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http://dspace.cityu.edu.hk/handle/2031/573
Title: | Time series prediction using minimum description length |
Authors: | Lai, Yu Ning |
Department: | Department of Computer Engineering and Information Technology |
Issue Date: | 2003 |
Supervisor: | Dr. Yuen Kelvin Shiu Yin. Assessor: Dr. Feng Jian |
Abstract: | Artificial neuron networks typically consist of a large number of nonlinear functions (neurons) each with several linear and nonlinear parameters that are fitted to data through a computationally intensive training process. Longer training results in a closer fit to the data, but excessive training will lead to over-fitting. We use the Optimal Fitting Routine together with the MDL (Minimum Description Length) Principle to construct the optimal model in order to prevent over-fitting or under-fitting. Then it will be compared with the modified version of it and the aid of back-propagation. We apply these algorithms to several time series and satisfactory results are obtained. |
Appears in Collections: | Computer Engineering & Information Technology - Undergraduate Final Year Projects |
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