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Combining of Random Forest Estimates using LSboost for Stock Market Index Prediction

机译:随机森林估计用LSBoost进行股票市场指数预测的组合

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This research work emphases on the prediction of future stock market index values based on historical data. The experimental evaluation is based on historical data of 10 years of two indices, namely, CNX Nifty and S&P Bombay Stock Exchange (BSE) Sensex from Indian stock markets. The predictions are made for 1-10, 15, 30, and 40 days in advance. This work proposes to combine the predictions/estimates of the ensemble of trees in a Random Forest using LSboost (i.e. LS-RF). The prediction performance of the proposed model is compared with that of well-known Support Vector Regression. Technical indicators are selected as inputs to each of the prediction models. The closing value of the stock price is the predicted variable. Results show that the proposed scheme outperforms Support Vector Regression and can be applied successfully for building predictive models for stock prices prediction.
机译:本研究重点是基于历史数据的未来股票市场指标价值的预测。实验评估基于两个指数的历史数据,即CNX Nifty和S&P Bombay证券交易所(BSE)来自印度股票市场的Sensex。预测预先提前1-10,15,30和40天。这项工作建议使用LSBoost(即LS-RF)将树集合的预测/估计结合在随机林中(即LS-RF)。将所提出的模型的预测性能与众所周知的支持向量回归进行比较。将技术指标选择为每个预测模型的输入。股价的闭合值是预测的变量。结果表明,拟议的方案优于支持向量回归,可以成功应用于为股票价格预测构建预测模型。

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