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Challenge: Engineer Features for a Forecasting Task
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In this challenge, you will apply your knowledge of temporal feature engineering to a practical forecasting scenario. Imagine you are working with a daily sales dataset for a retail store, where each row represents the total sales for one day. Your goal is to prepare this data for a forecasting model by creating essential features that capture temporal patterns and seasonality, while carefully avoiding data leakage.
You need to engineer the following types of features:
- Lag features that reference previous sales values;
- Rolling window statistics that summarize recent sales trends;
- Calendar-based features, such as the day of the week, to capture recurring patterns.
It is crucial to ensure that for each date, only information available up to that point in time is used to construct features. Missing values that result from lagging or rolling operations should be handled appropriately so that your model receives clean, informative inputs. This exercise will help reinforce the best practices for building robust, leakage-free time series features.
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You are given a DataFrame with daily sales and dates. Your task is to engineer features for time series forecasting.
- Create lag features for the
salescolumn with lags of 1 and 7 days. - Create rolling window features for the
salescolumn: 7-day rolling mean and 7-day rolling standard deviation, using only past values (do not include the current day in the calculation). - Add a calendar feature for the day of the week, where Monday is 0 and Sunday is 6.
- Handle missing values resulting from lag and rolling operations by filling them with
-1.
Soluzione
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