Sale forecasting in e-commerce using machine learning methods
Abstract
In recent years, there has been an increasing interest in the field of E-commerce and the
predictions for its sale forecast. Future prediction is the process of making number forecasts
which mainly bases on the historical data and current situation. The complication in real
world data, hence, gives challenge for this procedure. This paper focuses on minimizing
the errors of forecasting the sales of E-commerce stores in Vietnam by using several
methods. First, certain traditional time-series forecasting methods are used, including
Autoregressive / Seasonal Autoregressive Integrated Moving Average (ARIMA / SARIMA)
and Triple Exponential Smoothing – Holt’s Winter methods. Next, more sophisticated
technique is used – the Artificial Neural Network - Long Short-Term Memory (LSTM),
Bidirectional Long Short-Term Memory (BiLSTM). Different accuracy measuring
techniques, such as Mean Absolute Percentage Error (MAPE) and Root Mean Squared
Error (RMSE), are used to compare the models' results. The results reveal that the Holt’s
Winter Addictive approach is superior to the other methods. In addition, the results indicate
the good performances of both LSTM and Holt’s Winter Addictive model.