python scatter散点图用循环分类法加图例
本文实例为大家分享了python scatter散点图用循环分类法加图例,供大家参考,具体内容如下
import matplotlib.pyplot as plt import kNN plt.rcParams['font.sans-serif']=['Simhei'] plt.rcParams['axes.unicode_minus']=False datingDataMat, datingLabels = kNN.file2matrix('datingTestSet2.txt') plt.figure() type1_x = [] #一共有3类,所以定义3个空列表准备接受数据 type1_y = [] type2_x = [] type2_y = [] type3_x = [] type3_y = [] for i in range(len(datingLabels)): #1000组数据,i循环1000次 if datingLabels[i] == '1': #根据标签进行数据分类,注意标签此时是字符串 type1_x.append(datingDataMat[i][0]) #取的是样本数据的第一列特征和第二列特征 type1_y.append(datingDataMat[i][1]) if datingLabels[i] == '2': type2_x.append(datingDataMat[i][0]) type2_y.append(datingDataMat[i][1]) if datingLabels[i] == '3': type3_x.append(datingDataMat[i][0]) type3_y.append(datingDataMat[i][1]) plt.scatter(type1_x, type1_y, s=20, c='r', label='不喜欢') plt.scatter(type2_x, type2_y, s=40, c='b', label='魅力一般') plt.scatter(type3_x, type3_y, s=60, c='k', label='极具魅力') plt.legend() plt.show()
用面向对象的写法:
import matplotlib.pyplot as plt import kNN plt.rcParams['font.sans-serif']=['Simhei'] plt.rcParams['axes.unicode_minus']=False datingDataMat, datingLabels = kNN.file2matrix('datingTestSet2.txt') plt.figure() axes = plt.subplot(111) type1_x = [] type1_y = [] type2_x = [] type2_y = [] type3_x = [] type3_y = [] for i in range(len(datingLabels)): if datingLabels[i] == '1': type1_x.append(datingDataMat[i][0]) type1_y.append(datingDataMat[i][1]) if datingLabels[i] == '2': type2_x.append(datingDataMat[i][0]) type2_y.append(datingDataMat[i][1]) if datingLabels[i] == '3': type3_x.append(datingDataMat[i][0]) type3_y.append(datingDataMat[i][1]) type1 = axes.scatter(type1_x, type1_y, s=20, c='r') type2 = axes.scatter(type2_x, type2_y, s=40, c='b') type3 = axes.scatter(type3_x, type3_y, s=60, c='k') plt.legend((type1, type2, type3), ('不喜欢', '魅力一般', '极具魅力')) plt.show()
相关推荐
elizabethxxy 2020-11-06
pythonxuexi 2020-10-30
retacnyue 2020-09-28
pythonxuexi 2020-09-06
Morelia 2020-09-04
zhaobig 2020-08-17
linkequa 2020-08-16
CloudXli 2020-08-14
kikaylee 2020-08-12
LowisLucifer 2020-08-09
xiesheng 2020-08-06
Tristahong 2020-08-05
CatherineC00 2020-08-01
Andrewjdw 2020-07-26
reallyr 2020-07-18
wordmhg 2020-07-16
yawei 2020-07-06
zlfing 2020-07-07