Indian Stock Market Prediction using Augmented Financial Intelligence ML

Anishka Chauhan, Pratham Mayur, Y. Gokarakonda, Pooriya Jamie, Naman Mehrotra
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Abstract

This paper presents price prediction models using Machine Learning algorithms augmented with Superforecasters predictions, aimed at enhancing investment decisions. Five Machine Learning models are built, including Bidirectional LSTM, ARIMA, a combination of CNN and LSTM, GRU, and a model built using LSTM and GRU algorithms. The models are evaluated using the Mean Absolute Error to determine their predictive accuracy. Additionally, the paper suggests incorporating human intelligence by identifying Superforecasters and tracking their predictions to anticipate unpredictable shifts or changes in stock prices . The predictions made by these users can further enhance the accuracy of stock price predictions when combined with Machine Learning and Natural Language Processing techniques. Predicting the price of any commodity can be a significant task but predicting the price of a stock in the stock market deals with much more uncertainty. Recognising the limited knowledge and exposure to stocks among certain investors, this paper proposes price prediction models using Machine Learning algorithms. In this work, five Machine learning models are built using Bidirectional LSTM, ARIMA, a combination of CNN and LSTM, GRU and the last one is built using LSTM and GRU algorithms. Later these models are assessed using MAE scores to find which model is predicting with the highest accuracy. In addition to this, this paper also suggests the use of human intelligence to closely predict the shift in price patterns in the stock market The main goal is to identify Superforecasters and track their predictions to anticipate unpredictable shifts or changes in stock prices. By leveraging the combined power of Machine Learning and the Human Intelligence, predictive accuracy can be significantly increased.
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利用增强型金融智能 ML 预测印度股市
本文介绍了使用机器学习算法的价格预测模型,并结合超级预测师的预测,旨在加强投资决策。本文建立了五个机器学习模型,包括双向 LSTM、ARIMA、CNN 和 LSTM 的组合、GRU 以及使用 LSTM 和 GRU 算法建立的模型。使用平均绝对误差对模型进行评估,以确定其预测准确性。此外,论文还建议通过识别超级预测者并跟踪他们的预测来预测股票价格的不可预测的变化,从而将人类智能融入其中。将这些用户的预测与机器学习和自然语言处理技术相结合,可以进一步提高股价预测的准确性。预测任何商品的价格都是一项艰巨的任务,但预测股票市场上的股票价格则面临更多的不确定性。鉴于某些投资者对股票的了解和接触有限,本文提出了使用机器学习算法的价格预测模型。在这项工作中,使用双向 LSTM、ARIMA、CNN 和 LSTM 的组合、GRU 建立了五个机器学习模型,最后一个模型是使用 LSTM 和 GRU 算法建立的。随后使用 MAE 分数对这些模型进行评估,以找出预测准确率最高的模型。除此以外,本文还建议使用人类智能来密切预测股票市场价格模式的变化。主要目标是识别超级预测者并跟踪他们的预测,以预测股票价格不可预测的变化。通过利用机器学习和人类智能的综合能力,可以显著提高预测的准确性。
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