Abstract

People continuously hunt for a precise and productive strategy to control the stock exchange because the monetary trade is recognised for its unbelievably different character and unpredictability. Even a minor gain in predicting performance will be extremely profitable and significant. Our novel study implemented six boosting techniques, i.e., XGBoost, AdaBoost, Gradient Boosting, LightGBM, CatBoost, and Histogram-based Gradient Boosting, and these boosting techniques were hybridised using a stacking framework to find out the direction of the stock market. Five different stock datasets were selected from four different countries and were used for our experiment. We used two-way overfitting protection during our model building process, i.e., dynamic reduction technique and cross-validation technique. For model evaluation purposes, we used the performance metrics, i.e., accuracy, ROC curve (AUC), F-score, precision, and recall. The aim of our study was to propose and select a predictive model whose training and testing accuracy difference was minimal in all stocks. The findings revealed that the meta-classifier Meta-LightGBM had training and testing accuracy differences that were very low among all stocks. As a result, a proper model selection might allow investors the freedom to invest in a certain stock in order to successfully control risk and create short-term, sustainable profits.

Highlights

  • Forecasting future stock values has long been a contentious academic issue

  • When we attempted to develop an ensemble framework, six types of ensemble algorithms were used: XGB classifier, AdaBoost Classifier, Gradient boosting, LightGBM, CatBoost, and Hist gradient boosting as base learners

  • This study is based on fusion of ensemble models with technical indicators and extracted features to develop an evolutionary ensembled framework for forecasting stock market swings

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Summary

Introduction

Forecasting future stock values has long been a contentious academic issue. For a significant stretch of time, it was assumed that fluctuations in stock values could not be predicted. The share value index is an important part of the financial system since it represents global economic success. Real-world businesses must be watchful of their security as well as their growth. At almost the same moment, investors and analysts were interested in learning about the overall capital market patterns and trends. Correctness in forecasting is critical for stakeholders’ well-being. In the midst of the messy and volatile character of stock markets, forecasting future price movements is a difficult topic on which academicians are seeking to improve forecasting models

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