Book My Show Interview Question | Dimensionality

Question

What Are Some Methods of Reducing Dimensionality?

(Hint- Tell us about them, along with some practical examples)

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Dhruv2301 55 years 1 Answer 647 views Great Grand Master 0

Answer ( 1 )

  1. 1) Missing values ratio – Columns with too many missing values are removed as
    they provide little information about that feature.
    2) Low variance in columns – Any column which has very low variance will hardly
    provide any useful information against the target variables.
    3) Highly correlated features – If 2 features are highly correlated, one of them
    can be removed as it will provide only slight useful info than the other variable.
    4) Variable Importance plot – When building decision trees you can get a variable
    importance plot which shows the relative importance of all the features with
    respect to the strongest predictor. Then, he can select the important features from this
    plot by setting a threshold.
    5) Principal Component Analysis – This technique combines highly correlated features
    into a single feature, thus resulting in dimensionality reduction.
    6) Backward selection – We train the model on n features. Then we remove one feature at
    a time whose removal has lead to the smallest increase in the error rate.
    7) Forward Selection – This is the exact opposite process of backward selection.
    We start with 1 feature and keep on adding additional features, one feature at a time which
    leads to increase in the performance.

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