Stock Portfolio Prediction by Multi-Target Decision Support

J. Silva, E. J. Santana, S. M. Mastelini, Sylvio Barbon Junior
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引用次数: 4

Abstract

Investing in the stock market is a complex process due to its high volatility caused by factors as exchange rates, political events, inflation and the market history. To support investor's decisions, the prediction of future stock price and economic metrics is valuable. With the hypothesis that there is a relation among investment performance indicators, we applied multi-target regression (MTR) methods to estimate 6 different indicators aiming at creating an automated prediction tool for decision support. The experiments were based on 4 datasets, corresponding to 4 different time periods, composed of 63 combinations of weights of stock-picking concepts each, simulated in the US stock market. We compared traditional machine learning approaches with four state-of-the-art MTR solutions: Stacked Single Target, Ensemble of Regressor Chains, Deep Structure for Tracking Asynchronous Regressor Stacking and Multi-output Random Forest (MORF). With the exception of MORF, traditional approaches and the MTR methods were evaluated with Random Forest and Support Vector Machine regressors. By means of extensive experimental evaluation, our results showed that the most recent MTR solutions can achieve suitable predictive performance, improving all the scenarios (12.6% in the best period, considering all target variables). In this sense, MTR is a proper strategy for building stock market decision support system based on prediction models.
基于多目标决策支持的股票投资组合预测
由于受汇率、政治事件、通货膨胀和市场历史等因素的影响,股票市场的波动性很大,投资股票市场是一个复杂的过程。为了支持投资者的决策,对未来股价和经济指标的预测是有价值的。假设投资绩效指标之间存在关系,我们应用多目标回归(MTR)方法估计6个不同的指标,旨在创建一个决策支持的自动化预测工具。实验基于4个数据集,对应4个不同的时间段,由63个选股概念的权重组合组成,模拟美国股市。我们将传统机器学习方法与四种最先进的MTR解决方案进行了比较:堆叠单目标、回归量链集成、跟踪异步回归量堆叠的深度结构和多输出随机森林(MORF)。除MORF外,传统方法和MTR方法均采用随机森林和支持向量机回归器进行评估。通过广泛的实验评估,我们的结果表明,最新的MTR解决方案可以达到合适的预测性能,提高了所有场景(考虑到所有目标变量,最佳时期提高了12.6%)。从这个意义上说,MTR是建立基于预测模型的股票市场决策支持系统的合适策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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