Scopus Indexed Publications
Paper Details
- Title
-
Solving Onion Market Instability by Forecasting Onion Price Using Machine Learning Approach
- Author
-
Md. Mehedi Hasan,
Md. Mahamudunnobi Sykot,
Muslima Tuz Zahara,
Rubaiya Hafiz,
- Email
-
rubaiya.cse@diu.edu.bd
- Abstract
-
Price is the key factor in
financial activities. Unexpected fluctuation in price is the sign of
market instability. Nowadays Machine learning provides enormous
techniques to forecast price of products to cope up with market
instability. In this paper, we look into the application of machine
learning approach to forecast the price of onion. The forecast is based
on the data collected from Ministry of Agriculture, Bangladesh. For
making prediction we used machine learning algorithms e.g. K- Nearest
Neighbor (KNN), Naïve Bayes, Decision Tree, Neural Network (NN), Support
Vector Machine (SVM). Then we assessed and compared our techniques to
find which technique provides the best performance in term of accuracy.
We find all of our techniques provide analogous performance. By above
mentioned techniques we seek to classify whether the price of onion
would be preferable (low), economical (mid), expensive (high).
- Keywords
-
Onion price , Data Analysis , Machine learning , Forecasting , Classification
- Journal or Conference Name
- International Conference on Computational Performance Evaluation, ComPE 2020
- Publication Year
-
2020
- Indexing
-
scopus