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Machine learning algorithms for predicting or categorizing data include classification and regression techniques. Regression algorithms are used to forecast a continuous numerical value, such as the ...
Application: support vector machines regression algorithms has found several applications in the oil and gas industry, classification of images and text and hypertext categorization. In the oilfields, ...
Which kind of algorithm works best (supervised, unsupervised, classification, regression, etc.) depends on the kind of problem you’re solving, the computing resources available, and the nature ...
Logistic regression. Classification algorithms can find solutions to supervised learning problems that ask for a choice (or determination of probability) between two or more classes.
The behaviour of regression and classification algorithms varied markedly when selection was done at different thresholds, that is, ...
Abstract: This article proposes an algorithm for solving multivariate regression and classification problems using piecewise linear predictors over a polyhedral partition of the feature space. The ...
The most popular and commonly used algorithms include Random Forest (Classification), K-means (Clustering), Gradient Boosting (Regression), Apriori (Association Rule Mining), Principal Component ...
Using different classification algorithms, Logistic regression, Neural Network, SVM, Random Forest) on MNIST data for predicting digits. Problem Statement-: The problem is about recognizing the 28 X ...
To evaluate the diagnostic accuracy of an algorithm, it can be compared to the best existing classification for the used dataset, for which the value 100 percent is assigned.
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