I have a problem with a GARCH model in python. My code looks as follow

import sys
import numpy as np
import pandas as pd
from arch import arch_model


spotmarket = pd.read_excel("./data/external/Spotmarket.xlsx", index=True)

l = spotmarket['Price'].pct_change().dropna()

returns = 100 * l

model=arch_model(returns, vol='Garch', p=1, o=0, q=1, dist='Normal')

The first part of the code works well. I have end of the day prices in a separate excel table and want to model them with a GARCH model. The problem is, that I get the error message The optimizer returned code 9. The message is: Iteration limit exceeded See scipy.optimize.fmin_slsqp for code meaning. Has someone an idea, how I can handle the problem with the iteration limit? Thank you!

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Reading the source code (here), you can pass additional parameters to the fit method. Internally, scipy.optimize.minimize (doc) is called and the parameters of interest to you are probably max_iter and ftol. Try manually changing the default values (max_iter=100 and ftol= 1e-06) to new ones that might lead to convergence. Example:

results=model.fit(options={'max_iter': 200})
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  • Thank you @Jan! But it doesn't work...I've tried my model with less data and then it works. I don't understand why this happened, because when I use data from yahoo finance, which is much more than my data, it worked too. – Pyrmon55 Jun 3 '18 at 11:11

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