Dynamic graph sequence recommendation system sensitive to user interaction

A recommendation system and dynamic graph technology, applied in the field of artificial intelligence, can solve problems such as only considering short-term benefits, and achieve good generalization performance, high dynamics, and strong real-time effects

Active Publication Date: 2021-08-27
BEIHANG UNIV
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

However, on the one hand, these existing methods only consider the short-term benefits brought by single-step recommendation to users and the system in the recommendation process, which has great limitations; on the other hand

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  • Dynamic graph sequence recommendation system sensitive to user interaction
  • Dynamic graph sequence recommendation system sensitive to user interaction
  • Dynamic graph sequence recommendation system sensitive to user interaction

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Embodiment Construction

[0056] The following is a preferred embodiment of the present invention and the technical solutions of the present invention are further described in conjunction with the accompanying drawings, but the present invention is not limited to this embodiment.

[0057] The present invention proposes a dynamic graph sequence recommendation system that is sensitive to user interaction. The system as a whole adopts a reinforcement learning framework, and the data input is the rating data (or the interaction sequence data between the user and the product) and the user's own Attribute data, the output of the system is the recommended product sequence generated by continuous multiple rounds of recommendation. The recommendation result of each round is the state representation and product representation based on the dynamic graph environment after the agent observes the system environment modeled by the dynamic graph. , the user's real-time interest in the product and user attribute informa...

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Abstract

A dynamic graph sequence recommendation system sensitive to user interaction is realized through a method in the technical field of artificial intelligence. The whole system adopts a reinforcement learning framework, data input is scoring data of a user for commodities with timestamps and attribute data of the user, output of the system is a recommended commodity sequence generated by continuous multi-round recommendation, a recommendation result of each round is obtained after an intelligent agent observes a system environment subjected to dynamic graph modeling, and an optimal recommendation decision is made based on the state representation of a dynamic graph environment, the commodity representation, the real-time interest of the user in the commodities and the attribute information of the user. The operation process of the system is divided into five modules in sequence, an off-line training mode in reinforcement learning is adopted for training, a small-batch gradient descent method is used for optimizing parameters, an environment state is modeled by using a graph neural network and a self-attention mechanism, a recommendation strategy can be generated based on the real-time global environment state to obtain recommendation, and the system has strong real-time performance, high dynamic performance and expandability.

Description

technical field [0001] The invention relates to the field of artificial intelligence, in particular to a dynamic graph sequence recommendation system sensitive to user interaction. Background technique [0002] With the gradual deepening of social and economic informatization, problems such as information explosion and information overload are becoming more and more serious. Therefore, the way people obtain information is gradually changing from "people looking for information" to "information looking for people". As we all know, the recommendation system is an effective means to solve data overload. Accurate and effective recommendations can not only improve user experience and user stickiness, but also improve the efficiency of information transmission, which can directly or indirectly create more benefits. However, the user's interests and hobbies will change over time, and each interaction between the user and the recommendation system will be affected by its historical ...

Claims

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Application Information

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IPC IPC(8): G06Q10/06G06Q30/06G06F16/901G06F16/9535G06N3/04G06N3/08G06N7/00
CPCG06Q10/06393G06Q30/0631G06F16/9024G06F16/9535G06N3/04G06N3/08G06N7/01
Inventor 李建欣朱天晨彭浩姜春阳王栋
Owner BEIHANG UNIV
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