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An overview of the supervised machine learning methods

One of the main characteristics is that the supervised learning has the ability of annotated training data. The so called labels are class labels in the 



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Machine learning algorithms are divided into several subcategories of which supervised and unsupervised learning techniques are the most widely applied in 



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Supervised Learning: Overview - Ohio State University

Supervised Learning – Classification and Regression n Linear Models GLM Kernel methods n Generalized Additive Models (Hastie & Tibshirani 1990) n Decision Trees n CART (Classification and Regression Trees) (Breiman etc 1984) n MARS (Multivariate Adaptive Regression Splines) (Freiman 1990)



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Supervised Learning • Assembles a training set of observations =( ???? ????)????= 1 The observed input values to the system ???? are also fed into an artificial system known as a learning algorithm (usually a computer program) which also produces outputs ( ????)in response to the inputs

What is supervised learning?

    Supervised learning develops predictive models to come up with reasonable predictions as a response to newly fed data. Hence, this technique is used if we have enough known data (labeled data) for the outcome we are trying to predict. In supervised learning, an algorithm is designed to map the function from the input to the output.

What kind of problems is supervised learning best suited for?

    Supervised learning is good at classification and regression problems, such as determining what category a news article belongs to or predicting the volume of sales for a given future date. In supervised learning, the aim is to make sense of data within the context of a specific question. In contrast to supervised learning is unsupervised learning.

What types of tasks can be completed using supervised learning?

    There are numerous applications of Supervised Learning including credit card fraud detection. Let us use exploratory data analysis (EDA) to get some basic insights into fraudulent transactions. EDA is an approach used to analyze data to find out its main characteristics and uncover hidden relationships between different parameters.

How is supervised learning used in machine learning?

    Supervised learning is an approach to machine learning that uses labeled data sets to train algorithms in order to properly classify data and predict outcomes.
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