Method for advertisement click rate prediction based on GRU neural network

A neural network and advertising click technology, applied in the field of search engine online advertising, can solve problems such as reducing the accuracy of pre-click rate prediction, difficulty in constructing user sequence data, and unstable model prediction, so as to enhance integrity and stability, improve Prediction accuracy and the effect of improving accuracy

Active Publication Date: 2018-11-23
BEIJING UNIV OF TECH
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Problems solved by technology

However, due to the instability of each user's behavior, it is difficult to construct complete and stable user sequence data, which greatly reduces the accuracy of pre-click rate prediction; in addition, the RNN model will have gradient bursts or vanishing problem, which also makes the model's predictions unstable

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  • Method for advertisement click rate prediction based on GRU neural network
  • Method for advertisement click rate prediction based on GRU neural network
  • Method for advertisement click rate prediction based on GRU neural network

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[0034] Below in conjunction with example, and with reference to accompanying drawing, the present invention is described in further detail.

[0035] Such as figure 1 As shown, this paper provides a method for predicting the click-through rate based on the GRU neural network. Specifically include the following steps:

[0036] Step 1, get data. Obtain two consecutive weeks of advertisement data sets through a certain search engine, including advertisement information data and user click data.

[0037] Step 2, preprocessing the data. Analyze the data, remove the invalid click data of the user, and then stitch together the data information of the advertisement and the user click, and count the data and click-through rate of each advertisement on a daily basis. Finally, the data of valid clicks is completed according to the multiple imputation method.

[0038] In step 2.1, invalid click data will greatly interfere with the prediction of click rate. And there is currently no c...

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Abstract

The invention discloses a method for advertisement click rate prediction based on a GRU neural network. The method constructs a time-series data based on advertisements when preprocessing data, , andenhances the integrity and the stability between the series data compared with the user series data; and then text features are digitally encoded by one-hot coding, and only the subscript with a bit value of 1 in the mapped value is taken as the mapped value of the character. In this way, the dimension of the feature is greatly reduced, and the training speed of the model is improved. According tothe method for advertisement click rate prediction based on the GRU neural network, the invention combines a regression algorithm with a deep learning algorithm to form a final prediction method. Firstly, the feature selection is performed with a ridge regression algorithm to reduce the interference of invalid features on model training; then training and predicting are carried out with the improved GRU neural networks based on LSTM neural network. The GRU prediction model can improve the prediction accuracy compared with a RNN prediction model, , and can quickly improve the prediction accuracy and can perform a faster model training compared with the LSTM prediction model.

Description

technical field [0001] The present invention relates to the technical field of search engine network advertisements, in particular to a method for predicting the click-through rate of advertisements based on the GRU neural network in deep learning Background technique [0002] With the rapid popularization and development of the Internet, the role of search engines is increasing day by day. According to the 41st "Statistical Report on China's Internet Development", it can be seen that the number of search engine users in China has reached 640 million. Advertising promotion based on search engines has become a very popular way of advertising promotion. [0003] For the prediction of the click-through rate of online advertisements, the historical click-through-rate value was used as the forecast value at the earliest stage to the predictive click-through rate pre-method based on traditional machine learning algorithms (such as logistic regression, decision tree and Bayesian a...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06N3/04G06N3/08G06Q10/04G06Q30/02
CPCG06N3/084G06Q10/04G06Q30/0241G06N3/048
Inventor 邵勇田武阎长顺石宇良张正龙
Owner BEIJING UNIV OF TECH
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