3

I have a data frame in the format

              value
2000-01-01    1
2000-03-01    2
2000-06-01    15
2000-09-01    3
2000-12-01    7
2001-01-01    1
2001-03-01    3
2001-06-01    8
2001-09-01    5
2001-12-01    3
2002-01-01    1
2002-03-01    1
2002-06-01    8
2002-09-01    5
2002-12-01    19

(index is datetime) and I need to plot all results year over year to compare the results each 3 months (The data can be monthly, too), plus the average of all years.

I can easily plot they separately, but because of the index, it will shift the plots according with the index:

fig, axes = plt.subplots()
df['2000'].plot(ax=axes, label='2000')
df['2001'].plot(ax=axes, label='2001')
df['2002'].plot(ax=axes, label='2002')
axes.plot(df["2000":'2002'].groupby(df["2000":'2002'].index.month).mean())

So it's not the desired result. I've seem some answers here, but you have to concat, create a multiindex and plot. If one of the data frames has NaNs or missing values, it can be very cumbersome. Is there a pandas way to do it?

10

Is this what you want? You can add means after transformation.

df = pd.DataFrame({'value': [1, 2, 15, 3, 7, 1, 3, 8, 5, 3, 1, 1, 8, 5, 19]},
              index=pd.DatetimeIndex(['2000-01-01', '2000-03-01', '2000-06-01', '2000-09-01',
                                      '2000-12-01', '2001-01-01', '2001-03-01', '2001-06-01',
                                      '2001-09-01', '2001-12-01', '2002-01-01', '2002-03-01',
                                      '2002-06-01', '2002-09-01', '2002-12-01']))


pv = pd.pivot_table(df, index=df.index.month, columns=df.index.year,
                    values='value', aggfunc='sum')
pv
#     2000  2001  2002
# 1      1     1     1
# 3      2     3     1
# 6     15     8     8
# 9      3     5     5
# 12     7     3    19

pv.plot()

enter image description here

  • Truly awesome..just what i was looking for. – ihightower Jun 19 '17 at 14:00
1

One possibility is to use the 'day of the year' as x-axis. Using the x kwarg to override the index of the dataframe as x-axis:

fig, axes = plt.subplots()
df['2000'].plot(ax=axes, label='2000', x=df['2000'].index.dayofyear)
df['2001'].plot(ax=axes, label='2001', x=df['2001'].index.dayofyear)

Alternatively, you can also add this as a column, and then refer to the column name.

If it are monthly data, then you an of course use the month attribute of the index as well.

The disadvantage of the above approach is that you don't have the nice datetime formatting of the x-axis.

  • With a dayofyear-to-calendardate function (there might be one already) you could relabel all the x-ticks pretty straightforwardly. – cphlewis May 21 '15 at 18:05
  • Thanks! @cphlewis, do you have an example for this transformation? – Ivan May 22 '15 at 12:02
  • This doesn't work if the data subset encompass more than one year, like the output of a regression. – Ivan May 22 '15 at 19:10

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.