A Survey of Machine Learning Algorithms
Keywords:
ANN, Data Analytics, Machine Learning Algorithms, Technique, Prediction, ModelAbstract
Machine Learning is a booming research area in computer science and many other industries all over the world. It has gained great success in vast and varied application sectors. This includes social media, economy, finance, healthcare, agriculture, etc. Several intelligent machine learning techniques were designed and used to provide big data predictive analytics solutions. A literature survey of different machine learning techniques is provided in this paper. Also a study on commonly used machine learning algorithms for big data analytics is done and presented in this paper
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