dc.description.abstract |
"Managing consistent product availability of imported food items while cost effectively managing inventory is a challenge for supermarket chains. This has been a
real challenge with the number of macroeconomic factors had happened during the
past couple of years. Reduction in stock-out situations has a direct correlation to an
increase in customer satisfaction. Hence, accurate demand prediction has gained
attention in literature whilst industry experts strongly believe that consistent product
availability is key to retaining a loyal customer base and improving customer
satisfaction as well. Through an intensive review of literature, it was recognized that
the comparison of machine learning-based demand prediction for imported food items
has gained less attention. Hence, this research has been carried out to perform a
comparison on machine learning-based demand prediction models for imported food
items and suggest the business entity consider developing a strong prediction model
for the demand of imported food items. Moreover, this research discusses the business
strategies which would help in the implementation of the proposed machine learning based prediction model for the real-world business case.
The study includes a detailed explanation of the acquisition of the dataset and the
features used as there are some unique features when considering the demand for
imported food items, especially when deciding the lead times to make the product
available at the store level. Python programming language has been used to carry out
descriptive statistics and tests to check the stationarity of the dataset along with the
correlation of features. The time series model and the machine learning-based models
have been developed by using the Orange data mining and visualizing tool. The result
of the study shows that the time series model has less relevance since there are
complex features involved in deciding sales for an imported food item and the most
appropriate machine learning method is the Gradient Boosting technique among other
four machine learning techniques used to carry out the study, namely Artificial Neural
Network (ANN), K-Nearest Neighbor (KNN), Support Vector Model (SVM), and
Random Forest. As a future study, the models can be further evaluated by considering
the seasonality factor of substitutable brands as a result of using improved features for
the study. The proposed machine learning technique could be used to develop a strong
demand prediction model for the imported food category after considering the real
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need of maintaining consistent availability at the store level and to reduce lost sales
for the business entity." |
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