Fuzzy neural networks with application to sales forecasting
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2014, Digital Signal Processing: A Review JournalCitation Excerpt :Statistical learning for promotional modeling. Other researchers have proposed nonlinear statistical learning algorithms, including such classic nonparametric methods as k nearest neighbors (k-NN) and kernel estimators [34], as well as the new learning techniques such as neural networks and support vector machines [12,13,35–38]. It is worthwhile to note that nonlinearity, nonnormal errors, and heteroscedasticity are automatically harmonized by these kinds of methods.
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