Matplotlib 直方图
直方图
直方图是显示 频率 分布的图形。
它是一个图表,显示每个给定间隔内的观察次数。
示例:假设您要求250人的身高,您可能会得到如下直方图:

从柱状图中可以看出,大约有:
身高 140 至 145 厘米的 2 人,
身高 145 至 150 厘米的 5 人,
身高 151 至 156 厘米的 15 人,
身高 157 至 162 厘米的 31 人,
身高 163 至 168 厘米的 46 人,
身高 168 至 173 厘米的 53人,
身高 173 至 178 厘米的 45人,
身高 179 至 184 厘米的 28人,
身高 185 至 190 厘米的 21 人,
身高 190 至 195 厘米的 4 人。
创建直方图
在 Matplotlib 中,我们使用 hist() 函数创建直方图。
hist() 函数将使用数字数组创建直方图,该数组作为参数带入到函数中。
为简单起见,我们使用 NumPy 随机生成一个包含 250 个值的数组,其中值将集中在 170 左右,标准偏差为 10。在本站的 机器学习教程 中了解有关 正太数据分布 的知识。
实例
NumPy 的正态数据分布:
import numpy as npx = np.random.normal(170, 10, 250)print(x)
Result:
这将生成一个 随机 结果,可能如下所示:
[167.62255766 175.32495609 152.84661337 165.50264047 163.17457988162.29867872 172.83638413 168.67303667 164.57361342 180.81120541170.57782187 167.53075749 176.15356275 176.95378312 158.4125473187.8842668 159.03730075 166.69284332 160.73882029 152.22378865164.01255164 163.95288674 176.58146832 173.19849526 169.40206527166.88861903 149.90348576 148.39039643 177.90349066 166.72462233177.44776004 170.93335636 173.26312881 174.76534435 162.28791953166.77301551 160.53785202 170.67972019 159.11594186 165.36992993178.38979253 171.52158489 173.32636678 159.63894401 151.95735707175.71274153 165.00458544 164.80607211 177.50988211 149.28106703179.43586267 181.98365273 170.98196794 179.1093176 176.91855744168.32092784 162.33939782 165.18364866 160.52300507 174.14316386163.01947601 172.01767945 173.33491959 169.75842718 198.04834503192.82490521 164.54557943 206.36247244 165.47748898 195.26377975164.37569092 156.15175531 162.15564208 179.34100362 167.22138242147.23667125 162.86940215 167.84986671 172.99302505 166.77279814196.6137667 159.79012341 166.5840824 170.68645637 165.62204521174.5559345 165.0079216 187.92545129 166.86186393 179.78383824161.0973573 167.44890343 157.38075812 151.35412246 171.3107829162.57149341 182.49985133 163.24700057 168.72639903 169.05309467167.19232875 161.06405208 176.87667712 165.48750185 179.68799986158.7913483 170.22465411 182.66432721 173.5675715 176.85646836157.31299754 174.88959677 183.78323508 174.36814558 182.55474697180.03359793 180.53094948 161.09560099 172.29179934 161.22665588171.88382477 159.04626132 169.43886536 163.75793589 157.73710983174.68921523 176.19843414 167.39315397 181.17128255 174.2674597186.05053154 177.06516302 171.78523683 166.14875436 163.31607668174.01429569 194.98819875 169.75129209 164.25748789 180.25773528170.44784934 157.81966006 171.33315907 174.71390637 160.55423274163.92896899 177.29159542 168.30674234 165.42853878 176.46256226162.61719142 166.60810831 165.83648812 184.83238352 188.99833856161.3054697 175.30396693 175.28109026 171.54765201 162.08762813164.53011089 189.86213299 170.83784593 163.25869004 198.68079225166.95154328 152.03381334 152.25444225 149.75522816 161.79200594162.13535052 183.37298831 165.40405341 155.59224806 172.68678385179.35359654 174.19668349 163.46176882 168.26621173 162.97527574192.80170974 151.29673582 178.65251432 163.17266558 165.11172588183.11107905 169.69556831 166.35149789 178.74419135 166.28562032169.96465166 178.24368042 175.3035525 170.16496554 158.80682882187.10006553 178.90542991 171.65790645 183.19289193 168.17446717155.84544031 177.96091745 186.28887898 187.89867406 163.26716924169.71242393 152.9410412 158.68101969 171.12655559 178.1482624187.45272185 173.02872935 163.8047623 169.95676819 179.36887054157.01955088 185.58143864 170.19037101 157.221245 168.90639755178.7045601 168.64074373 172.37416382 165.61890535 163.40873027168.98683006 149.48186389 172.20815568 172.82947206 173.71584064189.42642762 172.79575803 177.00005573 169.24498561 171.55576698161.36400372 176.47928342 163.02642822 165.09656415 186.70951892153.27990317 165.59289527 180.34566865 189.19506385 183.10723435173.48070474 170.28701875 157.24642079 157.9096498 176.4248199 ]
hist() 函数将读取数组并生成直方图:
实例
一个简单的直方图:
import sysimport matplotlibmatplotlib.use('Agg')import matplotlib.pyplot as pltimport numpy as npx = np.random.normal(170, 10, 250)plt.hist(x)plt.show()plt.savefig(sys.stdout.buffer)sys.stdout.flush()
结果:
