General

What is the difference between feature selection and PCA?

What is the difference between feature selection and PCA?

The difference is that PCA will try to reduce dimensionality by exploring how one feature of the data is expressed in terms of the other features(linear dependecy). Feature selection instead, takes the target into consideration.

What is difference between forward selection and backward selection?

Forward selection starts with a (usually empty) set of variables and adds variables to it, until some stop- ping criterion is met. Similarly, backward selection starts with a (usually complete) set of variables and then excludes variables from that set, again, until some stopping criterion is met.

What is backward model selection?

Backward selection was introduced in the early 1960s (Marill & Green, 1963). It is one of the main approaches of stepwise regression. In statistics, backward selection is a method of fitting regression models in which the choice of predictive variables is carried out by an automatic procedure.

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What is the difference between PCA and cluster analysis?

Cluster analysis groups observations while PCA groups variables rather than observations. PCA can be used as a final method (by adding rotation to perform factor analysis) or to reduce the number of variables to conduct another analysis, such as regression or other data mining (classifying etc.) techniques.

Is PCA a filter method?

PCA is a dimension reduction technique (than direct feature selection) which creates new attributes as a combination of the original attributes in order to reduce the dimensionality of the dataset and is a univariate filter method.

Is forward selection better than backward elimination?

Where forward stepwise is better. Unlike backward elimination, forward stepwise selection can used when the number of variables under consideration is very large, even larger than the sample size! In fact, it will only consider models with number of variables less than: The sample size (for linear regression)

What is the difference between forward stepwise regression and backward stepwise regression?

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In statistics, stepwise regression includes regression models in which the choice of predictive variables is carried out by an automatic procedure. Between backward and forward stepwise selection, there’s just one fundamental difference, which is whether you’re starting with a model: with no predictors (forward)

How does PCA choose variables?

In each PC (1st to 5th) choose the variable with the highest score (irrespective of its positive or negative sign) as the most important variable. Since PCs are orthogonal in the PCA, selected variables will be completely independent (non-correlated).

What is forward feature selection?

Forward Selection: Forward selection is an iterative method in which we start with having no feature in the model. In each iteration, we keep adding the feature which best improves our model till an addition of a new variable does not improve the performance of the model.

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