Predicting tourism loyalty using an integrated Bayesian network mechanism

Expert Systems with Applications(2009)

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摘要
For effective Bayesian networks (BN) prediction with prior knowledge, this study proposes an integrated BN mechanism that adopts linear structural relation model (LISREL) to examine the belief or causal relationships which are subsequently used as the BN network structure for predicting tourism loyalty. Four hundred and fifty-two valid samples were collected from tourists with the tour experience of the Toyugi hot spring resort, Taiwan. The proposed mechanism is compared with back-propagation neural networks (BPN) or classification and regression trees (CART) for 10-fold cross-validation. The results indicate that our approach is able to produce effective prediction outcomes.
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关键词
effective prediction outcome,effective bayesian network,causal relationship,bn network structure,fifty-two valid sample,integrated bayesian network mechanism,loyalty,tourism management,back-propagation neural network,bayesian networks,integrated bn mechanism,10-fold cross-validation,linear structural relation model,predicting tourism loyalty,toyugi hot spring resort,proposed mechanism,bayesian network,cross validation,relational model
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