如何统计投资品种波动率(python)?

目前正在网H股ETF,进行了接近一年了还没出清,虽然已盈利,但相对于50ETF来说现在想它还真不是好品种,不考虑强周期、通胀、流动性等因素,仅就网格的最大影响因素波动性来讲,它就比不上50ETF。以前不会统计,现在学了点Python,自己写了小程序计算了下,先上结果:

如何统计投资品种波动率(python)?_第1张图片
volatility(510050vs510900).png

  图中蓝色为50ETF,可以看出,过去三年来它的日波动性明显强于H股ETF。
  下面就以50ETF和H股ETF为例,统计这两个投资品种的日波动率,其他品种、其他周期类似处理即可。附上代码:
# - - coding: utf-8 --
"""
Created on Sat Jul 09 12:03:03 2016

@author: forestgumpgg(雪球ID、聚宽ID),欢迎关注,共同讨论量化分析之道
比较上证50ETF(510050)和H股ETF(510900)的日波动率
日波动率=sqrt[(最高值-收盘值)^2 + (最低值- 收盘值) ^2]

"""
import pandas as pd
import matplotlib.pyplot as plt
import tushare as ts
import math

ts.set_token('********') #此次隐去了自己用的token

start_date = '2013-07-01'
end_date = '2016-06-30'

info510050 = ts.get_hist_data('510050', start= start_date, end=end_date)
info510050 = info510050.sort_index(axis = 'index', ascending = True)
info510050['day_volatility'] = (pow(info510050['high'] -info510050['close'] , 2) +
                        pow(info510050['low'] -info510050['close'] , 2) )
for i in range(0,len(info510050.index)):
    info510050['day_volatility'][i] = math.sqrt(info510050['day_volatility'][i])
    
    
info510900 = ts.get_hist_data('510900', start=start_date, end=end_date)
info510900 = info510900.sort_index(axis = 'index', ascending = True)
info510900['day_volatility'] = (pow(info510900['high'] -info510900['close'] , 2) +
                        pow(info510900['low'] -info510900['close'] , 2) )
for i in range(0,len(info510900.index)):
    info510900['day_volatility'][i] = math.sqrt(info510900['day_volatility'][i])    
                        
plt_title = 'volatility(50ETF vs H_ETF)'  
plt_figsize = (16, 9)  #unit is inch                      
plt.figure()
info510050['day_volatility'].plot(figsize = plt_figsize, title = plt_title, grid = True, legend =True)                          
info510900['day_volatility'].plot(figsize = plt_figsize, title = plt_title, grid = True, legend =True) 
plt.legend(['50ETF','H_ETF'])

plt.savefig("volatility(510050vs510900).png")

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