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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

Forecasting price movements using technical indicators: Investigating the impact of varying input window length

TL;DR: This study explores how the performance of the predictive system depends on a combination of a forecast horizon and an input window length for forecasting variable horizons.
Journal ArticleDOI

Variable Selection in Time Series Forecasting Using Random Forests

TL;DR: The highest predictive performance of RF is observed when using a low number of recent lagged predictor variables, which could be useful in relevant future applications, with the prospect to achieve higher predictive accuracy.
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151 Trading Strategies

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Journal ArticleDOI

An improved Stacking framework for stock index prediction by leveraging tree-based ensemble models and deep learning algorithms

TL;DR: Empirical results indicate that the improved Stacking method outperforms state-of-the-art ensemble learning algorithms and deep learning models, achieving a higher level of accuracy, F-score and AUC value.
Posted Content

Reinforcement learning in financial markets - a survey

TL;DR: The present paper draws insights from almost 50 publications, and categorizes them into three main approaches, i.e., critic-only approach, actor- only approach, and actor-critic approach, which help identify recurring design decisions as well as potential levers to improve the agent's performance.
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