dc.creatorSantana, Everton Jose
dc.creatorda silva, João Augusto Provin Ribeiro
dc.creatorMastelini, Saulo Martiello
dc.creatorBarbon Jr, Sylvio
dc.date2019-04-17
dc.date.accessioned2023-06-16T20:46:05Z
dc.date.available2023-06-16T20:46:05Z
dc.identifierhttp://seer.unirio.br/isys/article/view/7865
dc.identifier.urihttps://repositorioslatinoamericanos.uchile.cl/handle/2250/6686610
dc.descriptionInvesting 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,  the goal of this paper was exploring multi-target regression (MTR) methods to estimate 6 different indicators and finding out the method that would best suit in an automated prediction tool for decision support regarding predictive performance. 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 seven state-of-the-art MTR solutions: Stacked Single Target, Ensemble of Regressor Chains, Deep Structure  for Tracking Asynchronous Regressor Stacking,   Deep  Regressor Stacking, Multi-output Tree Chaining,  Multi-target Augment Stacking  and Multi-output Random Forest (MORF). With the exception of MORF, traditional approaches and the MTR methods were evaluated with Extreme Gradient Boosting, 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 (14.70% in the best one, considering all target variables and periods). In this sense, MTR is a proper strategy for building stock market decision support system based on prediction models.en-US
dc.formatapplication/pdf
dc.languageeng
dc.publisherUniriopt-BR
dc.relationhttp://seer.unirio.br/isys/article/view/7865/7724
dc.rightsCopyright (c) 2019 Everton Jose Santanapt-BR
dc.sourceiSys - Brazilian Journal of Information Systems; Vol. 12 No. 1 (2019); 05-27en-US
dc.sourceiSys - Brazilian Journal of Information Systems; v. 12 n. 1 (2019); 05-27pt-BR
dc.source1984-2902
dc.subjectStock marketen-US
dc.subjectMulti-target regressionen-US
dc.subjectDecision support systemen-US
dc.subjectMachine Learningen-US
dc.titleStock Portfolio Prediction by Multi-Target Decision Supporten-US
dc.typeinfo:eu-repo/semantics/article
dc.typeinfo:eu-repo/semantics/publishedVersion


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