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data-exploration
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Currently all of the metrics computed are independent of a target variable or column, but if
lens.summarisetook the name of a column as the target variable, the output of some metrics could be more interpretable even if the target variable is not used in any kind of predictive modelling.A good example of this could be PCA (see #14), which could plot the different categories of the target va