Serialized recommendation method based on long-term and short-term interests

A recommendation method and short-term interest technology, applied in the field of serialized recommendation and deep learning-based recommendation system, can solve problems such as different, unable to directly represent user preferences, ignore users' immediate interests, etc., and achieve the effect of solving inaccurate recommendations

Pending Publication Date: 2020-06-05
NORTHWESTERN POLYTECHNICAL UNIV
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AI Technical Summary

Problems solved by technology

[0005] Although the existing sequence models can predict the items that the user may purchase in the next purchase based on the interaction behavior sequence, there are two shortcomings: first, these methods focus on directly using the sequence between items to represent the relationship between items, However, since different users pay attention to different aspec

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  • Serialized recommendation method based on long-term and short-term interests
  • Serialized recommendation method based on long-term and short-term interests
  • Serialized recommendation method based on long-term and short-term interests

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Embodiment Construction

[0026] Further describe the technical scheme of the present invention below in conjunction with accompanying drawing:

[0027] Such as figure 1 As shown, the present invention processes the user purchase sequence data and user question data in the data set, thereby obtaining the serialized interaction data between the user and the product, and extracting the user's comment content on the product to represent the characteristics of the product; then using the recursive neural network ( Recursive Neural Network, RNN) learns the user's stable long-term preference from the user's historical purchase sequence data, and uses questioning data to model the user's immediate interest; finally, for stable long-term preference and dynamic instant interest, this paper uses attention (Attention) mechanism to describe the degree of dependence of different users on these two features. The specific method includes the following steps, see figure 2 :

[0028] S1: Obtain data and preprocess ...

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Abstract

The invention provides an educational background deterioration recommendation method based on long-term and short-term interests, and the method comprises the steps: processing user purchase sequencedata and user questioning data in a data set, obtaining the serialized interaction data of a user and a commodity, and extracting the comment content of the user for the commodity to represent the features of the commodity; learning stable long-term preferences of the user from historical purchase sequence data of the user by using a recurrent neural network, and modeling instant interests of theuser by using questioning data; and finally, for stable long-term preferences and dynamic instant interests, using an Attention mechanism to describe the degree of dependence of different users on thetwo features. The problem of inaccurate recommendation caused by user preference evolution can be effectively solved, and meanwhile, the dependence degrees of different users on long-term preferencesand different instant interests can be effectively expressed.

Description

technical field [0001] The present invention relates to the field of serialized recommendation and recommendation system based on deep learning, in particular to a method for serialized commodity recommendation based on long-term and short-term preferences. Background technique [0002] As an important part of modern e-commerce websites, recent recommendation systems try to recommend items that users want to buy or interact with in the future based on their interests or preferences. With the development of e-commerce mechanism, a large number of user interactions (such as browsing, clicking, collecting, shopping cart, purchasing) are recorded, which hides the consumption patterns of users. These logs with sufficient information provide a data basis for researching user preferences and personalized recommendations. [0003] Existing recommender systems can be summarized in two main ways to model the interaction between users and items. The first approach is matrix factoriza...

Claims

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Application Information

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IPC IPC(8): G06Q30/06
CPCG06Q30/0631G06Q30/0201G06Q30/0282
Inventor 郭斌张岩王倩茹张婧於志文
Owner NORTHWESTERN POLYTECHNICAL UNIV
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