Data mining uses machine learning algorithms
Abstract
We use learning algorithms every day in many different applications. One of the reasons an internet search engine like Google or Bing works so effectively whenever it is used to look the web is that a learning formula, one used by Google or Microsoft, has really discovered how to grade websites. Artificial intelligence is also used every time Facebook is used and also it recognises friends' images. Several machine learning methods have really been reviewed in this study. These algorithms are used for a variety of tasks including data mining, image processing, predictive analytics, and more.
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