Optimization Techniques for Sentiment Analysis Based on LLM (GPT-3) (2405.09770v1)
Abstract: With the rapid development of NLP technology, large-scale pre-trained LLMs such as GPT-3 have become a popular research object in NLP field. This paper aims to explore sentiment analysis optimization techniques based on large pre-trained LLMs such as GPT-3 to improve model performance and effect and further promote the development of NLP. By introducing the importance of sentiment analysis and the limitations of traditional methods, GPT-3 and Fine-tuning techniques are introduced in this paper, and their applications in sentiment analysis are explained in detail. The experimental results show that the Fine-tuning technique can optimize GPT-3 model and obtain good performance in sentiment analysis task. This study provides an important reference for future sentiment analysis using large-scale LLMs.
- Tong Zhan (6 papers)
- Chenxi Shi (5 papers)
- Yadong Shi (1 paper)
- Huixiang Li (1 paper)
- Yiyu Lin (3 papers)