Specific user mining method and system based on naive Bayesian algorithm

A Bayesian algorithm and user-specific technology, which is applied in the specific user mining method and system field based on the naive Bayesian algorithm, can solve problems such as low accuracy and efficiency, multi-dimensional user data, and long modeling cycle. Achieve the effects of shortened time, fast calculation speed and high prediction accuracy

Inactive Publication Date: 2016-11-30
WUHAN DOUYU NETWORK TECH CO LTD
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AI Technical Summary

Problems solved by technology

At present, due to the explosive growth of the number of users of live broadcasting websites, user behavior tends to be diversified and complicated, and user behavior changes rapidly, which directly leads to multi-dimensional user data, fast update of user data, and large data volume, which leads to the establishment of specific user data. The process of the prediction model and the model itself are relatively complex, and the modeling cycle is long, which leads to the low accuracy and efficiency of the model for specific user predictions

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  • Specific user mining method and system based on naive Bayesian algorithm
  • Specific user mining method and system based on naive Bayesian algorithm
  • Specific user mining method and system based on naive Bayesian algorithm

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Embodiment Construction

[0041] The present invention will be further described in detail below in conjunction with the drawings and specific embodiments.

[0042] See figure 1 As shown, the embodiment of the present invention provides a specific user mining method based on the Naive Bayes algorithm, including the following steps:

[0043] S1. Collect the user's behavior information indicators within a set time period from the server, and select some behavior information indicators as the user's characteristic indicators.

[0044] The specific user is a paying user, the behavior information indicator includes the recharge amount, and the behavior information indicator also includes other behavior information indicators except the recharge amount.

[0045] Users with a recharge amount equal to zero are classified as unpaid users, and users with a recharge amount greater than zero are classified as paying users.

[0046] Specifically, some paying users can be sampled as positive samples and marked as 1, and some...

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Abstract

The invention discloses a specific user mining method and system based on a naive Bayesian algorithm, and relates to the technical field of networks. The method comprises the following steps that behavior information indexes of users within a set time period are collected from a server, and part of the behavior information indexes are selected to serve as characteristic indexes of the users; part of users are sampled from the collected users to serve as sampled users, and a naive Bayesian classifier is constructed through a Bayesian kit according to the characteristic indexes of the sampled users; the characteristic indexes, collected after the set time period, of the users serve as input variables of the naive Bayesian classifier, and the probability that the users are specific users is obtained. By means of the Bayesian kit, the naive Bayesian classifier is constructed according to the characteristic indexes selected from the behavior information indexes of the users, an effective characteristic index combination can be found, the specific users can be accurately recognized, and the construction efficiency of the naive Bayesian classifier is high.

Description

[0001] The present invention relates to the field of network technology, in particular to a specific user mining method and system based on a naive Bayes algorithm. Background technique [0002] With the rapid development of the live broadcast industry, the competition among various live broadcast platforms has become increasingly fierce. How to quickly and effectively dig out specific users from all users of live broadcast websites, for example, how to effectively remove potential paying users from all live broadcast websites The users are unearthed so that operators can make further refined marketing plans for specific users, improve user experience, and increase the conversion rate of specific users. This has become an urgent problem for various live broadcast websites. At present, due to the explosive growth of the number of users of live broadcast websites, user behaviors tend to be diversified and complicated, and user behaviors change rapidly, which directly leads to multip...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F17/30G06Q50/00G06Q30/02
CPCG06F16/9535G06Q30/0202G06Q50/01
Inventor 龚灿
Owner WUHAN DOUYU NETWORK TECH CO LTD
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