The comparative analyses of the nonparametric methods for investment return prediction

N. Ralević, Goran B. Andjelic, V. Djakovic, N. Glisovic
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引用次数: 1

Abstract

The financial market is complex, evolving and dynamic system, which has an extremely non-linear movement. Thus, investment return prediction represents a significant challenge, especially because of its great diversity, unsteadiness and unstructured data with a high degree of instability and pronounced hidden connections. It is known that accurate prediction of the stock market indexes is very important for the development of effective trading strategies in investments. The main objective of the research is to perform the comparative analyses of different nonparametric methods, that is, fuzzy artificial neural networks (fuzzyANN) and genetic algorithm artificial neural networks (GAANN) for predicting the movements of the stock market indexes. The survey is conducted on the BELEX15, SBITOP, BUX and CROBEX stock market indexes. Model estimates were carried out through the prediction error MAE, MAPE and RMSE. The research results point to the adequacy of the nonparametric methods application in investments.
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非参数投资收益预测方法的比较分析
金融市场是一个复杂的、不断变化的动态系统,具有极强的非线性运动。因此,投资回报预测是一个巨大的挑战,特别是因为它的多样性、不稳定性和非结构化数据具有高度的不稳定性和明显的隐藏联系。众所周知,股票市场指数的准确预测对于制定有效的投资策略非常重要。本研究的主要目的是对不同的非参数方法进行比较分析,即模糊人工神经网络(fuzzyANN)和遗传算法人工神经网络(GAANN)预测股市指数的运动。该调查是对BELEX15, SBITOP, BUX和CROBEX股票市场指数进行的。通过预测误差MAE、MAPE和RMSE对模型进行估计。研究结果表明,非参数方法在投资中应用的充分性。
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