# about python, I can't understand the example provided in a book

I'm a new learner about python and there are some problems when I try to repeat the example provided in a guide book. This example is about recommendation algorithm. This example is trying to implement an item list which stores the users having rated the particular item. this is the codes(python 2.7)

``````def UserSimilarity(train):
#build inverse table for item_users
item_users=dict()
for u,items in train.items():
for i in items.keys():
if i not in item_users:
item_users[i]=set()

#calculate co-rated items between users
C=dict()
N=dict()
for i, users in item_users.items():
print i,users
#print N[u]
for u in users:
N[u]=N[u]+1
print N[u]
for v in users:
print C[u][v]
if u==v:
continue
C[u][v]=C[u][v]+1

#calculate finial similarity matrix W
W=dict()
for u, related_users in C.items():
for v, cuv in related_users.items():
W[u][v]=cuv/math.sqrt(N[u]*N[v])
return W
``````

ps: the data format of 'train' is a dictionary and like `{UserId1:{ItemId1:Ratings1,ItemId2,Rating2,...},...}`

The problem I met is that

``````Traceback (most recent call last):
File "D:\Users\Administrator\workspace\GroupLens\src\test3.py", line 82, in <module>
UserSimilarity(train_dic)
File "D:\Users\Administrator\workspace\GroupLens\src\test3.py", line 66, in UserSimilarity
N[u]=N[u]+1
KeyError: '3'
``````

I don't know how to improve it and hope someone would help me! Thanks a lot!!

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The error indicates that th current value of u is not present as a keyin the dictionary N, so you cannot fetch it and add one to it. Why is it not present? Impossible to say without seeing the rest of the code. –  Diego Basch Dec 10 '12 at 7:56
yeah~you are right! That's where i was wrong. Thank you for your answer, which is helpful for me! –  little jessie Dec 10 '12 at 16:55

The main issue is that you are defining a new dictionary (`N = dict()`), and then iterating through your `users`, trying to create a dictionary key based on a given user. That part is fine, but the issue arises when you do this:

``````N[u]=N[u]+1
``````

Assigning a value to the dictionary is fine, but look at the right side - you are trying to assign to `N[u]` the value of `N[u] + 1`, when `N[u]` doesn't exist yet (hence the error). I'm not 100% sure what the overall goal is (so this may be misguided), but if your aim is to increment a number based on how many times a user occurs, you could use a `defaultdict`, which is created with a type as an argument (here an `int`). This means that if the key is not found (as in your error above), the default value is based on the type you declared (here `0`):

``````In [1]: from collections import defaultdict

In [2]: N = defaultdict(int)

In [3]: users = [1, 2, 3, 2, 1, 2]

In [4]: for u in users:
...:     N[u] += 1
...:
...:

In [5]: N
Out[5]: defaultdict(<type 'int'>, {1: 2, 2: 3, 3: 1})
``````

Alternatively, you could use a normal dictionary but with the `get` method, which returns a value if it is found but returns a default if not (a default that you can specify yourself):

``````In [1]: N = dict()

In [2]: users = [1, 2, 3, 2, 1, 2]

In [3]: for u in users:
...:     N[u] = N.get(u, 0) + 1
...:
...:

In [4]: N
Out[4]: {1: 2, 2: 3, 3: 1}
``````
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Thank you so much! Yeah, the problem is that I didn't assign N[u] an initial value. Your answer is of much help, from which I learned a lot! Thanks again for your timely help! –  little jessie Dec 10 '12 at 16:53
@littlejessie No problem at all, happy it helped. Good luck with everything! –  RocketDonkey Dec 10 '12 at 17:05

Thank you so much! Yeah, the problem is that I didn't assign N[u] an initial value. Your answer is of much help, from which I learned a lot! Thanks again for your timely help! The following is the modified and successful edition~

# the modified edition

``````def UserSimilarity(train):
#build inverse table for item_users
item_users=dict()
for u,items in train.items():
for i in items.keys():
if i not in item_users:
item_users[i]=set()

#calculate co-rated items between users
C=dict()
N=dict()
for i, users in item_users.items():
for u in users:
if u in N.keys():
N[u] +=1
else:
N[u]=0

for v in users:
if u==v:
continue
elif u in C.keys():
if v in C[u].keys():
C[u][v] +=1
else:
C[u][v] =1
else:
C[u]=dict({v:1})

#calculate final similarity matrix W
W=dict()
for u, related_users in C.items():
W[u]=dict()
for v, cuv in related_users.items():
W[u][v] = cuv/math.sqrt(N[u]*N[v])
``````
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