CryptoLLM: Unleashing the Power of Prompted LLMs for SmartQnA and Classification of Crypto Posts
- URL: http://arxiv.org/abs/2411.07917v1
- Date: Tue, 12 Nov 2024 16:49:51 GMT
- Title: CryptoLLM: Unleashing the Power of Prompted LLMs for SmartQnA and Classification of Crypto Posts
- Authors: Aniket Deroy, Subhankar Maity,
- Abstract summary: This research aims to enhance the understanding and filtering of cryptocurrency discourse.
We have used a prompt-based technique to solve the classification task for reddit posts and twitter posts.
- Score: 0.0
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- Abstract: The rapid growth of social media has resulted in an large volume of user-generated content, particularly in niche domains such as cryptocurrency. This task focuses on developing robust classification models to accurately categorize cryptocurrency-related social media posts into predefined classes, including but not limited to objective, positive, negative, etc. Additionally, the task requires participants to identify the most relevant answers from a set of posts in response to specific questions. By leveraging advanced LLMs, this research aims to enhance the understanding and filtering of cryptocurrency discourse, thereby facilitating more informed decision-making in this volatile sector. We have used a prompt-based technique to solve the classification task for reddit posts and twitter posts. Also, we have used 64-shot technique along with prompts on GPT-4-Turbo model to determine whether a answer is relevant to a question or not.
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