# How extraction decision rules of random forest in python?

I am extracting decision rules from random forest, and I have read reference link :

how extraction decision rules of random forest in python

this code output is :

``````TREE: 0
0 NODE: if feature[33] < 2.5 then next=1 else next=4
1 NODE: if feature[38] < 0.5 then next=2 else next=3
2 LEAF: return class=2
3 LEAF: return class=9
4 NODE: if feature[50] < 8.5 then next=5 else next=6
5 LEAF: return class=4
6 LEAF: return class=0
...
``````

but it is not a ideal output. It is not rules, just print trees.

ideal output is :

``````IF weight>80 AND weight<150 AND height<180 THEN figure=fat
``````

I don't know how to generate ideal output. Looking forward to your help!

Here's the solution according to your requirement. This will give you the decision rules used by each base learner(i.e value used in n_estimator in sklearn's RandomForestClassifier will be no of DecisionTree used.)

``````from sklearn import metrics, datasets, ensemble
from sklearn.tree import _tree

#Decision Rules to code utility
def dtree_to_code(tree, feature_names, tree_idx):
"""
Decision tree rules in the form of Code.
"""
tree_ = tree.tree_
feature_name = [
feature_names[i] if i != _tree.TREE_UNDEFINED else "undefined!"
for i in tree_.feature
]
print('def tree_{1}({0}):'.format(", ".join(feature_names),tree_idx))

def recurse(node, depth):
indent = "  " * depth
if tree_.feature[node] != _tree.TREE_UNDEFINED:
name = feature_name[node]
threshold = tree_.threshold[node]
print ('{0}if {1} <= {2}:'.format(indent, name, threshold))
recurse(tree_.children_left[node], depth + 1)
print ('{0}else:  # if {1} > {2}'.format(indent, name, threshold))
recurse(tree_.children_right[node], depth + 1)
else:
print ('{0}return {1}'.format(indent, tree_.value[node]))
recurse(0, 1)
def rf_to_code(rf,feature_names):
"""
Conversion of Random forest Decision rules to code.
"""
for base_learner_id, base_learner in enumerate(rf.estimators_):
dtree_to_code(tree = base_learner,feature_names=feature_names,tree_idx=base_learner_id)
``````

I got the decision rules code from here How to extract the decision rules from scikit-learn decision-tree??

``````#clf : RandomForestClassifier(n_estimator=100)
#df :  Iris Dataframe

rf_to_code(rf=clf,feature_names=df.columns)
``````

If everything goes well expected Output :

``````def tree_0(sepal length, sepal width, petal length, petal width, species):
if sepal length <= 5.549999952316284:
if petal length <= 2.350000023841858:
return [[40.  0.  0.]]
else:  # if petal length > 2.350000023841858
return [[0. 5. 0.]]
else:  # if sepal length > 5.549999952316284
if petal length <= 4.75:
if petal width <= 0.7000000029802322:
return [[2. 0. 0.]]
else:  # if petal width > 0.7000000029802322
return [[ 0. 22.  0.]]
else:  # if petal length > 4.75
if sepal width <= 3.049999952316284:
if petal length <= 5.1499998569488525:
if sepal length <= 5.950000047683716:
return [[0. 0. 6.]]
else:  # if sepal length > 5.950000047683716
if petal width <= 1.75:
return [[0. 3. 0.]]
else:  # if petal width > 1.75
return [[0. 0. 1.]]
else:  # if petal length > 5.1499998569488525
return [[ 0.  0. 15.]]
else:  # if sepal width > 3.049999952316284
return [[ 0.  0. 11.]]
def tree_1(sepal length, sepal width, petal length, petal width, species):
if petal length <= 2.350000023841858:
return [[39.  0.  0.]]
else:  # if petal length > 2.350000023841858
if petal length <= 4.950000047683716:
if petal length <= 4.799999952316284:
return [[ 0. 29.  0.]]
else:  # if petal length > 4.799999952316284
if sepal width <= 2.9499999284744263:
if petal width <= 1.75:
return [[0. 1. 0.]]
else:  # if petal width > 1.75
return [[0. 0. 2.]]
else:  # if sepal width > 2.9499999284744263
return [[0. 3. 0.]]
else:  # if petal length > 4.950000047683716
return [[ 0.  0. 31.]]
......
def tree_99(sepal length, sepal width, petal length, petal width, species):
if sepal length <= 5.549999952316284:
if petal width <= 0.75:
return [[28.  0.  0.]]
else:  # if petal width > 0.75
return [[0. 4. 0.]]
else:  # if sepal length > 5.549999952316284
if petal width <= 1.699999988079071:
if petal length <= 4.950000047683716:
if petal width <= 0.7000000029802322:
return [[3. 0. 0.]]
else:  # if petal width > 0.7000000029802322
return [[ 0. 42.  0.]]
else:  # if petal length > 4.950000047683716
if sepal length <= 6.049999952316284:
if sepal width <= 2.450000047683716:
return [[0. 0. 2.]]
else:  # if sepal width > 2.450000047683716
return [[0. 1. 0.]]
else:  # if sepal length > 6.049999952316284
return [[0. 0. 3.]]
else:  # if petal width > 1.699999988079071
return [[ 0.  0. 22.]]
``````

Since n_estimators = 100 you'll get a total of 100 such functions.

• Is there any way to recreate the RFC from extracted rules? May 21, 2020 at 14:51
• Is this Py2.x syntax? Jan 15, 2021 at 17:36

Based on another answer... cross compatibile and only uses one variable X.

``````from sklearn import metrics, datasets, ensemble
from sklearn.tree import _tree

#Decision Rules to code utility
def dtree_to_code(fout,tree, variables, feature_names, tree_idx):
"""
Decision tree rules in the form of Code.
"""
f = fout
tree_ = tree.tree_
feature_name = [
variables[i] if i != _tree.TREE_UNDEFINED else "undefined!"
for i in tree_.feature
]
if tree_idx<=0:
f.write('def predict(X):\n\tret = 0\n')

def recurse(node, depth):
indent = "\t" * depth
if tree_.feature[node] != _tree.TREE_UNDEFINED:
variable = variables[node]
name = feature_names[node]
threshold = tree_.threshold[node]
f.write('%sif %s <= %s: # if %s <= %s\n'%(indent, variable, threshold, name, threshold))
recurse(tree_.children_left[node], depth + 1)
f.write ('%selse:  # if %s > %s\n'%(indent, name, threshold))
recurse(tree_.children_right[node], depth + 1)
else:
yhat = np.argmax(tree_.value[node][0])
if yhat!=0:
f.write("%sret += %s\n"%(indent, yhat))
else:
f.write("%spass\n"%(indent))
recurse(0, 1)
def rf_to_code(f,rf,variables,feature_names):
"""
Conversion of Random forest Decision rules to code.
"""
for base_learner_id, base_learner in enumerate(rf.estimators_):
dtree_to_code(f, tree=base_learner, variables=variables, feature_names=feature_names, tree_idx=base_learner_id)
f.write('\treturn ret/%s\n'%(base_learner_id+1))

with open('_model.py', 'w') as f:
f.write('''
from numba import jit,njit
@njit\n''')
labels = ['w_%s'%word for word in d_q2i.keys()]
variables = ['X[%s]'%i for i,word in enumerate(d_q2i.keys())]
rf_to_code(f,estimator,variables,labels)
``````

Output looks like this. X is 1d vector to represent a single instance's features.

``````from numba import jit,njit
@njit
def predict(X):
ret = 0
if X[0] <= 0.5: # if w_pizza <= 0.5
if X[1] <= 0.5: # if w_mexico <= 0.5
if X[2] <= 0.5: # if w_reusable <= 0.5
ret += 1
else:  # if w_reusable > 0.5
pass
else:  # if w_mexico > 0.5
ret += 1
else:  # if w_pizza > 0.5
pass
if X[0] <= 0.5: # if w_pizza <= 0.5
if X[1] <= 0.5: # if w_mexico <= 0.5
if X[2] <= 0.5: # if w_reusable <= 0.5
ret += 1
else:  # if w_reusable > 0.5
pass
else:  # if w_mexico > 0.5
pass
else:  # if w_pizza > 0.5
ret += 1
if X[0] <= 0.5: # if w_pizza <= 0.5
if X[1] <= 0.5: # if w_mexico <= 0.5
if X[2] <= 0.5: # if w_reusable <= 0.5
ret += 1
else:  # if w_reusable > 0.5
ret += 1
else:  # if w_mexico > 0.5
ret += 1
else:  # if w_pizza > 0.5
pass
if X[0] <= 0.5: # if w_pizza <= 0.5
if X[1] <= 0.5: # if w_mexico <= 0.5
if X[2] <= 0.5: # if w_reusable <= 0.5
ret += 1
else:  # if w_reusable > 0.5
ret += 1
else:  # if w_mexico > 0.5
pass
else:  # if w_pizza > 0.5
ret += 1
if X[0] <= 0.5: # if w_pizza <= 0.5
if X[1] <= 0.5: # if w_mexico <= 0.5
if X[2] <= 0.5: # if w_reusable <= 0.5
ret += 1
else:  # if w_reusable > 0.5
pass
else:  # if w_mexico > 0.5
pass
else:  # if w_pizza > 0.5
pass
if X[0] <= 0.5: # if w_pizza <= 0.5
if X[1] <= 0.5: # if w_mexico <= 0.5
if X[2] <= 0.5: # if w_reusable <= 0.5
ret += 1
else:  # if w_reusable > 0.5
pass
else:  # if w_mexico > 0.5
ret += 1
else:  # if w_pizza > 0.5
ret += 1
if X[0] <= 0.5: # if w_pizza <= 0.5
if X[1] <= 0.5: # if w_mexico <= 0.5
if X[2] <= 0.5: # if w_reusable <= 0.5
ret += 1
else:  # if w_reusable > 0.5
pass
else:  # if w_mexico > 0.5
pass
else:  # if w_pizza > 0.5
ret += 1
if X[0] <= 0.5: # if w_pizza <= 0.5
if X[1] <= 0.5: # if w_mexico <= 0.5
if X[2] <= 0.5: # if w_reusable <= 0.5
ret += 1
else:  # if w_reusable > 0.5
pass
else:  # if w_mexico > 0.5
pass
else:  # if w_pizza > 0.5
pass
if X[0] <= 0.5: # if w_pizza <= 0.5
if X[1] <= 0.5: # if w_mexico <= 0.5
if X[2] <= 0.5: # if w_reusable <= 0.5
ret += 1
else:  # if w_reusable > 0.5
pass
else:  # if w_mexico > 0.5
pass
else:  # if w_pizza > 0.5
pass
if X[0] <= 0.5: # if w_pizza <= 0.5
if X[1] <= 0.5: # if w_mexico <= 0.5
if X[2] <= 0.5: # if w_reusable <= 0.5
ret += 1
else:  # if w_reusable > 0.5
pass
else:  # if w_mexico > 0.5
pass
else:  # if w_pizza > 0.5
pass
return ret/10
``````