my question is for every step of for loop, a new dataframe will be generated. I want to concat the data frames together to have a larger one but somehow my function will only return the last step of the result rather than the merged result

```
def crossV(clf,data,n):
cvResult=pd.DataFrame()
for i in range(n+2)[2:]:
cvResult=pd.DataFrame()
tt=array(tuple(x[1:i] for x in data))
qq=array(tuple(x[0] for x in data))
recall_rate=cross_validation.cross_val_score(clf, tt, qq, cv=10,scoring='recall')*100
precision_rate=cross_validation.cross_val_score(clf, tt, qq, cv=10,scoring='precision')*100
accuracy_rate=cross_validation.cross_val_score(clf, tt, qq, cv=10,scoring='accuracy')*100
index_i=Series(np.repeat(i-1,10))
classifier_i=Series(np.repeat(str(clf)[:7],10))
recall_rate=Series(recall_rate)
precision_rate=Series(precision_rate)
accuracy_rate=Series(accuracy_rate)
rate={"classfier":classifier_i,"model":index_i,"recall":recall_rate,"precision":precision_rate,"accuracy":accuracy_rate}
result=pd.concat(rate,axis=1)
cvResult=cvResult.append(result)
return(cvResult)
```

Thanks!

`spaces`

around`=`

and after`,`

to make code more readable - see: PEP 8 -- Style Guide for Python Code – furas Jul 18 '14 at 17:19