Predicting the direction of stock market prices using random forest
Luckyson Khaidem, Snehanshu Saha, Sudeepa Roy Dey

TL;DR
This paper introduces a novel approach using Random Forest ensemble learning to classify stock returns, aiming to reduce investment risk by improving prediction accuracy over traditional methods.
Contribution
The authors propose a new classification-based method employing Random Forests with technical indicators to enhance stock return prediction and minimize forecasting errors.
Findings
Random Forest outperforms existing algorithms in stock prediction.
OOB error estimates indicate high model reliability.
The approach effectively reduces investment risk.
Abstract
Predicting trends in stock market prices has been an area of interest for researchers for many years due to its complex and dynamic nature. Intrinsic volatility in stock market across the globe makes the task of prediction challenging. Forecasting and diffusion modeling, although effective can't be the panacea to the diverse range of problems encountered in prediction, short-term or otherwise. Market risk, strongly correlated with forecasting errors, needs to be minimized to ensure minimal risk in investment. The authors propose to minimize forecasting error by treating the forecasting problem as a classification problem, a popular suite of algorithms in Machine learning. In this paper, we propose a novel way to minimize the risk of investment in stock market by predicting the returns of a stock using a class of powerful machine learning algorithms known as ensemble learning. Some of…
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Taxonomy
TopicsStock Market Forecasting Methods · Neural Networks and Applications · Time Series Analysis and Forecasting
