More information can be found in the matplotlib documentation, by default “PuBuGn” figsize : Tuple, optional If a Pandas DataFrame is provided, the index/column information is used to label the plots cmap : str, optionalĪny valid colormap can be used. Parameters:ĢD dataset that can be coerced into Pandas DataFrame. Two-dimensional visualization of the missing values in a dataset. missingval_plot ( data:, cmap: str = 'PuBuGn', figsize: Tuple = (20, 20), sort: bool = False, spine_color: str = '#EEEEEE' ) ¶ Returns the Axes object with the plot for further tweaking. Type of split to be performed, by default None If a Pandas DataFrame is provided, the index/column information is used to label the plots split : Optional, optional Returns a color-encoded correlation matrix. corr_mat ( data:, split: Optional = None, threshold: float = 0, target: Union = None, method: str = 'pearson', colored: bool = True ) → Union ¶ Use to control the color of the bars indicating the least common values, by default “#d8b365” Use to control the color of the bars indicating the most common values, by default “#5ab4ac” bar_color_bottom : str, optional Show the “bottom” most frequent values in a column, by default 3 bar_color_top : str, optional Show the “top” most frequent values in a column, by default 3 bottom : int, optional Use to control the figure size, by default (18, 18) top : int, optional If a Pandas DataFrame is provided, the index/column information is used to label the plots figsize : Tuple, optional Two-dimensional visualization of the number and frequency of categorical features.
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