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Journal ArticleDOI

Forecasting Stock Index Movement: A Comparison of Support Vector Machines and Random Forest

TLDR
Empirical experimentation suggests that the SVM outperforms the other classification methods in terms of predicting the direction of the stock market movement and random forest method outperforms neural network, discriminant analysis and logit model used in this study.
Abstract
There exists vast research articles which predict the stock market as well pricing of stock index financial instruments but most of the proposed models focus on the accurate forecasting of the levels (i.e. value) of the underlying stock index. There is a lack of studies examining the predictability of the direction/sign of stock index movement. Given the notion that a prediction with little forecast error does not necessarily translate into capital gain, this study is an attempt to predict the direction of S&P CNX NIFTY Market Index of the National Stock Exchange, one of the fastest growing financial exchanges in developing Asian countries. Random forest and Support Vector Machines (SVM) are very specific type of machine learning method, and are promising tools for the prediction of financial time series. The tested classification models, which predict direction, include linear discriminant analysis, logit, artificial neural network, random forest and SVM. Empirical experimentation suggests that the SVM outperforms the other classification methods in terms of predicting the direction of the stock market movement and random forest method outperforms neural network, discriminant analysis and logit model used in this study.

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Citations
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Journal ArticleDOI

Stock Market Prediction Performance of Neural Networks: A Literature Review

TL;DR: In this paper, a review of previous studies featuring an artificial neural networks based prediction model has been reviewed, and the main purpose of this review is to examine studies which use directional prediction accuracy (also known as hit ratio) or profitability of the model as a benchmark since other forecast error measures -such as mean absolute deviation (MAD), root mean squared error (RMSE), mean absolute error (MAE), and mean square error (MSE) -have been criticized for the argument that they are not able to actually show how useful the prediction model is, in terms of

Forecasting the direction of stock market index movement using three data mining techniques: the case of Tehran Stock Exchange

TL;DR: This study attempted to develop three models and compared their performances in predicting the direction of movement in daily Tehran Stock Exchange (TSE) index and found that performance of Decision Tree model was found better than Random Forest and Naive Bayesian Classifier.
Journal ArticleDOI

Machine Learning in Empirical Asset Pricing

TL;DR: Overall, the paper concludes that machine learning can offer benefits for future research, but researchers should be critical about these methodologies as machine learning has its pitfalls and is relatively new to asset pricing.
Journal ArticleDOI

Comparative Performance of Machine Learning Ensemble Algorithms for Forecasting Cryptocurrency Prices

TL;DR: The out of sample accuracy of short-term prediction daily close prices obtained by the SGBM and RF in terms of Mean Absolut Percentage Error for the three most capitalized cryptocurrencies were within 0.92-2.61 %.
References
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Statistical learning theory

TL;DR: Presenting a method for determining the necessary and sufficient conditions for consistency of learning process, the author covers function estimates from small data pools, applying these estimations to real-life problems, and much more.
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Multilayer feedforward networks are universal approximators

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TL;DR: For example, this paper found that expected returns on common stocks and long-term bonds contain a term or maturity premium that has a clear business-cycle pattern (low near peaks, high near troughs).
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TL;DR: In this article, the power of dividend yields to forecast stock returns, measured by regression R2, increases with the return horizon, and the authors offer a two-part explanation: high autocorrelation causes the variance of expected returns to grow faster than the return-horizon.
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Permanent and Temporary Components of Stock Prices

TL;DR: This article found that a slowly mean-reverting component of stock prices tends to induce negative autocorrelation in returns, which is weak for the daily and weekly holding periods common in market efficiency tests but stronger for long-horizon returns.
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