Development of System for Auto-Tagging Articles, Based on Neural Network

The paper describes possibilities of natural language processing in data classification. In last decade AI technologies became widespread and easy to implement and use. One of the most perspective technology in the AI field is natural language processing. New technologies will become a central part of future life because they save a lot of time. In addition, the articles shows a complete article tagging cycle using Neural Networks, ranging from data acquisition to tag storing.

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