Small-world echo state network time sequence prediction method based on MCP penalty function

A technology of echo state network and time series, applied in forecasting, data processing applications, instruments, etc., can solve high-dimensional nonlinear data collinearity problems, over-fitting and other problems

Pending Publication Date: 2020-10-27
ZHEJIANG SHUREN UNIV
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AI Technical Summary

Problems solved by technology

[0003] Traditional ESN usually uses pseudo-inverse method, Ridge regression method or Lasso regression method when calculating the output weight, which is prone to collinearity and over-fitting problems when dealing with high-dimensional nonlinear data

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  • Small-world echo state network time sequence prediction method based on MCP penalty function
  • Small-world echo state network time sequence prediction method based on MCP penalty function
  • Small-world echo state network time sequence prediction method based on MCP penalty function

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Embodiment Construction

[0050] Before introducing this embodiment, some technical terms involved in the present invention will be described first, so as to facilitate understanding of some terms in English abbreviations. English abbreviation meaning among the present invention is as follows:

[0051] The ABC (Artificial Bee Colony) algorithm represents the artificial bee colony algorithm;

[0052] SWESN (Small World Echo State Network) means Small World Echo State Network;

[0053] MCP (Minimax Concave Penalty) represents the minimum maximum concave penalty penalty model;

[0054] LQA (Local Quadratic Approximation) represents a local quadratic approximation algorithm.

[0055] This embodiment discloses a small-world echo state network time series prediction method based on the MCP penalty function, such as figure 1 As shown, the framework of the entire time series forecasting method is divided into three layers: the input layer is on the left, the reserve pool is in the middle, and the output layer...

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Abstract

The invention discloses a time series prediction method. An MCP penalty model is adopted to optimize the output weight of a small-world echo state network in the construction of the small-world echo state network; the over-fitting problem occurring when the weight is calculated by a conventional regression method is solved; an LQA approximate decomposition MCP penalty function is selected; approximate solutions of a model are determined, the problem that the MCP penalty function cannot be derived at the original point is solved; the hyper-parameter of the MCP penalty model is optimized on thebasis of the artificial bee colony algorithm integrated with the intersection and extrusion strategy, the convergence effectiveness is improved while the global optimality of the optimized parameter is guaranteed, the effective compression capacity of the MCP penalty model is improved accordingly, and the method has high application value in nonlinear time sequence prediction.

Description

Technical field: [0001] The invention relates to a time series prediction method, in particular to a small-world echo state network time series prediction method based on an MCP penalty function. Background technique: [0002] Time series forecasting has been widely used in industry, finance, military and other fields. Since most of the time series in real life are nonlinear and unstable, the prediction of nonlinear and unstable time series has always been a hot topic. research scholars in various fields. At present, one of the main methods for forecasting nonlinear and unstable time series is to use Echo State Network (ESN). The characteristic of ESN is that it only needs to train the output weights from the reserve pool to the output layer during training, which solves the problems of traditional neural networks that are easy to fall into local optimum and complex training algorithms. Therefore, computing output weights is the key to echo state network learning. [0003...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q10/04G06N3/00
CPCG06N3/006G06Q10/04
Inventor 刘半藤陈唯王章权陈友荣
Owner ZHEJIANG SHUREN UNIV
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