Category : Time Series Analysis en | Sub Category : Seasonal Decomposition Posted on 2023-07-07 21:24:53
Seasonal decomposition is a fundamental concept in time series analysis that allows us to analyze and understand the underlying patterns within a dataset. By decomposing a time series into its individual components, including trend, seasonality, and random fluctuations, we can gain valuable insights into the underlying structure of the data.
One of the key goals of seasonal decomposition is to separate the seasonal component of a time series from the trend and random fluctuations. This allows us to identify and quantify the seasonal patterns that repeat at regular intervals within the data. By isolating the seasonal component, we can better understand the recurring patterns and make more informed predictions about future trends.
There are several methods for performing seasonal decomposition, with one of the most commonly used techniques being the classical decomposition method. This approach involves breaking down a time series into its trend, seasonal, and residual components using statistical techniques such as moving averages and regression analysis.
Another popular method for seasonal decomposition is the seasonal-trend decomposition using LOESS (STL) technique, which is particularly well-suited for handling nonlinear trends and irregular seasonal patterns. STL decomposes a time series into its trend, seasonal, and residual components using locally weighted scatterplot smoothing (LOESS) to capture both short-term fluctuations and long-term trends.
Overall, seasonal decomposition is a powerful tool in time series analysis that can help us better understand the underlying patterns and structures within a dataset. By separating out the seasonal component from the trend and random fluctuations, we can make more accurate predictions and informed decisions based on the insights gained from the decomposition process.