A Survey on Machine Learning: Concept, Algorithms, and Applications
Keywords:
Machine Learning, Precision, Training data, ProceduresAbstract
In today's era machine learning concepts and algorithms are heavily used in the digital world. Machine learning algorithms can easily understand how to perform important tasks by generalizing from examples. Machine learning is often feasible and cost-effective approach where manual programming is not. From the past few decagons, Machine learning (ML) made software application more accurate to predict outputs. Also, various algorithms that are designed in machine learning are continuously used for pattern recognition, data clarification, and various other plans and have lead to a distinct research in data mining to determine underground consistencies or inconsistencies in collective data. The main objective of this paper is to discuss various concepts, approaches and procedures of machine learning used in addressing the digital world problems.
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