Python資料分析之雙色球統計單個紅和藍球哪個比例高的方法,python資料分析
本文執行個體講述了Python資料分析之雙色球統計單個紅和藍球哪個比例高的方法。分享給大家供大家參考,具體如下:
統計單個紅球和藍球,哪個組合最多,顯示前19組資料
#!/usr/bin/python# -*- coding:UTF-8 -*-import pandas as pdimport numpy as npimport matplotlib.pyplot as pltimport operatordf = pd.read_table('newdata.txt',header=None,sep=',')tdate = sorted(df.loc[:,0])# print tdateh1 = df.loc[:,1:7:6].values #取第一列紅球和藍球# print h1h2 = df.loc[:,2:7:5].values #取第二列紅球和藍球h3 = df.loc[:,3:7:4].valuesh4 = df.loc[:,4:7:3].valuesh5 = df.loc[:,5:7:2].valuesh6 = df.loc[:,6:7:1].values# tblue = df.loc[:,7]#將上方切分的所有資料群組合到一起data = np.append(h1, h2, axis = 0)data = np.append(data, h3, axis = 0)data = np.append(data, h4, axis = 0)data = np.append(data, h5, axis = 0)data = np.append(data, h6, axis = 0)# print datadata1 = pd.DataFrame(data)# print data1#寫入到一個檔案中data1.to_csv('hldata.csv',index=None,header=None)#讀取檔案,將組合進行統計並從大到小排序f = open("hldata.csv")count_dict = {}for line in f.readlines(): line = line.strip() count = count_dict.setdefault(line, 0) count += 1 count_dict[line] = countsorted_count_dict = sorted(count_dict.iteritems(), key=operator.itemgetter(1), reverse=True)# for item in sorted_count_dict:# print "%s,%d" % (item[0], item[1])# print sorted_count_dictfenzu = pd.DataFrame(sorted_count_dict).set_index([0])#print fenzu#分別從第一列和第二列取前19個資料放到x y中x = list(fenzu.index[:19])y = list(fenzu.values[:19])print xprint y#將x對應數值,不然畫圖報錯s = pd.Series(range(1,len(x)+1), index=x)#設定畫圖屬性plt.figure(figsize=(12,6),dpi=80)plt.legend(loc='best')# plt.plot(fenzu,color='red')plt.bar(s,y,alpha=.5, color='r',width=0.8)plt.title('The one red and one blue ball number')plt.xlabel('one red and one blue number')plt.ylabel('times')#可以在圖中放置標籤字元# for i in range(0,19):# plt.text(int(i+1.4),25,x[i],color='b',size=10)# plt.text(1.4,20,x[0],color='g',ha='center')#將['1,12', '26,9', '5,13']這樣的字元放到圖中plt.xticks(s,x, rotation=10,size=10,ha='left')plt.show()
結果如下:
可以看出紅球1和藍球12出現過的次數最多,其次是紅球26和藍球9
參考:
import matplotlib.pyplot as pltimport numpy as npplt.rc('font', family='SimHei', size=13)num = np.array([13325, 9403, 9227, 8651])ratio = np.array([0.75, 0.76, 0.72, 0.75])men = num * ratiowomen = num * (1-ratio)x = ['聊天','支付','團購\n優惠券','線上視頻']width = 0.5idx = np.arange(len(x))plt.bar(idx, men, width, color='red', label='男性使用者')plt.bar(idx, women, width, bottom=men, color='yellow', label='女性使用者')plt.xlabel('應用類別')plt.ylabel('男女分布')plt.xticks(idx+width/2, x, rotation=40)plt.legend()