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  • Search: isPartOf:"Journal of Classification"
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Cluster analysis 24 Clustering 19 Multidimensional scaling 19 Classification 17 Consensus 11 Hierarchical clustering 10 Hierarchical classification 9 Ultrametric 8 Partition 7 Correspondence analysis 6 Discriminant analysis 6 Dissimilarity 6 Polynomial algorithm 6 Dendrogram 5 Fuzzy clustering 5 Missing data 5 Model selection 5 Numerical taxonomy 5 Additive clustering 4 Algorithm complexity 4 Algorithm design 4 Alternating least squares 4 Complexity 4 Consensus trees 4 EM algorithm 4 Hierarchy 4 Metric 4 Outliers 4 Proximity data 4 Seriation 4 ADCLUS 3 Association coefficients 3 Biplot 3 Canonical variate analysis 3 Clustering methodology 3 Combinatorial optimization 3 Consensus function 3 Constrained clustering 3 Cross validation 3 Diameter 3
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Undetermined 429
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Article 429
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Undetermined 429
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Heiser, Willem 13 Day, William 12 Carroll, J. 11 DeSarbo, Wayne 11 Murtagh, Fionn 11 Krzanowski, W. 8 Milligan, Glenn 8 Soete, Geert 8 Arabie, Phipps 7 Leeuw, Jan 7 Warrens, Matthijs 7 Bryant, Peter 6 Dubes, Richard 6 Gordon, A. 6 Hansen, Pierre 6 Legendre, Pierre 6 Kiers, Henk 5 Mechelen, Iven 5 Mirkin, Boris 5 Sokal, Robert 5 Windham, Michael 5 Barthélemy, Jean-Pierre 4 Berge, Jos 4 Brossier, Gildas 4 Brusco, Michael J. 4 Chaturvedi, Anil 4 Critchley, Frank 4 Fraley, Chris 4 Frank, Ove 4 Furnas, George 4 Gower, John 4 Green, Paul 4 Greenacre, Michael 4 Hansen, P. 4 Hubert, Lawrence 4 Jaumard, B. 4 Klauer, K. 4 Lapointe, François-Joseph 4 McMorris, F. 4 Raftery, Adrian E. 4
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Journal of Classification 429
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RePEc 429
Showing 31 - 40 of 429
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Model Selection for the Trend Vector Model
Yu, Hsiu-Ting; Rooij, Mark - In: Journal of Classification 30 (2013) 3, pp. 338-369
Model selection is an important component of data analysis. This study focuses on issues of model selection for the trend vector model, a model for the analysis of longitudinal multinomial outcomes. The trend vector model is a so-called marginal model, focusing on population averaged evolutions...
Persistent link: https://www.econbiz.de/10010848625
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Using Neural Network Analysis to Define Methods of DINA Model Estimation for Small Sample Sizes
Shu, Zhan; Henson, Robert; Willse, John - In: Journal of Classification 30 (2013) 2, pp. 173-194
The DINA model is a commonly used model for obtaining diagnostic information. Like many other Diagnostic Classification Models (DCMs), it can require a large sample size to obtain reliable item and examinee parameter estimation. Neural Network (NN) analysis is a classification method that uses a...
Persistent link: https://www.econbiz.de/10010681343
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Incorporating Student Covariates in Cognitive Diagnosis Models
Ayers, Elizabeth; Rabe-Hesketh, Sophia; Nugent, Rebecca - In: Journal of Classification 30 (2013) 2, pp. 195-224
In educational measurement, cognitive diagnosis models have been developed to allow assessment of specific skills that are needed to perform tasks. Skill knowledge is characterized as present or absent and represented by a vector of binary indicators, or the skill set profile. After determining...
Persistent link: https://www.econbiz.de/10010681344
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Comparing Optimization Algorithms for Item Selection in Mokken Scale Analysis
Straat, J.; Ark, L.; Sijtsma, Klaas - In: Journal of Classification 30 (2013) 1, pp. 75-99
Mokken scale analysis uses an automated bottom-up stepwise item selection procedure that suffers from two problems. First, when selected during the procedure items satisfy the scaling conditions but they may fail to do so after the scale has been completed. Second, the procedure is approximate...
Persistent link: https://www.econbiz.de/10010634429
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A Thurstonian Ranking Model with Rank-Induced Dependencies
Ennis, Daniel; Ennis, John - In: Journal of Classification 30 (2013) 1, pp. 124-147
A Thurstonian model for ranks is introduced in which rank-induced dependencies are specified through correlation coefficients among ranked objects that are determined by a vector of rank-induced parameters. The ranking model can be expressed in terms of univariate normal distribution functions,...
Persistent link: https://www.econbiz.de/10010634430
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Additive Biclustering: A Comparison of One New and Two Existing ALS Algorithms
Wilderjans, Tom; Depril, Dirk; Mechelen, Iven Van - In: Journal of Classification 30 (2013) 1, pp. 56-74
The additive biclustering model for two-way two-mode object by variable data implies overlapping clusterings of both the objects and the variables together with a weight for each bicluster (i.e., a pair of an object and a variable cluster). In the data analysis, an additive biclustering model is...
Persistent link: https://www.econbiz.de/10010634431
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Model Similarity and Rank-Order Based Classification of Bayesian Networks
Kim, Sung-Ho; Noh, Geonyoup - In: Journal of Classification 30 (2013) 3, pp. 428-452
Suppose that we rank-order the conditional probabilities for a group of subjects that are provided from a Bayesian network (BN) model of binary variables. The conditional probability is the probability that a subject has a certain attribute given an outcome of some other variables and the...
Persistent link: https://www.econbiz.de/10010728142
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Constrained Multilevel Latent Class Models for the Analysis of Three-Way Three-Mode Binary Data
Meulders, Michel; Tuerlinckx, Francis; Vanpaemel, Wolf - In: Journal of Classification 30 (2013) 3, pp. 306-337
Probabilistic feature models (PFMs) can be used to explain binary rater judgements about the associations between two types of elements (e.g., objects and attributes) on the basis of binary latent features. In particular, to explain observed object-attribute associations PFMs assume that...
Persistent link: https://www.econbiz.de/10010728143
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Editorial
Anderson, Carolyn; Douglas, Jeff - In: Journal of Classification 30 (2013) 2, pp. 149-151
Persistent link: https://www.econbiz.de/10010848622
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The Development of Computerized Adaptive Testing with Cognitive Diagnosis for an English Achievement Test in China
Liu, Hong-Yun; You, Xiao-Feng; Wang, Wen-Yi; Ding, Shu-Liang - In: Journal of Classification 30 (2013) 2, pp. 152-172
Persistent link: https://www.econbiz.de/10010681345
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