Deep Learning – Now and Next in Text Mining and Natural Language Processing

作者: NI Widiastuti , None

DOI: 10.1088/1757-899X/407/1/012114

关键词: Computer scienceDomain (software engineering)Artificial intelligenceLearning methodsNatural language processingText miningNetwork architectureDeep learning

摘要: This study was conducted to find out what has not been discussed in last research domain text mining and NLP using Deep Learning. In this literature review covered more than 50 articles that can be accessed from a various portal of scientific articles. The focuses are on important elements network influences them. results indicate currently, discusses how data is presented. due the assumption input very performance an algorithm. modification architecture combination techniques also attracted researchers. next studies many points done Especially features, learning methods, others issues Text NLP.

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