2

I am making a project for a class, and i am trying to predict nfl socre games using linear regression and predict functions from sklearn, my problem comes when i want to fit the training data into de fit function, here is my code:

onehotdata_x1 = pd.get_dummies(goal_model_data,columns=['team','opponent'])

# Crea el object de regression linear
regr = linear_model.LinearRegression()

# Train the model using the training sets
regr.fit(onehotdata_x1[['home','team','opponent']], onehotdata_x1['goals'])

This is the structure of dataframe(goal_model_data):

team opponent  goals  home
 NE       KC     27     1
BUF      NYJ     21     1
CHI      ATL     17     1
CIN      BAL      0     1
CLE      PIT     18     1
DET      ARI     35     1
HOU      JAX      7     1
TEN      OAK     16     1

and this is the error that i get when i run the program:

Traceback (most recent call last):
  File "predictnflgames.py", line 76, in <module>
    regr.fit(onehotdata_x1[['home','team','opponent']], onehotdata_x1['goals'])
  File "C:\Python27\lib\site-packages\pandas\core\frame.py", line 2133, in __getitem__
    return self._getitem_array(key)
  File "C:\Python27\lib\site-packages\pandas\core\frame.py", line 2177, in _getitem_array
    indexer = self.loc._convert_to_indexer(key, axis=1)
  File "C:\Python27\lib\site-packages\pandas\core\indexing.py", line 1269, in _convert_to_indexer
    .format(mask=objarr[mask]))
KeyError: "['team' 'opponent'] not in index"
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  • Can you add the output of onehotdata_x1.head() Nov 24, 2017 at 18:04
  • You are trying to access columns that do not exist after using pd. get_dummies. see my answer for more details
    – seralouk
    Nov 24, 2017 at 22:40

2 Answers 2

3

The problem is that after pd.get_dummies there are no team and opponent columns.

I use this data in txt format for my example: https://ufile.io/e2vtv (same as yours).


Try this and see:

import pandas as pd
from sklearn.linear_model import LinearRegression

goal_model_data = pd.read_table('goal_model_data.txt', delim_whitespace=True)

onehotdata_x1 = pd.get_dummies(goal_model_data,columns=['team','opponent'])

regr = LinearRegression()

#see the columns in onehotdata_x1
onehotdata_x1.columns

#see the data (only 2 rows of the data for the example)
onehotdata_x1.head(2)

Results:

Index([u'goals', u'home', u'team_BUF', u'team_CHI', u'team_CIN', u'team_CLE',
       u'team_DET', u'team_HOU', u'team_NE', u'team_TEN', u'opponent_ARI',
       u'opponent_ATL', u'opponent_BAL', u'opponent_JAX', u'opponent_KC',
       u'opponent_NYJ', u'opponent_OAK', u'opponent_PIT'],
       dtype='object')

goals  home  team_BUF  team_CHI  team_CIN  team_CLE  team_DET  team_HOU  \
0     27     1         0         0         0         0         0         0
1     21     1         1         0         0         0         0         0

team_NE  team_TEN  opponent_ARI  opponent_ATL  opponent_BAL  opponent_JAX  \
0        1         0             0             0             0             0
1        0         0             0             0             0             0

opponent_KC  opponent_NYJ  opponent_OAK  opponent_PIT
0            1             0             0             0
1            0             1             0             0

EDIT 1

Based on the original code, you might want to do something like the following:

import pandas as pd
from sklearn.linear_model import LinearRegression

data = pd.read_table('data.txt', delim_whitespace=True)

onehotdata = pd.get_dummies(data,columns=['team','opponent'])

regr = LinearRegression()

#in x get all columns except goals column
x = onehotdata.loc[:, onehotdata.columns != 'goals']

#use goals column as target variable
y= onehotdata['goals']

regr.fit(x,y)
regr.predict(x)

Hope this helps.

5
  • Actually pd.get_dummies() will drop only the team and opponent columns. goals and home will remain. You can also see that the KeyError is returned only for team and opponent.
    – Alex
    Nov 24, 2017 at 22:43
  • yes this is what i show in my example. after pd.get_dummies there is no team and opponent column. cheers
    – seralouk
    Nov 24, 2017 at 22:45
  • You should correct your first sentence, where you say otherwise.
    – Alex
    Nov 24, 2017 at 22:45
  • It's not just a silly mistake. It represents something bigger. An error of thinking that makes you who you are. (Just kidding, took a look at your profile where you had that written :) )
    – Alex
    Nov 24, 2017 at 22:49
  • so how could i use the dummies created?
    – xtrios
    Nov 24, 2017 at 23:30
-1

When you use pd.get_dummies(goal_model_data,columns=['team','opponent']) the team and opponent column will be dropped from your dataframe and onehotdata_x1 won't contain these two columns.

Then, when you do onehotdata_x1[['home','team','opponent']] you get a KeyError simply because team and opponent do not exist as columns in the onehotdata_x1 dataframe.

Using a toy dataframe, here's what happens:

img

3
  • As a side note, you shouldn't be using the team and opponent columns anyway as independent variables when fitting with linear regression because they are categorical and linear regression works only with numbers under the hood. You should rather use the dummy variables created.
    – Alex
    Nov 24, 2017 at 22:37
  • but how can i use the dummy variables created?
    – xtrios
    Nov 24, 2017 at 23:29
  • @xtrios you should print onehotdata_x1 to understand what's happening here. You'll see a couple of new columns created in comparison with the original goal_model_data dataframe. These new columns are the dummy variables. You want to select those, along with the home variable as features, and use the goals column as target.
    – Alex
    Nov 25, 2017 at 7:29

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