Local optima in K-means clustering: what you don't know may hurt you.
about
Regional health care planning: a methodology to cluster facilities using community utilization patterns.Modeling differences in the dimensionality of multiblock data by means of clusterwise simultaneous component analysis.KSC-N: Clustering of Hierarchical Time Profile Data.Principal Cluster Axes: A Projection Pursuit Index for the Preservation of Cluster Structures in the Presence of Data Reduction.A Comparison of Latent Class, K-Means, and K-Median Methods for Clustering Dichotomous Data.Principal Covariates Clusterwise Regression (PCCR): Accounting for Multicollinearity and Population Heterogeneity in Hierarchically Organized Data.Cancer incidence in men: a cluster analysis of spatial patternsThe p-median model as a tool for clustering psychological data.Finding groups using model-based cluster analysis: heterogeneous emotional self-regulatory processes and heavy alcohol use risk.Clusterwise HICLAS: a generic modeling strategy to trace similarities and differences in multiblock binary data.Common and cluster-specific simultaneous component analysis.Psychosocial costs of racism to Whites: Understanding patterns among university studentsCollaboration processes and perceived effectiveness of integrated care projects in primary care: a longitudinal mixed-methods studyMeta-analysis of cell- specific transcriptomic data using fuzzy c-means clustering discovers versatile viral responsive genes.The utility of rural and underserved designations in geospatial assessments of distance traveled to healthcare services: implications for public health research and practice.A model-based cluster analysis approach to adolescent problem behaviors and young adult outcomesClassifying Academically At-Risk First Graders into Engagement Types: Association with Long-Term Achievement Trajectories.Identifying subtypes of criminal psychopaths: A replication and extension.Psychopathy Subtypes among African American County Jail Inmates.Clustering Vector Autoregressive Models: Capturing Qualitative Differences in Within-Person Dynamics.Identifying and determining the symptom severity associated with polyvictimization among psychiatrically impaired children in the outpatient setting.Subspace K-means clustering.Applications of cluster analysis to the creation of perfectionism profiles: a comparison of two clustering approaches.Patterns of women's aggression against partners and others: broadening our understanding of violence.A Monte Carlo Evaluation of Weighted Community Detection Algorithms.Local Optima in Mixture Modeling.Simultaneous Two-Way Clustering of Multiple Correspondence Analysis.Examining the effect of initialization strategies on the performance of Gaussian mixture modeling.EEG vigilance regulation patterns and their discriminative power to separate patients with major depression from healthy controls.TwoMP: a MATLAB graphical user interface for two-mode partitioning.Narrative elaboration and participation: two dimensions of maternal elicitation style.Detecting Clusters/Communities in Social Networks.A note on the expected value of the Rand index.A cluster-based factor rotation.Examining Factor Score Distributions to Determine the Nature of Latent Spaces.Analysis of urbanization dynamics in mainland China using pixel-based night-time light trajectories from 1992 to 2013Delineation of Phenoregions in Geographically Diverse Regions Using k-means++ Clustering: A Case Study in the Upper Colorado River BasinOnline Measurement Perspectives for Students’ Strategy Use: Tool Use within a Content Management System
P2860
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P2860
Local optima in K-means clustering: what you don't know may hurt you.
description
2003 nî lūn-bûn
@nan
2003年の論文
@ja
2003年学术文章
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2003年学术文章
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2003年学术文章
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2003年学术文章
@zh-hans
2003年学术文章
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2003年学术文章
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2003年學術文章
@zh-hant
name
Local optima in K-means clustering: what you don't know may hurt you.
@en
Local optima in K-means clustering: what you don't know may hurt you.
@nl
type
label
Local optima in K-means clustering: what you don't know may hurt you.
@en
Local optima in K-means clustering: what you don't know may hurt you.
@nl
prefLabel
Local optima in K-means clustering: what you don't know may hurt you.
@en
Local optima in K-means clustering: what you don't know may hurt you.
@nl
P1476
Local optima in K-means clustering: what you don't know may hurt you.
@en
P2093
Douglas Steinley
P304
P356
10.1037/1082-989X.8.3.294
P577
2003-09-01T00:00:00Z