Abstract

This research explores the integration of human and machine intelligence in the financial industry. While AI systems excel at analyzing data, humans possess unique traits that contribute to accurate predictions. Inspired by the concept of Augmented Financial Intelligence, the study aims to integrate human intelligence with existing models, considering the limitations of current human input methods. Natural Language Processing and Sentiment Analysis are used to enhance prediction tasks, but limited training data and suboptimal processing can introduce noise. The study introduces a framework that integrates human and machine intelligence to enhance cryptocurrency market forecasts, analyzing six cryptocurrencies and utilizing an Elo-based rating system to identify exceptional predictors. The framework aims to minimize noise and optimize human input in financial forecasting.

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