Hidden feedback recommending method of multiple-GRU-layer neural network based on user space and system thereof

A neural network, user space technology, applied in the field of implicit feedback recommendation

Inactive Publication Date: 2018-04-13
NO 709 RES INST OF CHINA SHIPBUILDING IND CORP
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0003] In view of this, it is necessary to provide a method and system for providing accurate recommendations for users by using user historical access records. This kind of recommendation scenario is based on implicit feedbac

Method used

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  • Hidden feedback recommending method of multiple-GRU-layer neural network based on user space and system thereof
  • Hidden feedback recommending method of multiple-GRU-layer neural network based on user space and system thereof
  • Hidden feedback recommending method of multiple-GRU-layer neural network based on user space and system thereof

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Embodiment Construction

[0052] The present invention will be described in further detail below in conjunction with accompanying drawing

[0053] like figure 1 The implicit feedback recommendation method based on the user-space multi-GRU layer neural network includes the following steps:

[0054] 1) Collect the historical behavior information of the items accessed by the user, and generate training samples for each user according to the records of each user's access to the item and in the order of the behavior occurrence time;

[0055] Among them, the network service provider records the item information that the user has visited, and the record is a set of triplets (u, i, t), where u is the user number, i is the item number accessed by the user, and t is the time when the behavior occurred time.

[0056] 2) Map items to user space;

[0057] Among them, each item is represented by a vector v, which is randomly generated at the beginning, and each user has a matrix u representing its preference, whi...

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Abstract

The invention relates to a hidden feedback recommending method of a multiple-GRU-layer neural network based on a user space and a system thereof. The method comprises the steps of through mapping an object to the user space, selecting an attention object characteristic for a user, performing multidirectional time sequence analysis according to a BP or PBTT algorithm and a recursion structure whichis unique in a multiple-GRU-layer neural network, predicating an interested object of the user according to the object sequence which is accessed by the user, and supplying a recommended service forthe user. The system comprises a historical behavior collecting module for an object which is accessed by the user, an object mapping user space module, a multiple-GRU-layer neural network training module and a recommending list generating module. Based on the system of the invention, the user behavior with relatively high randomness can be more accurately represented, and more accurate recommending result is obtained.

Description

technical field [0001] The invention relates to the technical field of system recommendation, in particular to an implicit feedback recommendation method and system based on a multi-GRU layer neural network in user space. Background technique [0002] Currently, network service providers provide users with online recommendation services such as news, commodities, pictures, videos, audio, documents, etc. (hereinafter collectively referred to as items). This kind of historical access records can only show that the user has a certain interest in the items that have been visited, and it does not mean that the user is not interested in the items that have not been accessed. This is because relative to the number of items that the user knows, the service provider provides The number of items is very large, the user does not visit an item may be because the user does not know the item, rather than dislike the item, this kind of ambiguous user feedback brings difficulties to the rec...

Claims

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Application Information

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IPC IPC(8): G06Q30/06G06Q30/02G06N3/04
CPCG06Q30/0201G06Q30/0631G06N3/045
Inventor 刘俊涛张毅王元斌
Owner NO 709 RES INST OF CHINA SHIPBUILDING IND CORP
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