With long-tidy data such such as columns and item, are there some time-series caveats that should be kept in mind? Its not entirely clear to me why pivot vs set_index works or does not? How to deal with varying size indexes, such as time ranges, with different subjects, and if I am even doing the time formating correctly.
Also, I am trying to use seaborn, and can get neither Series nor DataFrame objects to create simple plots with.
What Id like to do is have a generic time_range, set at the average length, and then for each item, create a plot for each time_point calculates the average. (This is just for presentation/visualization of the data; not analytic.)
Ive written some lambdas, to create grouped_items column and index column, but for the plotting I see there is tsplot or FacetGrid, so would like to know if I can use those to do this:
Here is the type of dataframe.
index subject sex item time value1
0 1 401 M 201 3217-10-30 01:27:00 -0500 55.0
1 2 411 F 21 3215-10-30 03:33:00 -0500 155.0
2 3 401 M 201 3217-10-30 05:28:00 -0500 54.0
3 4 415 F 201 3211-10-30 06:22:00 -0500 55.0
4 5 412 M 54 2975-10-30 08:29:00 -0500 12
- If I take a dataframe approach (long), I get reshaping issues, index cannot be duplicated. It looks like seaborn does a pivot under the hood which causes this issue; er but this seems pretty common. How to deal with 'long and tidy' dataframe with time series?
pt.drop_duplicates(['realtime']) pt.dropna() pt.head() sns.tsplot(pt, time='time', value='value1' ,condition='item', unit='subject', estimator=np.median)
If I try a series approach, I get
TypeError: unsupported operand type(s) for /: 'unicode' and 'int'. Just unstacking to wide format, and then copying a single column to series to plot. (the pivoted dataframe is below)
s = pt_pivot[pt_pivot.columns] s.head() sns.tsplot(s, color="husl")
Finally, i am playing with indexing and dont understand why pivot works and set_index does not in getting my data into this form.
itemid 211 455 618 646 763
2653-04-19 22:08:00 -0500 118.0 NaN NaN NaN NaN 2653-04-19 22:10:00 -0500 NaN NaN 14.0 NaN NaN 2653-04-19 22:19:00 -0500 126.0 NaN NaN NaN NaN 2653-04-19 22:32:00 -0500 124.0 NaN NaN NaN NaN 2653-04-19 22:33:00 -0500 NaN NaN NaN 99.0 NaN
any insights are most appreciated...
- ive tried playing with time formating (using lambdas), but am now just using
parse_dates=Truein the read_csv(). is this the culprit? how to best format the time when there are multiple subjects, varying time-intervals(index lengths), 'heterogeneous', etc (ie noisy).