ARTÍCULO
TITULO

Time Series Analysis Indicators under Directional Changes: The Case of Saudi Stock Market

Monira Essa Aloud    

Resumen

We introduce a set of time series analysis indicators under an event based framework of directional changes and overshoots.  Our aim is to map continuous financial market price data into the so-called Directional-Change (DC) Framework- a state based discretization of basically dissected price time series. The DC framework analysis relied on understanding the price time series as an event-based process, as an alternative of focusing on their stochastic character.  Defining a scheme for state reduction of DC Framework, we show that it has a dependable hierarchical structure that permits for analysis of financial data. We show empirical examples within the Saudi Stock Market. The new DC indicators represent the foundation of a completely new generation of financial tools for studying volatility, risk measurement, and building advanced forecasting and automated trading models.Keywords:  directional changes, financial forecasting, automated trading, financial markets, Saudi Stock Market.JEL Classifications: G11, G14, G1

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