Publication: Benchmarking of Regression Algorithms and Time Series Analysis Techniques for Sales Forecasting
Date
2019-01
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Abstract
— Predicting the sales amount as close as to the actual
sales amount can provide many benefits to companies. Since the
fashion industry is not easily predictable, it is not
straightforward to make an accurate prediction of sales. In this
study, we applied not only regression methods in machine
learning but also time series analysis techniques to forecast the
sales amount based on several features. We applied our models
on Walmart sales data in Microsoft Azure Machine Learning
Studio platform. The following regression techniques were
applied: Linear Regression, Bayesian Regression, Neural
Network Regression, Decision Forest Regression and Boosted
Decision Tree Regression. In addition to these regression
techniques, the following time series analysis methods were
implemented: Seasonal ARIMA, Non-Seasonal ARIMA, Seasonal
ETS, Non -Seasonal ETS, Naive Method, Average Method, and
Drift Method. It was shown that Boosted Decision Tree
Regression provides the best performance on this sales data. This
project is a part of the development of a new decision support
system for the retail industry.
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Keywords
Makine Öğrenme, Gerileme, Satış Tahmini, Zaman Serileri Analizi, Machine Learning, Regression, Sales Forecasting, Time Series Analysis
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