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Improved Lasso+RBF neural network combined prediction model

A neural network and combined forecasting technology, applied in biological neural network models, forecasting, neural architecture, etc., can solve problems such as inaccurate analysis and performance bottlenecks, and achieve the effect of improving accuracy and reducing imbalance

Active Publication Date: 2018-11-23
CHONGQING UNIV OF POSTS & TELECOMM
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AI Technical Summary

Problems solved by technology

Because traditional methods are not suitable for dealing with large, dynamic and unstructured data types, traditional analysis methods are more likely to encounter performance bottlenecks in customer churn analysis, and because many existing analysis and prediction models are based on the entire data set Extract features, so it is not accurate enough when analyzing

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  • Improved Lasso+RBF neural network combined prediction model
  • Improved Lasso+RBF neural network combined prediction model
  • Improved Lasso+RBF neural network combined prediction model

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Embodiment Construction

[0058] The preferred embodiments of the present invention will be described in detail below with reference to the accompanying drawings.

[0059] The improved Lasso+RBF neural network combined prediction model of the present invention, the prediction process is:

[0060] First, analyze the introduction of telecom customer information and telecom customer life cycle, and give the definition of each life cycle stage. According to this definition, telecom customers are divided into acquisition stage, promotion stage, mature stage, decline stage and loss stage. To define, customers in the loss stage are divided into the acquisition stage, promotion stage, maturity stage and decline stage; secondly, for the sub-stages of the loss stage, the Lasso regression algorithm is used to extract features and obtain the characteristic equation, and the extracted non-zero coefficients The corresponding feature is used as the input of the RBF neural network, and then the center point of the dat...

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Abstract

The invention relates to an improved Lasso+RBF neural network combined prediction model, and belongs to the field of big data analysis and processing. A prediction process of the model comprises the following steps of: defining life cycle features of a customer relationship so as to divide a customer life cycle into an obtaining stage, a lifting stage, a mature stage, a decline stage and a loss stage; taking customers in the loss stage as a training set and a test set of the model, taking customers in the other four stages as prediction customers, and subdividing the customers in the loss stage into the former four stages; respectively extracting features by using Lasso regression and respectively training an RBF neural network model corresponding to each stage; respectively substituting the customers in the former four non-loss stages into the trained models corresponding to the stages to carry out prediction; and finally combining the obtained prediction results to obtain a to-be-lost customer set. According to the method provided by the invention, the extracted features are more correct, the unbalance of data is decreased and the prediction accuracy is improved.

Description

technical field [0001] The invention belongs to the field of big data analysis and processing, and relates to a method based on dividing customers according to their life cycle and adopting an improved Lasso+RBF neural network combination forecasting model to predict the loss of telecom customers. Background technique [0002] Today, with the popularity of smart phones and the rapid development of the mobile Internet, telecom companies have accumulated unprecedented data resources, and the corresponding data storage capacity is hundreds of terabytes per day. Massive data has the typical characteristics of big data, so it is called "telecom big data", which includes call detailed records, traffic and phone bill consumption, business processing information, basic user information, etc. Because traditional methods are not suitable for large-scale, dynamic and unstructured data types, this part of data implies a large number of possibilities to improve the stability and performa...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06Q10/04G06N3/04
CPCG06Q10/04G06N3/045
Inventor 熊安萍游涯龙林波
Owner CHONGQING UNIV OF POSTS & TELECOMM
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