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Learn Challenge: ARIMA Forecasting on Real Data | Section
Forecasting With Classical Models
Section 1. Chapter 10
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bookChallenge: ARIMA Forecasting on Real Data

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In this chapter, you will apply your knowledge of ARIMA modeling to a real-world time series dataset. You will load a dataset, fit an ARIMA model, and evaluate its forecasting performance using metrics such as mean absolute error (MAE) and mean squared error (MSE). The process involves:

  • Preparing the data;
  • Splitting it into training and testing sets;
  • Fitting the ARIMA model;
  • Generating forecasts;
  • Computing the evaluation metrics.

This hands-on challenge will reinforce your understanding of how ARIMA models are used in practice and how to interpret their performance.

Task

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Practice forecasting future values by fitting an ARIMA model and evaluating its accuracy using standard error metrics.

  • Instantiate an ARIMA model using the train data and the provided order.
  • Fit the instantiated model to the training data.
  • Generate a forecast for the duration of the test set by passing test_size to the steps parameter.
  • Calculate the Mean Absolute Error (mae) and Mean Squared Error (mse) by comparing the actual test values against your forecast.

Solution

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