I love the decision tree visualisations available from Dtreeviz library - GitHub , and can duplicate this using
# Install libraries
!pip install dtreeviz
!apt-get install graphviz
# Sample code
from sklearn.datasets import *
from sklearn import tree
from dtreeviz.trees import *
from IPython.core.display import display, HTML
classifier = tree.DecisionTreeClassifier(max_depth=4)
cancer = load_breast_cancer()
classifier.fit(cancer.data, cancer.target)
viz = dtreeviz(classifier,
cancer.data,
cancer.target,
target_name='cancer',
feature_names=cancer.feature_names,
class_names=["malignant", "benign"],
fancy=False)
display(HTML(viz.svg()))
However, when I apply the above to a dtree I made myself, the code bombs out because my data is in a pandas DF (or a np array), not a scikit-learn bunch object.
Now, over at Sci-kit learn - How to create a Bunch object they tell me pretty sternly not to try to create a bunch object; but I also do not have the skills to convert my DF or NP array to something that the viz function, above, will accept.
We can suppose my DF has nine features and a target, called 'Feature01', 'Feature02', etc and 'Target01'.
This I would normally split thusly
FeatDF = FullDF.drop( columns = ["Target01"])
LabelDF = FullDF["Target01"]
and then set on my merry way to assign a classifier, or if for ML, create a test/train split.
None of this is helpful when calling dtreeviz
- which is expecting things like "feature_names" (which I take is something included in the "bunch" object). And since I can't convert my DF to a bunch, I'm very much stuck. Oh bring your wisdom, please.
Update: I guess any simple DF would illustrate my conundrum. We could just swing with
import pandas as pd
Things = {'Feature01': [3,4,5,0],
'Feature02': [4,5,6,0],
'Feature03': [1,2,3,8],
'Target01': ['Red','Blue','Teal','Red']}
DF = pd.DataFrame(Things,
columns= ['Feature01', 'Feature02',
'Feature02', 'Target01'])
as an example DF. Now, would I then go
DataNP = DF.to_numpy()
classifier.fit(DF.data, DF.target)
feature_names = ['Feature01', 'Feature02', 'Feature03']
#..and what if I have 50 features...
viz = dtreeviz(classifier,
DF.data,
DF.target,
target_name='Target01',
feature_names=feature_names,
class_names=["Red", "Blue", "Teal"],
fancy=False)
or is this daft? Thanks for the guidance so far!