Chagwiza, W.Garira, W.Mbedzi, Tshinanne Angel2022-11-242022-11-242022-11-10Mbedzi, T. A. (2022) Share Price Prediction for Increasing Market Efficiency using Random Forest. University of Venda. South Africa.<http://hdl.handle.net/11602/2384>.http://hdl.handle.net/11602/2384MSc (e-Science)Department of Mathematical and Computational SciencesThe price of a single share of a collection of sell-able shares, options, or other financial assets, shall be the price of a share price. The share price is unpredictable since it primarily depends on buyers’ and sellers’ expectations. Share is a primary and secondary market equity security. In this study we will use machine learning techniques to predict the share price for increasing market efficiency. In addition, it is important for us to build a models to create appropriate features to improve the performance of the models. The random forest and the recurrent neural network will be used to achieve this. To fix class imbalance, we analyse preprocessing of the data set, like the selection of the features using filter and wrapper methods and selected oversampling techniques. The model’s performance will be evaluated using Mean absolute error (MAE), Mean square error (MSE), Root mean square error (RMSE), Relative MAE (rMAE), and Relative RMSE (rRMSE). The performance of the RNN and Rf algorithms was compared for the prediction of the closing price. The Rf model was found to be the best model for predicting the stock price (closing price). This research project together with its findings will have an impact in increasing market efficiency. This will also promote potential economic growth.1 online resource (ix, 44 leaves) : color illustrationsenUniversity of VendaLassoUCTDMarket efficiencyPredictionRandom forestShare price332.63222Stock -- PricesInvestment analysisStock price forecastingPortfolio managementBusiness forecastingShare Price Prediction for Increasing Market Efficiency using Random ForestDissertationMbedzi TA. Share Price Prediction for Increasing Market Efficiency using Random Forest. []. , 2022 [cited yyyy month dd]. Available from: http://hdl.handle.net/11602/2384Mbedzi, T. A. (2022). <i>Share Price Prediction for Increasing Market Efficiency using Random Forest</i>. (). . Retrieved from http://hdl.handle.net/11602/2384Mbedzi, Tshinanne Angel. <i>"Share Price Prediction for Increasing Market Efficiency using Random Forest."</i> ., , 2022. http://hdl.handle.net/11602/2384TY - Dissertation AU - Mbedzi, Tshinanne Angel AB - The price of a single share of a collection of sell-able shares, options, or other financial assets, shall be the price of a share price. The share price is unpredictable since it primarily depends on buyers’ and sellers’ expectations. Share is a primary and secondary market equity security. In this study we will use machine learning techniques to predict the share price for increasing market efficiency. In addition, it is important for us to build a models to create appropriate features to improve the performance of the models. The random forest and the recurrent neural network will be used to achieve this. To fix class imbalance, we analyse preprocessing of the data set, like the selection of the features using filter and wrapper methods and selected oversampling techniques. The model’s performance will be evaluated using Mean absolute error (MAE), Mean square error (MSE), Root mean square error (RMSE), Relative MAE (rMAE), and Relative RMSE (rRMSE). The performance of the RNN and Rf algorithms was compared for the prediction of the closing price. The Rf model was found to be the best model for predicting the stock price (closing price). This research project together with its findings will have an impact in increasing market efficiency. This will also promote potential economic growth. DA - 2022-11-10 DB - ResearchSpace DP - Univen KW - Lasso KW - Market efficiency KW - Prediction KW - Random forest KW - Share price LK - https://univendspace.univen.ac.za PY - 2022 T1 - Share Price Prediction for Increasing Market Efficiency using Random Forest TI - Share Price Prediction for Increasing Market Efficiency using Random Forest UR - http://hdl.handle.net/11602/2384 ER -