Scopus Indexed Publications 
                Paper Details 
            
            
            
                - Title
- Ascertaining the Fluctuation of Rice Price in Bangladesh Using Machine Learning Approach
            
                - Author
- 
                    Md. Mehedi Hasan,
                                        Arafat Ullah Nur,
                                        Md. Mahamudunnobi Sykot,
                                        Muslima Tuz Zahara,
                                        Rubaiya Hafiz,
                                    
            
                - Email
- saifuzzaman.cse@diu.edu.bd
            
                - Abstract
- Rice is the most grown crop in 
Bangladesh. It is consumed as the main food course in Bangladesh. The 
price of rice makes a difference in whether people will eat or starve. 
To know what's going to happen in the rice market using pen and paper is
 a far cry as well as time-consuming. Machine Learning (ML) provides the
 facilities to predict the price of any products to prevent a future 
collapse in the market. The goal of this paper is to predict the price 
of rice using Machine learning approach. Data collected from the 
Ministry of Agriculture website, Bangladesh was used to predict the 
price. Several machine learning algorithms were used to make this 
prediction i.e. Support Vector Machine (SVM), K-Nearest Neighbor (KNN), 
Naïve Bayes, Decision Tree and Random Forest. All these algorithms are 
analyzed to find out which algorithm provides the best performance. Now,
 we can predict the price of rice, whether it is reasonable, low, or 
high based on the results achieved by the mentioned algorithms.
            
                - Keywords
- Machine Learning     ,     Data Analysis     ,     Rice Price     ,     Classification     ,     Prediction
            
                - Journal or Conference Name
- 
                    
                        11th International Conference on Computing, Communication and Networking Technologies, ICCCNT 2020 
                    
                
            
                - Publication Year
- 2020
            
                - Indexing
- scopus