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Technology Convergence (TC)

A Study on Korean Sentiment Analysis Rate Using Neural Network and Ensemble Combination

초록

영어

In this paper, we propose a sentiment analysis model that improves performance on small-scale data. A sentiment analysis model for small-scale data is proposed and verified through experiments. To this end, we propose Bagging-Bi-GRU, which combines Bi-GRU, which learns GRU, which is a variant of LSTM (Long Short-Term Memory) with excellent performance on sequential data, in both directions and the bagging technique, which is one of the ensembles learning methods. In order to verify the performance of the proposed model, it is applied to small-scale data and large-scale data. And by comparing and analyzing it with the existing machine learning algorithm, Bi-GRU, it shows that the performance of the proposed model is improved not only for small data but also for large data.

목차

Abstract
1. INTRODUCTION
2. PROPOSAL MODEL
2.1 Proposed Model Block Diagram
2.2 Experimental Data Sets
3. EXPERIMENT RESULT
4. CONCLUSION
REFERENCES

저자정보

  • YuJeong Sim Graduate School of Smart Convergence Kwangwoon University, Korea
  • Seok-Jae Moon Professor, Institute of Information Technology, KwangWoon University, Korea
  • Jong-Youg Lee Professor, Ingenium College of Liberal Arts, KwangWoon University, Korea

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