0

I'am trying to calculate 33 stock betas and write them to dataframe.

Unfortunately, I have an error in my code: cannot concatenate object of type ""; only pd.Series, pd.DataFrame, and pd.Panel (deprecated) objs are vali

import pandas as pd
import numpy as np
stock1=pd.read_excel(r"C:\Users\Кир\Desktop\Uni\Master\Nasdaq\Financials 11.05\Nasdaq last\clean data\01.xlsx", '1') #read second sheet of excel file
stock2=pd.read_excel(r"C:\Users\Кир\Desktop\Uni\Master\Nasdaq\Financials 11.05\Nasdaq last\clean data\01.xlsx", '2') #read second sheet of excel file
stock2['stockreturn']=np.log(stock2.AdjCloseStock / stock2.AdjCloseStock.shift(1)) #stock ln return
stock2['SP500return']=np.log(stock2.AdjCloseSP500 / stock2.AdjCloseSP500.shift(1)) #SP500 ln return
stock2 = stock2.iloc[1:] #delete first row in dataframe
betas = pd.DataFrame()
for i in range(0,(len(stock2.AdjCloseStock)//52)-1):
    betas = betas.append(stock2.stockreturn.iloc[i*52:(i+1)*52].cov(stock2.SP500return.iloc[i*52:(i+1)*52])/stock2.SP500return.iloc[i*52:(i+1)*52].cov(stock2.SP500return.iloc[i*52:(i+1)*52]))

My data looks like weekly stock and S&P index return for 33 years. So the output should have 33 betas.

1 Answer 1

0

I tried simplifying your code and creating an example. I think the problem is that your calculation returns a float. You want to make it a pd.Series. DataFrame.append takes:

DataFrame or Series/dict-like object, or list of these

np.random.seed(20)
df = pd.DataFrame(np.random.randn(33*53, 2),
                  columns=['a', 'b'])
betas = pd.DataFrame()
for year in range(len(df['a'])//52 -1):
    # Take some data
    in_slice = pd.IndexSlice[year*52:(year+1)*52]
    numerator = df['a'].iloc[in_slice].cov(df['b'].iloc[in_slice])
    denominator = df['b'].iloc[in_slice].cov(df['b'].iloc[in_slice])
    # Do some calculations and create a pd.Series from the result
    data = pd.Series(numerator / denominator, name = year)
    # Append to the DataFrame
    betas = betas.append(data)

betas.index.name = 'years'
betas.columns = ['beta']

betas.head():

           beta
years          
0      0.107669
1     -0.009302
2     -0.063200
3      0.025681
4     -0.000813

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.