Wavelet Filtering for Prediction in Time Series Analysis
نویسنده
چکیده
In this paper I describe a wavelet filtering approach to separate a time series, the signal, into its main components. With this approach I can separate stochastic from structural components. The statistical predictive analysis will be performed on the filtered signal while the stochastic term could be a-posteriori reintroduced through statistical simulation approaches (such as Markov Chain Monte Carlo). The proposed metodology has been applied to financial time series to predict both returns and risk. Key-words: Time Series, Signal Processing, Wavelet, Filtering, Stochastic Decomposition, Prediction, Finance
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