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. 2012 May 22;2012:298014. doi: 10.1155/2012/298014

Table 2.

Brief introduction of data mining methods.

Methods Advantages Disadvantages Literatures
Logistic regression Multifunction Needing of sample size Luo et al. [46]

Bayesian networks Utilization of incomplete and inaccurate data Needing of preceding researches as guidance Qu et al. [33]

Rough sets theory Without priori information; simplicity; handling ambiguous and uncertain information Needing of self-development Zhang et al. [28]

Association rules mining Supporting indirect data mining Nonselectivity; subjectivity Wu et al. [26]

Set pair analysis Suitability for changing systems Handicap in handle relatively precise problems Li et al. [45]

Structural equation modeling Analyzing the causality between the latent variables Needs of 200 samples at least Chen et al. [44]

Cluster analysis Minimization errors caused by subjective judgment Too much calculation; handicap in clustering data with multidimensions and multilevel Gu et al. [30]

Decision trees Handling in nonnumeric data; Simplicity Maybe misleading Zhong et al. [35]

Principal component analysis Dimension reduction; holism Less specificity Lu et al. [39]

Partial least squares method Specificity Handicap in deciding principal component Van Wietmarschen et al. [17]

Artificial neural network Simplicity; nonlinear Handicap in obtaining the hidden information Sun et al. [37]

Entropy cluster algorithm Little demand on variances' types; analysis on any statistical dependence of the variances Needing of self-development Wang et al. [47]

Factor analysis Correction capability; views to latent variables Absence of domination and relationship between primary and secondary Wang et al. [42]

Support vector machine Classification without representing the feature space explicitly Expressing the more complex prior information; analyzing limited samples Yang et al. [48]