When I drop some variables from a DataFrame, the returned dataframe is as I expect except the index.name is removed. Why would this be?
test = pd.DataFrame([[1,2,3],[3,4,5],[5,6,7]], index=['a','b','c'], columns=['d','e','f']) test Out: second d e f first a 1 2 3 b 3 4 5 c 5 6 7 #test.index.name = first #test.columns.name=second In : test.drop(['b']) Out: second d e f a 1 2 3 c 5 6 7
After 'b' is dropped the returned dataframe (index.name) is no longer 'first' but None.
Q1. Is it because the .drop() method returns a dataframe that has a
new index object which by default would have no name?
Q2. Is there anyway to preserve the index.name during drop operations as the new index is still correctly named - it is just a subset of the original index
Expected Output would be:
Out: second d e f first a 1 2 3 c 5 6 7