Concept explainers
i)
Interpretation:Some examples of time series that display trends are to be discussed.
Concept Introduction:
Time series analysis used to comprise methods to analyse time series data for extracting meaningful statistics along with other characteristics of the data. Time series
ii)
Interpretation:Some examples of time series that display Seasonal patterns are to be discussed.
Concept Introduction:
Seasonal patterns in Time series forecasting technique uses a model in order to predict future values that are based on some pre-observed values.
iii)
Interpretation:Some examples of time series that display Cyclic patterns are to be discussed.
Concept Introduction:
Cyclic patterns in time series forecasting technique uses a model in order to predict future values that are based on some pre-observed values.
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