Volume 20 No 21 (2022)
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Identifying the Best ML Algorithm to Predict Real-Time Data Classification Problems:A Non-ML to ML Algorithm Transition
Dr. RohitaYamaganti, Dr.P.N.SivaJyothi, NelliSreevidya
Abstract
When it comes to artificial intelligence and massive data analysis, machine learning is the foundation. It
offers strong algorithms that can identify patterns, classify data, and essentially learn on their own how to
carry out a certain activity. Even though this field has become immensely popular recently, but, an
ambiguity exists in the researcher's mind regarding which Machine Learning Algorithm is appropriate for
the specific case or prediction model. As a result, the goal of this research paper is to solve a real-world
data classification problem using non-ML algorithms and various ML algorithms, such as K-Nearest
Neighbours and Neural Networks. Finally, this research determined the best ML Approach to solve the
problem and made additional recommendations.
Keywords
ML Algorithms, Priors, K-Nearest Neighbours, and Neural Networks
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