Sleep Stage Classification: Scalability Evaluations of Distributed Approaches
Proceeding: Third International Conference on Data Mining, Internet Computing, and Big Data (BigData2016)Publication Date: 2016-7-21
Authors : Şerife Açıkalın Süleyman Eken Ahmet Sayar;
Page : 113-117
Keywords : Sleep Stage Classification; Machine Learning; Big Data; Apache Spark;
Abstract
Processing and analyzing of massive clinical data are resource intensive and time consuming with traditional analytic tools. Electroencephalogram (EEG) is one of the major technologies in detecting and diagnosing various brain disorders, and produces huge volume big data to process. In this study, we propose a big data framework to diagnose sleep disorders by classifying the sleep stages from EEG signals. The framework is developed with open source SparkMlib Libraries. We also tested and evaluated the proposed framework by measuring the scalabilities of well-known classification algorithms on physionet sleep records.
Other Latest Articles
- On Realizing Rough Set Algorithms with Apache Spark
- Big Data Analysis with Query Optimization Results in Secure Cloud
- Degree Distribution of Real Biological Networks
- Application of Stochastic Simulations of Biological Networks Under Different Impulsive Scenarios
- Proposed Platform IPHCS for Predictive Analysis in Healthcare System by Using Big Data Techniques
Last modified: 2016-07-21 23:50:04