On the Economic Significance of Stock Market Prediction and the No Free Lunch Theorem
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Mostrar el registro completo del ítemAutor(es):
Bousoño-Calzón, Carlos; Bustarviejo-Muñoz, Josué; Aceituno-Aceituno, Pedro; Escudero Garzás, José JoaquínFecha de publicación:
2019Resumen:
Forecasting of stock market returns is a challenging research activity that is now expanding with the availability of new data sources, markets, financial instruments, and algorithms. At its core, the predictability of prices still raises important questions. Here we discuss the economic significance of the prediction accuracy. To develop this question, we collect the daily series prices of almost half of the publicly traded companies around the world over a period of ten years and formulate some trading strategies based on their prediction. Proper visualization of these data together with the use of the No Free Lunch theoretical framework give some unexpected results that show how the a priori less accurate algorithms and inefficient strategies can offer better results than the a priori best alternatives in some particular subsets of data that have a clear interpretation in terms of economic sectors and regions.
Forecasting of stock market returns is a challenging research activity that is now expanding with the availability of new data sources, markets, financial instruments, and algorithms. At its core, the predictability of prices still raises important questions. Here we discuss the economic significance of the prediction accuracy. To develop this question, we collect the daily series prices of almost half of the publicly traded companies around the world over a period of ten years and formulate some trading strategies based on their prediction. Proper visualization of these data together with the use of the No Free Lunch theoretical framework give some unexpected results that show how the a priori less accurate algorithms and inefficient strategies can offer better results than the a priori best alternatives in some particular subsets of data that have a clear interpretation in terms of economic sectors and regions.
Palabra(s) clave:
Stock market
Economic significance
forecasting
prediction algorithm
Trading strategies
Extended Bayesian framework
No free lunch theorem
Support vector machines
Big data
Visualization
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