Recommendation method based on graph interaction network
A technology for networking and recommending items, applied in the field of recommendation systems, can solve the problems of model scalability and space complexity that cannot be effectively guaranteed, user and item information, and models that are difficult to deploy conveniently
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[0023] The invention proposes a personalized recommendation method based on an interactive graph neural network. The concrete realization steps of this invention are as follows:
[0024] Step 1: Select the public recommendation data set, number all users and items, and randomly select 90% of the items that each user has interacted with as the training set, and the remaining 10% of the items as the test set. Each of the training set and test set consists of three parts: user, item, and label. For items that interact with the user, the label of the piece of data is 1, otherwise the label is 0. Through all pieces of data labeled 1 in the training set, the undirected graph structure is expressed, and the connection relationship between users and items with interactive behavior is established.
[0025] Step 2: After completing the undirected graph structure of the training set, randomly initialize the high-dimensional feature representation of all user nodes and item nodes in the...
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