The purpose of this chapter is to show how XploRe may be used by practitioners for analyzing observed time series. Some of the time series tools are standard in the literature. The more elaborated nonlinearity tests based on artificial neural networks are implemented for the nonadvanced use.
KeywordsFrequency Domain Analysis White Noise Process Financial Time Series ARMA Process GARCH Process
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