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- 2017
RBF Model Based on the Improved KELE AlgorithmKeywords: Locally Liner Embedding, Kernel Entropy Component Analysis, Kernel Entropy Liner Embedding Abstract: Firstly, we use the idea of mapping by kernel function of KECA to transfer original global nonlinear problem into global linear one under the high-dimensional kernel feature space to improve the manifold learning dimension reduction algorithm LLE, then put the results obtained form KELE into RBF, constructing RBF model based on KELE. And we choose the foreign exchange rate time series to verify the improved RBF model, and the results show that the improved KELE can effectively reduce the dimension of samples and the prediction accuracy of the RBF model based on KELE is increased obviously.
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