Prediksi Penjualan Minuman Kopi Terlaris di Cafe Hidden Place dengan Pendekatan Algoritma K-Nearest Neighbor dan Naïve Bayes
Prediction of Best-Selling Coffee Drinks Sales at Cafe Hidden Place Using the K-Nearest Neighbor and Naïve Bayes Algorithms
Abstract
In the increasingly fierce competition for the coffee shop business, the use of data
is the key to success. Cafe Hidden Place, one of the popular coffee shops in Medan
city, faced the challenge of being able to adapt in order to survive and grow also
increasing marketing. This research aims to improve the operational efficiency and
competitiveness of Cafe Hidden Place through the use of historical sales data.
Using the K-Nearest Neighbor (K-NN) and Naïve Bayes algorithms, the study
successfully predicted the best-selling coffee drinks based on historical data. The
prediction results show that hidden taste, tira miss u, and crème brulee drinks are
the best-selling coffee drinks. The accuracy of the prediction using the RapidMiner
software was obtained with an accuracy value of 100% for the K-NN algorithm
while the accuracy value for the Naïve Bayes algorithm was 76.47%. With these
prediction results, Cafe Hidden Place can create more targeted marketing
strategies. This research proves that the use of data in the culinary business can
improve decision-making and overall business performance.
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- Undergraduate Theses [1450]