Hybrid Algorithms of Whale optimization algorithm and k-nearest neighbor to Predict the liver disease
Journal Title: EAI Endorsed Transactions on Context-aware Systems and Applications - Year 2019, Vol 6, Issue 16
Abstract
Liver Disease is one of the most common diseases which can be prevented by early diagnosis and up-todate treatment. Advances in machine learning and intelligence techniques have led to the effective diagnosis and prediction of diseases to improve the treatment of patients and reduce the cost of treatment. Whale Optimization Algorithm is a swarm intelligent technique, inspired by the social behavior of whales. One of the effective classification algorithms is K-Nearest Neighbor which is employed for pattern recognition. This paper was designed to investigate the prediction of Liver Disease using a hybrid algorithm including KNN and WOA. In order to evaluate the efficiency of hybrid algorithm, two datasets of liver disease including BUPA and ILPD were used. The results showed that 81.24% and 91.28% of accuracy was gained by the proposed algorithm for BUPA and ILPD, respectively. Experimental results showed that the hybrid WON-KNN is a better classifier to predict the liver diseases.
Authors and Affiliations
Vahid Hajihashemi, Zeinab Hassani, Iman Sahraei Dehmajnoonie, Keivan Borna
Managing flexible care with a context aware system for ageing-in-place
This paper describes the Care4Balance (C4B) system for better facilitating communication and task coordination between formal and informal caregivers, and older adults as care receivers. Field-tests with older adults (n=...
Holistic Personas for Designers of a Context-Aware Accounting Information Systems e-Learning Application
E-learning systems have been increasingly used to train and empower employees to take a more active role in the creation and dissemination of system knowledge, when, either new systems are installed, or existing systems...
Welcome message from the Editor-in-Chief..
On behalf of the Editorial board, we welcome you to the inaugural issue of the ICST Transactions on ContextAware Systems and Applications. We are delighted to launch this new transactions journal after a preparatory p...
Modeling Users’ Behavior from Large Scale Smartphone Data Collection
A large volume of research in ubiquitous systems has been devoted to using data, that has been sensed from users’ smartphones, to infer their current high level context and activities. However, mining users’ diverse long...
Formal Modeling and Verification of Context-Aware Systems using Event-B
Context awareness is a computing paradigm that makes applications responsive and adaptive with their environment. Formal modeling and verification of context-aware systems are challenging issues in the development as the...