Review of Latest Advancements and Trends in Machine Learning
DOI:
https://doi.org/10.26438/ijcse/v7i9.189192Keywords:
Machine Learning, Data Mining, Predictive Analytics, Image Processing, AlgorithmsAbstract
In this paper, various machine learning algorithms have been discussed. These algorithms are used for various purposes like data mining, image processing, predictive analytics, etc. to name a few. The main advantage of using machine learning is that, once an algorithm learns what to do with data, it can do its work automatically.
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