Forecasting key retail performance indicators using interpretable regression
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2021Metadata
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Panay Schweizer, Belisario
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Forecasting key retail performance indicators using interpretable regression
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Abstract
Foot traffic, conversion rate, and total sales during a period of time may be considered to be
important indicators of store performance. Forecasting them may allow for business managers plan
stores operation in the near future in an efficient way. This work presents a regression method that is
able to predict these three indicators based on previous data. The previous data includes values for
the indicators in the recent past; therefore, it is a requirement to have gathered them in a suitable
manner. The previous data also considers other values that are easily obtained, such as the day of the
week and hour of the day of the indicators. The novelty of the approach that is presented here is that
it provides a confidence interval for the predicted information and the importance of each parameter
for the predicted output values, without additional processing or analysis. Real data gathered by
Follow Up, a customer experience company, was used to test the proposed method. The method was
tried for making predictions for up to one month in the future. The results of the experiments show
that the proposed method has a comparable performance to the best methods proposed in the past
that do not provide confidence intervals or parameter rankings. The method obtains RMSE of 0.0713
for foot traffic prediction, 0.0795 for conversion rate forecasting, and 0.0757 for sales prediction.
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CORFO: Chilean agency to support entrepreneurship, innovation and competitiveness
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Artículo de publícación WoS Artículo de publicación SCOPUS
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Sensors 2021, 21, 1874
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