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 ?

```
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
)
```

`scipy.stats.zscore`

worked for me – political scientist Aug 29 at 10:54muchmore robust than clustering. – Anony-Mousse Aug 29 at 18:04