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Machine learning techniques can be applied to predict outcomes from "summary" of R for Data Science by Hadley Wickham,Garrett Grolemund

Machine learning techniques allow us to build models that can make predictions about future outcomes. These models learn from historical data to identify patterns and relationships that can be used to predict new observations. By leveraging machine learning algorithms, we can uncover insights and make informed decisions based on data. One common application of machine learning is in predictive analytics, where we use past data to forecast future events. For example, we can use machine learning to predict customer churn, stock prices, or the likelihood of a disease outbreak. By training a model on historical data, we can develop a predictive model that can anticipate future outcomes with a certain level of accuracy. To apply machine learning techniques for prediction, we first need to gather and preprocess the data. This involves cleaning the data, removing missing values, and transforming variables as needed. Once we have a clean dataset, we can split it into a tr...
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    R for Data Science

    Hadley Wickham

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