I'm not sure if this is the right place to ask, so forgive me if this sound un-related. Here is my situation:
My dataset is continual
in time, and there are some errones data
that I need to handle. They are sudden increase in value, relative to their neighbors.
Here is a part of the dataset. As you can see, there is a sudden increase for the 4th value(28.3
). (values are in the last column)
19741212,0700,200,1,N, 4.6
19741212,0800,190,1,N, 4.6
19741212,0900,180,1,N, 5.7
19741212,1000,160,1,N, 28.3 # wrong data, need interpolate from neighbors
19741212,1100,170,1,N, 4.6
19741212,1200,200,1,N, 5.1
19741212,1300,230,1,N, 5.1
I need to identify
them, and then do interpolate
from nearby data to replace them. I'm wondering if there is any existing algorithm
for this?
If I'm going it implement a method from scratch, I wound:
- Calculate increment from near data point
- Select a proper threshold for the detecting the corrupted data
But I'm not sure if this is good enough, maybe I neglect some other part, which would result huge amount of false positives.
Addtionally, I'm using Python
and Pandas
for dealing with the data, so related resources would be great.