I am passing a dictionary to the `map`

function to recode values in the column of a Pandas dataframe. However, I noticed that if there is a value in the original series that is not explicitly in the dictionary, it gets recoded to `NaN`

. Here is a simple example:

Typing...

```
s = pd.Series(['one','two','three','four'])
```

...creates the series

```
0 one
1 two
2 three
3 four
dtype: object
```

But applying the map...

```
recodes = {'one':'A', 'two':'B', 'three':'C'}
s.map(recodes)
```

...returns the series

```
0 A
1 B
2 C
3 NaN
dtype: object
```

I would prefer that if any element in series `s`

is not in the `recodes`

dictionary, it remains unchanged. That is, I would prefer to return the series below (with the original `four`

instead of `NaN`

).

```
0 A
1 B
2 C
3 four
dtype: object
```

Is there an easy way to do this, for example an option to pass to the `map`

function? The challenge I am having is that I can't always anticipate all possible values that will be in the series I'm recoding - the data will be updated in the future and new values could appear.

Thanks!

`four`

. – zondo Feb 23 '16 at 22:52