The invention discloses an academic paper recommendation method based on network representation and auxiliary
information embedding, and the method comprises the following steps: 1, constructing a
citation network, carrying out the
dimensionality reduction of variables with significant influence in each paper through
principal component analysis, obtaining a paper edge weight composed of
multiple factors, adding paper edge weights on the basis of the
citation network, and constructing a paper influence network; 2, generating a paper sequence in the paper influence network, learning an embedding vector of the paper sequence by an
algorithm to obtain a primary
graph embedding function of the paper, and adding auxiliary information of the paper into the primary
graph embedding function to obtain an ultimate
graph embedding function of the paper; 3, taking the ultimate diagram embedding function of the papers as an embedding model, calculating the similarity between each paper and the papers in which the user is interested, and generating a recommendation
list. The method has the advantages that the accuracy of the paper recommendation result is high, and the
cold start problem of the paper is relieved to a certain extent.