Difference between revisions of "...predict categories"

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*** No
 
*** No
 
**** fast training, linear, then try the [[Perceptron (P)]]  
 
**** fast training, linear, then try the [[Perceptron (P)]]  
**** fast training, linear, and the features are independent, then try the two-class [[Naive Bayes]] point machine
+
**** fast training, linear, and the features are independent, then try the two-class Naive [[Bayes]] point machine
 
* ...multi-class classification; three or more categories?  
 
* ...multi-class classification; three or more categories?  
 
** Do you need the results to be explainable?
 
** Do you need the results to be explainable?
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**** fast training, accurate, then try the [[Random Forest (or) Random Decision Forest]]
 
**** fast training, accurate, then try the [[Random Forest (or) Random Decision Forest]]
 
*** No
 
*** No
**** linear, then try the [[Naive Bayes]]   
+
**** linear, then try the [[Bayes#Naive Bayes|Naive Bayes]]   
 
**** accurate, can allow long training times, then try the [[Deep Neural Network (DNN)]]
 
**** accurate, can allow long training times, then try the [[Deep Neural Network (DNN)]]
 
**** which is a type of is predecessors... [[Feed Forward Neural Network (FF or FFNN)]] and [[Artificial Neural Network (ANN)]]
 
**** which is a type of is predecessors... [[Feed Forward Neural Network (FF or FFNN)]] and [[Artificial Neural Network (ANN)]]

Revision as of 12:35, 11 October 2020

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Classification problems are sometimes divided into binary (yes or no) and multi-category problems (animal, vegetable, or mineral). Classifiers are ubiquitous in data science. The world around is full of classifiers. Classifiers help in identifying customers who may churn. Classifiers help in predicting whether it will rain or not. Classifiers help in preventing spam e-mails. If the targets are designed to be binary (two-class classification) then a binary classifier is used, the target will only take a 0 or 1 value. Machine learning algorithms explained | Martin Heller - InfoWorld