Mohammad Mainul Islam

2papers

2 Papers

HCSep 12, 2020
Learning Daily Calorie Intake Standard using a Mobile Game

Anik Das, Sumaiya Amin, Muhammad Ashad Kabir et al.

Mobile games can contribute to learning at greater success. In this paper, we have developed and evaluated a novel educational game, named FoodCalorie, to learn the food calorie intake standards. Our game is aimed to learn the calorie values of various traditional Bangladeshi foods and the calorie intake standard that varies with age and gender. Our study confirms the finding of existing studies that game-based learning can enhance the learning experience.

CYAug 25, 2019
E-MIIM: An Ensemble Learning based Context-Aware Mobile Telephony Model for Intelligent Interruption Management

Iqbal H. Sarker, A. S. M. Kayes, Md Hasan Furhad et al.

Nowadays, mobile telephony interruptions in our daily life activities are common because of the inappropriate ringing notifications of incoming phone calls in different contexts. Such interruptions may impact on the work attention not only for the mobile phone owners but also the surrounding people. Decision tree is the most popular machine learning classification technique that is used in existing context-aware mobile intelligent interruption management (MIIM) model to overcome such issues. However, a single decision tree based context-aware model may cause overfitting problem and thus decrease the prediction accuracy of the inferred model. Therefore, in this paper, we propose an ensemble machine learning based context-aware mobile telephony model for the purpose of intelligent interruption management by taking into account multi-dimensional contexts and name it "E-MIIM". The experimental results on individuals' real life mobile telephony datasets show that our E-MIIM model is more effective and outperforms existing MIIM model for predicting and managing individual's mobile telephony interruptions based on their relevant contextual information.