On a pandas dataframe, I know I can groupby on one or more columns and then filter values that occur more/less than a given number.
But I want to do this on every column on the dataframe. I want to remove values that are too infrequent (let's say that occur less than 5% of times) or too frequent. As an example, consider a dataframe with following columns:
city of origin, city of destination, distance, type of transport (air/car/foot), time of day, price-interval.
import pandas as pd import string import numpy as np vals = [(c, np.random.choice(list(string.lowercase), 100, replace=True)) for c in 'city of origin', 'city of destination', 'distance, type of transport (air/car/foot)', 'time of day, price-interval'] df = pd.DataFrame(dict(vals)) >> df.head() city of destination city of origin distance, type of transport (air/car/foot) time of day, price-interval 0 f p a n 1 k b a f 2 q s n j 3 h c g u 4 w d m h
If this is a big dataframe, it makes sense to remove rows that have spurious items, for example, if
time of day = night occurs only 3% of the time, or if
foot mode of transport is rare, and so on.
I want to remove all such values from all columns (or a list of columns). One idea I have is to do a
value_counts on every column,
transform and add one column for each value_counts; then filter based on whether they are above or below a threshold. But I think there must be a better way to achieve this?