# Hurst Exponent turns nan - Python 3

I'm wanting to determine whether a time series is mean-reverting or not, but I'm running into some issues when calculating the Hurst exponent. It's supposed to print 0.5-ish, but instead I get a "nan". All help would be appreciated.

I get the following error/warning:

``````RuntimeWarning: divide by zero encountered in log
poly = polyfit(log(lags), log(tau), 1)
``````

Below is the code I'm working on.

``````import statsmodels.tsa.stattools as ts
from datetime import datetime

security = DataReader("GOOG", "yahoo", datetime(2000,1,1), datetime(2013,1,1))

from numpy import cumsum, log, polyfit, sqrt, std, subtract
from numpy.random import randn

def hurst(ts):
"""Returns the Hurst Exponent of the time series vector ts"""

lags = range(2, 100)

tau = [sqrt(std(subtract(ts[lag:], ts[:-lag]))) for lag in lags]

poly = polyfit(log(lags), log(tau), 1)

return poly*2.0

gbm = log(cumsum(randn(100000))+1000)
mr = log(randn(100000)+1000)
tr = log(cumsum(randn(100000)+1)+1000)

print ("Hurst(GBM):   %s" % hurst(gbm))
print ("Hurst(MR):    %s" % hurst(mr))
print ("Hurst(TR):    %s" % hurst(tr))
print ("Hurst(SECURITY):  %s" % hurst(security['Adj Close']))

print ("Hurst(GBM):   %s" % hurst(gbm))
print ("Hurst(MR):    %s" % hurst(mr))
print ("Hurst(TR):    %s" % hurst(tr))
print ("Hurst(SECURITY):  %s" % hurst(security['Adj Close']))
Hurst(GBM):   0.5039604262314196
Hurst(MR):    -2.3832407841923795e-05
Hurst(TR):    0.962521148986032
Hurst(SECURITY):  nan
__main__:11: RuntimeWarning: divide by zero encountered in log
``````
• One or more of the values in `ts` are zero. The warning and result you see is NumPy attempting to take the natural logarithm of zero, and setting the result to Not a Number, `nan`. May 8, 2020 at 20:56
• Alternatively, since you're doing `std(subtract(ts[lag:], ts[:-lag]))`, that result may be zero instead of `ts` (more likely even than a value in `ts` being zero), and thus one or more values in `tau` are zero, with the same warning and final `nan` result. May 8, 2020 at 20:58

I had the same problem when sending Series as the ts argument. All you have to do is send a List not a Series or:

``````def hurst(ts):
"""Returns the Hurst Exponent of the time series vector ts"""
ts = ts if not isinstance(ts, pd.Series) else ts.to_list()
lags = range(2, 100)
tau = [sqrt(std(subtract(ts[lag:], ts[:-lag]))) for lag in lags]
poly = polyfit(log(lags), log(tau), 1)
return poly*2.0
``````

NaN values might be an issue as well, I would check if is ok to dropna() before to_list()

• Thank you for the input! I found a way around it. When I isolated the closing prices or made a excel file with a single column, I could run the data through the function with no problem. Aug 16, 2020 at 23:02

The root cause is that the `Series[<slice>]` syntax returns the corresponding index for each slice, and the `-` operator works on per-index equality (not actual location).

Example:

``````s = pd.Series(range(5))
s[2:] - s[:-2]
=>
0    NaN
1    NaN
2    0.0
3    NaN
4    NaN
dtype: float64
``````

Clearly, that's not what we expected. To see why we can use concat to create a row-by-row dataframe of `s[2:], s[:-2]`, respectively.

``````pd.concat([s[2:], s[:-2]], axis=1)
=>
0   1
0   NaN 0.0
1   NaN 1.0
2   2.0 2.0
3   3.0 NaN
4   4.0 NaN
``````

Given this input the result of the `tau = ` equation in the hurst function is a list of (mostly) nan values.

The solution to work with Series natively is to use `Series.shift()` instead of array slicing:

``````def hurst(ts):
...

# Calculate the array of the variances of the lagged differences
tau = [sqrt((ts - ts.shift(-lag)).std()) for lag in lags]

...
``````

Alternatively, pass the `Series.values` to the original function, which passes a numpy array.