It’s possible to use Featuretools directly on the single table with transform primitives. Supposing that you set the time_id
as the time_index
, every column will be valid for use only at that time index. The reason that might feel strange is that you have n columns occurring at m times.
By restructuring your dataset, you would be able to feed in that lag time information as well and even make some aggregations in the process. To get at that functionality, you’ll want to unpivot your data like so:
user_id time_id lag feature_1 ... feature_n
1 2017-01-05 1 2.7 9.8
1 2017-01-04 2 2.3 ... 9.1
1 2016-01-01 m 0.0 0.0
2 2017-01-05 1 18.1 ... 42.0
. . .
. . .
23 2016-01-01 m 0.0 ... 0.6
Making an entity like this (we'll call it measurements
here) lets you set a time index so that each lag has its own time. That lets you use data from that row at a time that's representative of reality.
Furthermore, you'd then be able to use normalize_entity on measurements
to make a new parent entity from the user_id
. That new entity, users
, would then be the target entity for Deep Feature Synthesis if you want to make predictions by user.