0

I'm working for a data which have 3 columns: type, x, y, let's say x and y are correlated and they not normalizedly distributed, I want groupby type and filter outliers or noise data points in x and y. Could someone recommend me statitics or machine learning methods to filter outliers or noise data? How can I do that in Python?

I'm considering to use DBSCAN from scikit-learn, is it appropriate method ?

Type1: type1 Type2: enter image description here Type3: enter image description here

df1 = df.loc[df['type'] == '3']

data= df1[["x", "y"]]
data.plot.scatter(x = "x", y = "y")

from sklearn.cluster import DBSCAN
outlier_detection = DBSCAN(
  eps = 0.5,
  metric="euclidean",
  min_samples = 3,
  n_jobs = -1)
clusters = outlier_detection.fit_predict(data)

from matplotlib import cm
cmap = cm.get_cmap('Accent')
data.plot.scatter(
  x = "iSearchCount",
  y = "iGuaPaiCount",
  c = clusters,
  cmap = cmap,
  colorbar = False
)

enter image description here

1

Of course you don't get good results if you don't care about the parameters. Just look at your plot. The scale is huge - your epsilon is tiny! Seems like your data may be integers, so no points except duplicates will ever have a distance of less than 0.5... Hence all data is considered noise.

Before using a method, make sure you've understood how it works and what parameters you need to set.

I'd also log transform the data first. Working with some simple thresholds may be enough. Don:t overdo things with clustering when your data is unimodal.

  • Thanks, I remove upper data with threshould quantile(0.9998), it seems log transformation or not x and y didn't change the result. – ahbon Aug 30 at 3:21
  • 1
    Obviously log does not affect the quantiles. But the plot may be more helpful. – Anony-Mousse Aug 30 at 6:23
  • Maybe i should try with log transformation and then use IQR or z score, does that make sense? – ahbon Aug 30 at 6:24
  • 1
    From the plots above, zscore most likely is better after log than before. But if you have 0 counts, you may also need to consider log1p or sqrt or box-cox. – Anony-Mousse Aug 30 at 16:01

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.