一、特点

数据必须是原始数据不能经过处理,数据连续型,显示一组或多组分布数据

histogram 直方图

normed 定额

二、核心

hist(x, bins=None, normed=None# x是需要统计的数据,类型:数组
# bins是组数, 组数 = (max(数组)- min(数组))//组距
# normed 默认为:频数分布直方图, 值为True为: 频率分布直方图

 三、示例

1、频数直方图

from matplotlib import pyplot as plt
from matplotlib import font_manager

a = [131, 98, 125, 131, 124, 139, 131, 117, 128, 108, 135, 138, 131, 102, 107, 114, 119, 128, 121, 142, 127, 130, 124,
     101, 110,
     116, 117, 110, 128, 128, 115, 99, 136, 126, 134, 95, 138, 117, 111, 78, 132, 124, 113, 150, 110, 117, 86, 95, 144,
     105, 126,
     130, 126, 130, 126, 116, 123, 106, 112, 138, 123, 86, 101, 99, 136, 123, 117, 119, 105, 137, 123, 128, 125, 104,
     109, 134,
     125, 127, 105, 120, 107, 129, 116, 108, 132, 103, 136, 118, 102, 120, 114, 105, 115, 132, 145, 119, 121, 112, 139,
     138, 109,
     132, 134, 156, 106, 117, 127, 144, 139, 139, 119, 140, 83, 110, 102, 123, 107, 143, 115, 136, 118, 139, 123, 112,
     118, 125, 109,
     119, 133, 112, 114, 122, 109, 106, 123, 116, 131, 127, 115, 118, 112, 135, 115, 146, 137, 116, 103, 144, 83, 123,
     111, 110, 111,
     100, 154, 136, 100, 118, 119, 133, 134, 106, 129, 126, 110, 111, 109, 141, 120, 117, 106, 149, 122, 122, 110, 118,
     127, 121, 114,
     125, 126, 114, 140, 103, 130, 141, 117, 106, 114, 121, 114, 133, 137, 92, 121, 112, 146, 97, 137, 105, 98, 117,
     112, 81, 97,
     139, 113, 134, 106, 144, 110, 137, 137, 111, 104, 117, 100, 111, 101, 110, 105, 129, 137, 112, 120, 113, 133, 112,
     83, 94, 146,
     133, 101, 131, 116, 111, 84, 137, 115, 122, 106, 144, 109, 123, 116, 111, 111, 133, 150, 120]

my_font = font_manager.FontProperties(fname="C:\Windows\Fonts\msjh.ttc")
# 设置图行大小
plt.figure(figsize=(20, 8), dpi=80)
# 绘图
movie_width = 3
num_bins = (max(a) - min(a)) // movie_width
plt.hist(a, num_bins)
# 定制x轴刻度和label
_x = list(range(min(a), max(a) + 1))
plt.xticks(_x[::movie_width])
# 添加网格
plt.grid()
# 添加说明
plt.xlabel("电影时长 单位(分)", fontproperties=my_font)
plt.ylabel("数量", fontproperties=my_font)
plt.title("电影时长频数分布直方图", fontproperties=my_font)
# 展示图片
plt.show()

2、频率直方图

 频数直方图->频率直方图, 只需要在绘图的时候添加 normed=True 即可

plt.hist(a, num_bins, normed=True)

注意:

MatplotlibDeprecationWarning:
The 'normed' kwarg was deprecated in Matplotlib 2.1 and will be removed in 3.1. Use 'density' instead.
  plt.hist(a, num_bins, normed=True)

四、条形图->直方图

目的:解决处理后的数据不能使用直方图的问题

方案:

1.绘图时,width=1或height=1
2.设置x轴或y轴的刻度,注意设置刻度和绘图之间没有直接的关系

例子

from matplotlib import pyplot as plt
from matplotlib import font_manager
#
my_font = font_manager.FontProperties(fname="C:\Windows\Fonts\msjh.ttc")
interval = [0, 5, 10, 15, 20, 25, 30, 35, 40, 45, 60, 90]
width = [5, 5, 5, 5, 5, 5, 5, 5, 5, 15, 30, 60]
quantity = [836, 2737, 3723, 3926, 3596, 1438, 3273, 642, 824, 613, 215, 47]
# 显示中文

# 设置图行大小
plt.figure(figsize=(20, 8), dpi=80)
# 绘图
plt.bar(range(len(interval)), quantity, width=1)

# 设置x轴刻度和label
_x = range(len(interval) + 1)
_x_ticks = [i - 0.5 for i in _x]
_x_label = interval + [150]
plt.xticks(_x_ticks, _x_label)
# 添加说明
plt.xlabel("间隔", fontproperties=my_font)
plt.ylabel("数量", fontproperties=my_font)
plt.title("人口普查", fontproperties=my_font)
# 添加网格
plt.grid()
# 展示图片
plt.show()