首页 > 解决方案 > Python DataFrame - 为具有分组列(至少两列)的数据框绘制条形图

问题描述

我一直在努力使用 matlplotlib 在 python 中重新创建这个 Excel 图:

在此处输入图像描述

数据在数据框中;我正在尝试自动化生成此图的过程。

我试过拆开我的数据框,绘制子图,但我没有设法创建在 Excel 中如此优雅的“区域”索引。我已经成功地在没有这个“区域”索引的情况下绘制了图表,但这并不是我真正想要做的。

这是我的代码:

data = pd.DataFrame(
    {
        'Factory Zone':
        ["AMERICAS","APAC","APAC","APAC","APAC","APAC","EMEA","EMEA","EMEA","EMEA"],
        'Factory Name':
        ["Chocolate Factory","Crayon Factory","Jobs Ur Us", "Gibberish US","Lil Grey", "Toys R Us","Food Inc.",
        "Pet Shop", "Bonbon Factory","Carrefour"],
        'Production Day 1':
        [24,1,9,29,92,79,4,90,42,35],
        'Production Day 2':
        [2,43,17,5,31,89,44,49,34,84]
    })
df = pd.DataFrame(data)
print(df)
# Without FactoryZone, it works:
df = df.drop(['Factory Zone'], axis=1)
image = df.plot(kind="bar")

数据如下所示:

  Unnamed: 0 FactoryZone       Factory Name  Production Day 1  Production Day 2
0           1    AMERICAS  Chocolate Factory                24                43
1           2    AMERICAS     Crayon Factory                 1                17
2           3        EMEA           Pet Shop                 9                 5
3           4        EMEA     Bonbon Factory                29                31
4           5        APAC           Lil Grey                92                89
5           6    AMERICAS         Jobs Ur Us                79                44
6           7        APAC          Toys R Us                 4                49
7           8        EMEA          Carrefour                90                34
8           9    AMERICAS       Gibberish US                42                84
9          10        APAC          Food Inc.                35                62

标签: pythondataframematplotlibgroup-bybar-chart

解决方案


您可以通过首先为分层数据集创建MultiIndex来创建此图,其中级别 0工厂区级别 1工厂名称

import numpy as np                 # v 1.19.2
import pandas as pd                # v 1.1.3
import matplotlib.pyplot as plt    # v 3.3.2

df = pd.DataFrame(
    {'Factory Zone': ['AMERICAS', 'AMERICAS', 'AMERICAS', 'AMERICAS', 'APAC',
                      'APAC', 'APAC', 'EMEA', 'EMEA', 'EMEA'],
     'Factory Name': ['Chocolate Factory', 'Crayon Factory', 'Jobs Ur Us',
                      'Gibberish US', 'Lil Grey', 'Toys R Us', 'Food Inc.',
                      'Pet Shop', 'Bonbon Factory','Carrefour'],
     'Production Day 1': [24,1,9,29,92,79,4,90,42,35],
     'Production Day 2': [2,43,17,5,31,89,44,49,34,84]
    })

df.set_index(['Factory Zone', 'Factory Name'], inplace=True)
df

#                                   Production Day 1  Production Day 2
#  Factory Zone       Factory Name      
#      AMERICAS  Chocolate Factory                24                 2
#                   Crayon Factory                 1                43
#                       Jobs Ur Us                 9                17
#                     Gibberish US                29                 5
#          APAC           Lil Grey                92                31
#                        Toys R Us                79                89
#                        Food Inc.                 4                44
#         EMEA            Pet Shop                90                49
#                   Bonbon Factory                42                34
#                        Carrefour                35                84

就像 Quang Hoang 建议的那样,您可以为每个区域创建一个子图并将它们粘在一起。每个子图的宽度必须根据工厂的数量通过使用字典中的width_ratios参数进行校正,gridspec_kw以便所有列具有相同的宽度。然后有无限的格式选择可供选择。

在下面的示例中,我选择仅在区域之间显示分隔线,为此使用次要刻度线。此外,由于此处的图形宽度仅限于 10 英寸,因此我将较长的标签重写为两行。

# Create figure with a subplot for each factory zone with a relative width
# proportionate to the number of factories
zones = df.index.levels[0]
nplots = zones.size
plots_width_ratios = [df.xs(zone).index.size for zone in zones]
fig, axes = plt.subplots(nrows=1, ncols=nplots, sharey=True, figsize=(10, 4),
                         gridspec_kw = dict(width_ratios=plots_width_ratios, wspace=0))

# Loop through array of axes to create grouped bar chart for each factory zone
alpha = 0.3 # used for grid lines, bottom spine and separation lines between zones
for zone, ax in zip(zones, axes):
    # Create bar chart with grid lines and no spines except bottom one
    df.xs(zone).plot.bar(ax=ax, legend=None, zorder=2)
    ax.grid(axis='y', zorder=1, color='black', alpha=alpha)
    for spine in ['top', 'left', 'right']:
        ax.spines[spine].set_visible(False)
    ax.spines['bottom'].set_alpha(alpha)
    
    # Set and place x labels for factory zones
    ax.set_xlabel(zone)
    ax.xaxis.set_label_coords(x=0.5, y=-0.2)
    
    # Format major tick labels for factory names: note that because this figure is
    # only about 10 inches wide, I choose to rewrite the long names on two lines.
    ticklabels = [name.replace(' ', '\n') if len(name) > 10 else name
                  for name in df.xs(zone).index]
    ax.set_xticklabels(ticklabels, rotation=0, ha='center')
    ax.tick_params(axis='both', length=0, pad=7)
    
    # Set and format minor tick marks for separation lines between zones: note
    # that except for the first subplot, only the right tick mark is drawn to avoid
    # duplicate overlapping lines so that when an alpha different from 1 is chosen
    # (like in this example) all the lines look the same
    if ax.is_first_col():
        ax.set_xticks([*ax.get_xlim()], minor=True)
    else:
        ax.set_xticks([ax.get_xlim()[1]], minor=True)
    ax.tick_params(which='minor', length=55, width=0.8, color=[0, 0, 0, alpha])

# Add legend using the labels and handles from the last subplot
fig.legend(*ax.get_legend_handles_labels(), frameon=False, loc=(0.08, 0.77))

fig.suptitle('Production Quantity by Zone and Factory on both days', y=1.02, size=14);

分层分组条形图



参考:Quang Hoang 的回答,gyx-hh 的回答


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