Time Series Analysis is a statistical technique used to analyze time-ordered data points to identify patterns, trends, and seasonal effects.
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It is essential for forecasting future values based on historical data.
1. Components of Time Series Data:
- Trend: The long-term movement or direction in the data. A trend indicates whether the data is generally increasing or decreasing over time.
- Seasonality: Repeating patterns or cycles within a fixed period, such as monthly or quarterly fluctuations. Seasonality is influenced by factors like weather, holidays, or economic cycles.
- Cyclic Patterns: Fluctuations that occur over irregular periods, often linked to economic cycles or other external factors. Unlike seasonality, cyclic patterns do not have a fixed period.
- Random Variation: Irregular, unpredictable fluctuations that cannot be attributed to trend, seasonality, or cyclic patterns.
2. Methods of Time Series Analysis:
- Decomposition: Breaking down a time series into its components (trend, seasonality, and residuals) to analyze each separately. Techniques like classical decomposition or STL (Seasonal and Trend decomposition using Loess) are used.
- Smoothing: Techniques like moving averages or exponential smoothing are applied to reduce noise and highlight underlying patterns.
- Autoregressive Integrated Moving Average (ARIMA): A popular model for forecasting that combines autoregressive (AR) processes, differencing to make the series stationary, and moving averages (MA). The ARIMA model is suited for data without seasonal effects.