A COMPARATIVE ANALYSIS ON DEEP LEARNING ALGORITHMS FOR LARGE OUTPUT SPACES

Authors

  • R.V.V.GANI LAKSHMI
  • R.S.V.V.PRASAD RAO
  • S.JYOTHIRMAYEE

Keywords:

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Abstract

Natural language processing has a wide range of applications like voice recognition, machine translation, product review, aspect-oriented product analysis, sentiment classification and processing like email analysis several different research projects have utilized deep learning approaches in NLP. Supervised or unsupervised hierarchical deep learning is done with unsupervised or supervised methods in deep learning. Long Short-Term Recurrent Network (LSTM) and General CNN are among the most popular deep learning methods (LSTM). Beneficial in the field of AI and can be felt in many fields. Approaches like artificial intelligence have been particularly effective in simplifying the complexity and challenges in image recognition. Also aims to investigate a wide variety of deep learning topics, with a special focus on various methods and architectures.

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Published

2020-09-25

How to Cite

R.V.V.GANI LAKSHMI, R.S.V.V.PRASAD RAO, & S.JYOTHIRMAYEE. (2020). A COMPARATIVE ANALYSIS ON DEEP LEARNING ALGORITHMS FOR LARGE OUTPUT SPACES. Journal of Science & Technology (JST), 5(Special Issue 1), 1–3. Retrieved from https://jst.org.in/index.php/pub/article/view/622