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,
  min_samples = 3,
  n_jobs = -1)
clusters = outlier_detection.fit_predict(data)

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

enter image description here


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

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