Open Access
Subscription Access
A Comparative Analysis of Classification Methods for Diagnosis of Lower Back Pain
In this paper different classification methods are compared using base and meta (Combination of Multiple Classifier for training) level classifiers, for the fruitful diagnosis of Lower Back Pain. The Lower Back Pain becomes chronic with age, so needs to be correctly diagnose with symptoms in the early age. Five independent classifiers were implemented at base level and meta level. At meta level, five combinations of different classifiers were implemented, using voting technique. According to the scores, the overall classification using Naïve Bayes and Multilayer Perceptron got the maximum efficiency 83.87%. The purpose of this paper is to diagnose healthy individuals efficiently. To carry out study the Lower Back Pain Symptoms Dataset is used from very famous platform for predictive modeling, Kaggle. The experiments were carried out in WEKA (Waikato Environment for Knowledge Analysis), suite of machine learning software.
Keywords
Classification Methods, Lower Back Pain, NaiveBayes, Multilayer Perceptron, Base Level, Meta Level.
User
Font Size
Information
- Weka, Machine Learning Group at University of Wekato, http://www.cs.waikato.ac.nz.
- H hongjun Lu, Hhongyan Liu, Decision Tables: Scalable classification exploring RDBMS capabilities, 2000; pp 373-384
- Peter O. Sullivan, Diagnosis and classification of chronic lower back pain disorders: Maladaptive movements and motor control impairments as underlying mechanism, Manual Therapy, Elsevier. 2005; 242-255.
- Xin Xia, Dalid Lo, Xinyuwang, Xiaohu Yang, shanping Li, A Comparative study of supervised learning algorithms for re-opened bug prediction, IEEE. 2013; pp 331-334.
- T. Sathya Devi, Dr. K. MeenakshiSundaram, A comparative analysis of meta and tree classification algorithms using WEKA, International Research Journal of Engineering and Technology (IRJET). 2016; volume 3, issue 11.
- SasoDzeroski, Bernard Zenko, Is Combining classifier with stacking is better than selecting best one?, Springer Machine Learning. 2004; volume 54, issue 3, pp 255-273.
- Dana Bazazeh, RaedShubair, comparative study of machine learning algorithms for breast cancer detection and diagnosis, IEEE Explore. Jan 2017; 2159-2055.
- Osisanvo F.Y., Akinsola J.E.T., Awodele O., HhinmiKaiye J. O., Olakanmi O., Akinjobi J., Supervised machine learning algorithms: classification and coparison, IJCTT June 2017; Volume 48 Number 3.
- Abdullah Hh. Wahbeh, Quasem A. Al-Radaideh, Mohammad N. Al-Kabi, and Emad M. Al-Shawakfa, A Comparison Study between Data Mining Tools over some Classification Methods, IJCSA.
- Jeffrey N. Katz, The Assessment and management of Lower Back Pain: Critical Review, Arthritis Care and Research, 1993
Abstract Views: 358
PDF Views: 4