JOURNAL ARTICLE

Human resource recommendation algorithm based on convolutional neural network

Abstract

Among various kinds of image recognition, the Chinese character recognition has a very wide range of application prospect and practical value, for example, can be used in sorting, license plate recognition, billboard recognition, identity CARDS, auxiliary blind people read scene, can realize automatic recognition, reduce artificial operation, save time and manpower cost, convenient people's life. Deep learning mainly builds a neural network model with multiple hidden layers. In this paper, a large number of training samples are used to learn more useful features, so as to improve the prediction and classification accuracy of the network model. As an important network model of deep learning, convolutional neural network has the characteristics of hierarchical structure, weight sharing, regional local perception, feature extraction and global training combined with classification process, etc., and has been widely applied in the field of image recognition. In particular, deep convolutional neural network is currently a research hotspot. It is of great application value to study its own and its application in the identification of different samples.

Keywords:
Computer science Convolutional neural network Artificial intelligence Deep learning Artificial neural network Neocognitron Pattern recognition (psychology) Feature extraction Cognitive neuroscience of visual object recognition License Time delay neural network Contextual image classification Machine learning Image (mathematics)

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0.53
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Citation History

Topics

Advanced Technologies in Various Fields
Physical Sciences →  Computer Science →  Artificial Intelligence
E-commerce and Technology Innovations
Social Sciences →  Business, Management and Accounting →  Business and International Management

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