Demand Forecasting with Supply‐Chain Information and Machine Learning: Evidence in the Pharmaceutical Industry
This work proposes a novel demand forecasting framework which “borrows” time series data from many other products and trains the data with advanced machine learning models (known for detecting patterns), and provides empirical evidence of the value of downstream inventory information in the context of demand forecasting.
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This work proposes a novel demand forecasting framework which “borrows” time series data from many other products and trains the data with advanced machine learning models (known for detecting patterns), and provides empirical evidence of the value of downstream inventory information in the context of demand forecasting.
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