I'm working for a data which have 3 columns:
y, let's say
y are correlated and they not normalizedly distributed, I want groupby
type and filter
noise data points in
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
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 )