# Having trouble with scipy Minimize function, it is giving me odd results

Created an objective function

The problem is no matter what initial guess I use, the minimize functions just keeps on using that number. for example: If I use 15 for the initial guess, the solver will not try any other number and say the answer is 15. I'm sure the ere is an issue with the code but I am not sure where.

CODE BELOW:

``````from scipy.optimize import minimize
import numpy as np
from pandas import *

#----------------------------------------------------
#-------- Create Function ------------
#----------------------------------------------------
def MovingAverage(Input,N,test=0):

# Create data frame
df = DataFrame(Input, columns=['Revenue'])

df['CummSum'] = df['Revenue'].cumsum()
df['Mavg'] = rolling_mean(df['Revenue'], N)
df['Error'] = df['Revenue'] - df['Mavg']
df['MFE'] = (df['Error']).mean()
df['MSE'] = np.sqrt(np.square(df['Error']).mean())

if test == 0:
else: return df

#----------------------------------------------------
#-------- Input ------------
#----------------------------------------------------
data = [1,2,3,4,5,5,5,5,5,5,5,5,5,5,5]

#----------------------------------------------------
#-------- SOLVER ------------
#----------------------------------------------------

## Objective Function
fun = lambda x: MovingAverage(data, x[0])

## Contraints
cons = ({'type': 'ineq', 'fun': lambda x:  x[0] - 2}, # N>=2
{'type': 'ineq', 'fun': lambda x:  len(data) - x[0]}) # N<=len(data)

## Bounds (note sure what this is yet)
bnds = (None,None)

## Solver
res = minimize(fun, 15, method='SLSQP', bounds=bnds, constraints=cons)

##print res
##print res.status
##print res.success
##print res.njev
##print res.nfev
##print res.fun
##for i in res.x:
##    print i
##print res.message
##for i in res.jac:
##    print i
##print res.nit

# print final results
result = MovingAverage(data,res.x,1)
print result
``````

List of possible values:
2 = 0.142857142857,
3 = 0.25641025641,
4 = 0.333333333333,
5 = 0.363636363636,
6 = 0.333333333333,
7 = 0.31746031746,
8 = 0.3125,
9 = 0.31746031746,
10 = 0.333333333333,
11 = 0.363636363636,
12 = 0.416666666667,
13 = 0.487179487179,
14 = 0.571428571429,
15 = 0.666666666667

-
Start by investigating your lambda function: What does it return for different values close to 15? Also, remember that minimize() won't find a global minimum, only a local one, unless the optimized function has some useful property like convexity. – Bitwise Nov 13 '12 at 20:27
Added List of possible values – DataByDavid Nov 13 '12 at 20:35
Ok so you can already see that your function is not convex, since you have multiple local minimums. – Bitwise Nov 13 '12 at 20:44
From the values you added it seems that fun(15)=0.666, so how does minimize() return 15? – Bitwise Nov 13 '12 at 20:46
I see your point, I just thought the solver will find the global for me. What I meant by 15 is fun(15). – DataByDavid Nov 13 '12 at 20:52