEE 01.01.2018
    Published in IEEE access (01.01.2018)
    “… Even though the adoption of IC has its benefits, the additional delay negatively affects the hosts that are involved in the performance measurement of various network parameters and time-sensitive applications…”
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  17. 17

    An Adaptive Parameter-Free Optimal Number of Market Segments Estimation Algorithm Based on a New Internal Validity Index by Qi, Jianfang, Li, Yue, Jin, Haibin, Feng, Jianying, Tian, Dong, Mu, Weisong

    ISSN: 1526-1506, 1526-1492, 1526-1506
    Published: Henderson Tech Science Press 2023
    “…) Between-Within-Connectivity (BWCON) and a new stable clustering algorithm Natural-SDK-means++ (NSDK-means++) in a novel way. First, to complete the evaluation dimensions…”
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  18. 18

    Determination of cluster number in clustering microarray data by Shen, Judong, Chang, Shing I., Lee, E. Stanley, Deng, Youping, Brown, Susan J.

    ISSN: 0096-3003, 1873-5649
    Published: New York, NY Elsevier Inc 15.10.2005
    Published in Applied mathematics and computation (15.10.2005)
    “… Although various algorithms have been proposed for the clustering of microarray data, the main difficulty remains to be the determination of the optimal number of clusters…”
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  19. 19

    Analysis of the mandibular canal course using unsupervised machine learning algorithm by Kim, Young Hyun, Jeon, Kug Jin, Lee, Chena, Choi, Yoon Joo, Jung, Hoi-In, Han, Sang-Sun

    ISSN: 1932-6203, 1932-6203
    Published: United States Public Library of Science 19.11.2021
    Published in PloS one (19.11.2021)
    “… Cluster analysis was carried out as follows: parameter measurement, parameter normalization, cluster tendency evaluation, optimal number of clusters determination, and k-means cluster analysis…”
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  20. 20

    Fuzzy K-Means Clustering With Discriminative Embedding by Nie, Feiping, Zhao, Xiaowei, Wang, Rong, Li, Xuelong, Li, Zhihui

    ISSN: 1041-4347, 1558-2191
    Published: New York IEEE 01.03.2022
    “…Fuzzy K-Means (FKM) clustering is of great importance for analyzing unlabeled data…”
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