pandas.Panel4D.describe¶
- Panel4D.describe(percentile_width=None, percentiles=None, include=None, exclude=None)¶
- Generate various summary statistics, excluding NaN values. - Parameters: - percentile_width : float, deprecated - The percentile_width argument will be removed in a future version. Use percentiles instead. width of the desired uncertainty interval, default is 50, which corresponds to lower=25, upper=75 - percentiles : array-like, optional - The percentiles to include in the output. Should all be in the interval [0, 1]. By default percentiles is [.25, .5, .75], returning the 25th, 50th, and 75th percentiles. - include, exclude : list-like, ‘all’, or None (default) - Specify the form of the returned result. Either: - None to both (default). The result will include only numeric-typed columns or, if none are, only categorical columns.
- A list of dtypes or strings to be included/excluded. To select all numeric types use numpy numpy.number. To select categorical objects use type object. See also the select_dtypes documentation. eg. df.describe(include=[‘O’])
- If include is the string ‘all’, the output column-set will match the input one.
 - Returns: - summary: NDFrame of summary statistics - See also - Notes - The output DataFrame index depends on the requested dtypes: - For numeric dtypes, it will include: count, mean, std, min, max, and lower, 50, and upper percentiles. - For object dtypes (e.g. timestamps or strings), the index will include the count, unique, most common, and frequency of the most common. Timestamps also include the first and last items. - For mixed dtypes, the index will be the union of the corresponding output types. Non-applicable entries will be filled with NaN. Note that mixed-dtype outputs can only be returned from mixed-dtype inputs and appropriate use of the include/exclude arguments. - If multiple values have the highest count, then the count and most common pair will be arbitrarily chosen from among those with the highest count. - The include, exclude arguments are ignored for Series.