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Time-Series-Datasets-Analysis

Time series is a sequence of observations recorded at regular time intervals. This guide walks you through the process of analyzing the characteristics of a given time series in python. Time Series Analysis in the IPython File.

alt text Photo by Daniel Ferrandiz.

Contents

  • What is a Time Series?
  • How to import Time Series in Python?
  • What is panel data?
  • Visualizing a Time Series
  • Patterns in a Time Series
  • Additive and multiplicative Time Series
  • How to decompose a Time Series into its components?
  • Stationary and non-stationary Time Series
  • How to make a Time Series stationary?
  • How to test for stationarity?
  • What is the difference between white noise and a stationary series?
  • How to detrend a Time Series?
  • How to deseasonalize a Time Series?
  • How to test for seasonality of a Time Series?
  • How to treat missing values in a Time Series?
  • What is autocorrelation and partial autocorrelation functions?
  • How to compute partial autocorrelation function?
  • Lag Plots
  • How to estimate the forecastability of a Time Series?
  • Why and How to smoothen a Time Series?
  • How to use Granger Causality test to know if one Time Series is helpful in forecasting another?
  • What Next

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