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Computational statistics / Regression analysis / Statistical models / Logistic regression / Artificial neural network / Logistic function / Discrete choice / Linear discriminant analysis / Consumer behaviour / Statistics / Computational neuroscience / Neural networks
Date: 2013-01-15 18:03:04
Computational statistics
Regression analysis
Statistical models
Logistic regression
Artificial neural network
Logistic function
Discrete choice
Linear discriminant analysis
Consumer behaviour
Statistics
Computational neuroscience
Neural networks

Consumer Choice Prediction: Artificial Neural Networks versus Logistic Model

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