To improve the accuracy of network information recognition and classification,a network information recognition and classification algorithm based on matching autonomous learning is proposed to address the high dimensionality,high noise and other characteristics of massive network information.Firstly,using support vector machine to recognize network information;Then,a retrieval matrix is constructed using singular value decomposition algorithm for singular value decomposition and correlation queries;Finally,calculate the similarity matching degree of network information,and input the network information with higher matching degree into the convolutional neural network for learning and training,outputting the network information classification results.The experimental results show that the network information recognition accuracy of the algorithm reaches over 97.90%,and the average classification accuracy for different types of network information is 98.04%,which has certain practical application effectiveness.
matching autonomous learningnetwork informationsupport vector machinesingular value decompositionconvolutional neural networkrecognition and classification