Bayesian Change-Point Detection and Time Series Decomposition
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Updated
Sep 11, 2024 - C
Bayesian Change-Point Detection and Time Series Decomposition
Analyzing seasonality with Fourier transforms
Pyriodicity provides an intuitive and efficient Python implementation of periodicity length detection methods in univariate signals.
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Time Serial Methods and Forecasting (RegARIMA and ARMAX)
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Customer Profile & Shopping Behavior Analysis is an R-based project analyzing customer data from retail stores, focusing on segmentation, seasonal trends, and market behaviors.
Used First Difference Method for Stationarity of the Time Series and then Used ARIMA & SARIMA to predict the values and based on the prediction, checked if the series contains Seasonal Patterns in it or not
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