I am trying to find all the values from
numpy record array
no1 which are closest to values in rec array
no2 (record arrays have different number of values)
no1 has fields:
('electrode', 'i4'), ('no_of_interest_time', 'i4'), ('time', 'f8')
time is time of specific event and
no_of_interest_time indexes events that should be analyzed separately. Each of the events is given such a number and multiple events may share the same number.
electrode holds the index of an electrode in which event was recorded (location).
no2 has the same fields but holds different events.
For each event in recarray
no2, I want to find closest event from recarray
no1 of the same type (
no_of_interest_time) and location (
The way I can solve it using for loops would look like this, but I am looking for much more elegant solution:
import numpy as np i_recarr1 = np.argsort(recarray1, order=['electrode', 'no_of_interest_time', 'time']) recarr1_sorted = recarray1[i_recarr1] i_recarr2 = np.argsort(recarray2, order=['electrode', 'no_of_interest_time', 'time']) recarr2_sorted = recarray2[i_recarr2] closest_events = recarr2_sorted.copy() for electr in np.unique(recarr2_sorted['electrode']): # use only this electrode recarr1_record = recarr1_sorted[recarr1_sorted['electrode'] == electr] recarr1_record = recarr2_sorted[recarr2_sorted['electrode'] == electr] for interest in np.unique(recarr2_record['no_of_interest_time']): # use only this time of interest recarr1_interest = recarr1_sorted[recarr1_record['no_of_interest_time'] == interest] recarr2_interest = recarr1_sorted[recarr1_record['no_of_interest_time'] == interest] for idx, event2 in np.enumerate(recarr2_interest['time']): # loop through every event to find neighbours selected_idx = (np.abs(recarr1_interest['time']-event2)).argmin() closest_events[(closest_events['electrode'] == electr) & (closest_events['no_of_interest_time']) == interest][idx] = recarr1_interest['time'][selected_idx] inverse_i = np.argsort(i_recarr2) closest_events[inverse_i]
I will appreciate any advice. Thanks in advance!!