|
Machine Learning: An Effective Technique in Bio-Medical Signal Analysis and ClassificationDOI: 10.30991/IJMLNCE.2017v01i01.001, PP. 1-8 Subject Areas: Cloud Computing, Numerical Methods, Artificial Intelligence, Information and communication theory and algorithms, Information retrieval, Optical Communications, Image Processing, Mobile and Ubiquitous Networks, Cooperative Communications, Mobile Computing Systems, Simulation/Analytical Evaluation of Communication Systems, Green networking, Complex network models, Online social network computing, Computer graphics and visualization, High Performance Computing, Mobile and Portable Communications Systems, Computational Robotics, Network Modeling and Simulation, Applications of Communication Systems, Self-Stabilization, Autonomic Computing, Computer and Network Security, Multimedia/Signal processing, Distributed computing, Big Data Search and Mining, Communication Protocols, Grid Computing, Computer Vision, Information and Communication: Security, Privacy, and Trust Keywords: Bio-Medical Signal, Machine Learning Algorithm, Classification, Support Vector Machine, Wavelet Transform, Neural Network. Abstract Advancement in the field of digital signal processing and modern machine learning (ML) approaches has witnessed substantial growth in biomedical engineering. The diagnostic power of these machines has grown manifolds mainly due to the exploration of effective and discriminate feature spaces that remain crucial for pattern recognition. It has enhanced the ability of machine learners to model the complex patterns accurately and make them adaptable to new task domains with explanation/experience learning approaches. Many vivid application domains including the artificial intelligent systems and robotics with critical and innovative thinking are going to rely on effective ML systems for efficiency and optimization. This has made the Artificial Neural Networks (NN) an emerging field of research and motivates the authors to classify the MIT-BIH arrhythmia data as abnormal or normal using different ANN models. Finally, the results have been validated with that of the colon cancer gene data. Palo, M. N. M. A. H. K. (1). Machine Learning: An Effective Technique in Bio-Medical Signal Analysis and Classification. International Journal of Machine Learning and Networked Collaborative Engineering , e21922. doi: http://dx.doi.org/10.30991/IJMLNCE.2017v01i01.001.
|