6

I have a dataframe like the following:

    A
1   1000
2   1000
3   1001
4   1001
5   10
6   1000
7   1010
8   9
9   10
10  6
11  999
12  10110
13  10111
14  1000 

I am trying to clean my dataframe in the following way: For every row having more value than 1.5 times the previous row value or less than 0.5 times the previous row value, drop it. But If the previous row is a to-drop row, comparison must be made with the immediate previous NON-to-drop row. (For example Index 9, 10 or 13 in my dataframe) So the final dataframe should be like:

    A
1   1000
2   1000
3   1001
4   1001
6   1000
7   1010
11  999
14  1000

My dataframe is really huge so performance is appreciated.

5
  • What have you tried yourself so far to solve the problem?
    – Hoekieee
    Commented Nov 20, 2019 at 16:45
  • pct_change.between(-0.5,0.5)?
    – ansev
    Commented Nov 20, 2019 at 17:00
  • @ansev this sort of thing needs a for loop as in piRSquared's answer. Commented Nov 20, 2019 at 17:02
  • yes, it is true that you need for loop but I think we could use pct-change in a more elegant solution
    – ansev
    Commented Nov 20, 2019 at 17:04
  • I'm wondering whether one could iteratively generate a mask using vectorized operations... performance would depend on specific distribution of dropped rows, supposedly.
    – mcsoini
    Commented Nov 20, 2019 at 17:13

2 Answers 2

7

You can't get away from looping through each row

Tips
  • Avoid creating new (expensive to create) objects for each row
  • Use a memory efficient iteration

I'd use a generator

I'll pass a series to a function and yield the index values for which rows satisfy the conditions.

def f(s):
    it = s.iteritems()
    i, v = next(it)
    yield i                          # Yield the first one
    for j, x in it:
        if .5 * v <= x <= 1.5 * v:
            yield j                  # Yield the ones that satisfy
            v = x                    # Update the comparative value

df.loc[list(f(df.A))]                # Use `loc` with index values
                                     # yielded by my generator

       A
1   1000
2   1000
3   1001
4   1001
6   1000
7   1010
11   999
14  1000
1
  • 1
    should by .5 * v <= x <= 1.5 * v
    – mcsoini
    Commented Nov 20, 2019 at 16:57
1

One alternative could be to use itertools.accumulate to push forward the last valid value and then filter out the values that are different from the original, e.g:

from itertools import accumulate


def change(x, y, pct=0.5):
    if pct * x <= y <= (1 + pct) * x:
        return y
    return x

# create a mask filtering out the values that are different from the original A
mask = (df.A == list(accumulate(df.A, change)))

print(df[mask])

Output

       A
1   1000
2   1000
3   1001
4   1001
6   1000
7   1010
11   999
14  1000

Just to get an idea, see how the accumulated column (change) compares to the original side-by-side:

        A  change
1    1000    1000
2    1000    1000
3    1001    1001
4    1001    1001
5      10    1001
6    1000    1000
7    1010    1010
8       9    1010
9      10    1010
10      6    1010
11    999     999
12  10110     999
13  10111     999
14   1000    1000

Update

To make it in the function call do:

mask = (df.A == list(accumulate(df.A, lambda x, y : change(x, y, pct=0.5))))
5
  • Great!. How could I pass the 0.5 as parameter?
    – Alfonso_MA
    Commented Nov 21, 2019 at 9:17
  • @Alfonso_MA You mean a parameter to the function? Commented Nov 21, 2019 at 10:47
  • Yeah, a parameter to change function
    – Alfonso_MA
    Commented Nov 21, 2019 at 10:51
  • But i meant in the function call
    – Alfonso_MA
    Commented Nov 21, 2019 at 12:25
  • @Alfonso_MA see now Commented Nov 21, 2019 at 12:37

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