Questions tagged [decision-tree]

A decision tree is a decision support tool that uses a tree-like graph or model of decisions and their possible consequences, including chance event outcomes, resource costs, and utility. It is one way to display an algorithm.

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Rpart R Decision Tree Score

In Python using SkLearn, you could use the following to create and receive a score on a Decision Tree: tr = tree.DecisionTreeClassifier(random_state=rseed, min_samples_split=2, ccp_alpha=0.005) ...
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Confusion about computing entropy/Gini-index

So I built the following decision tree: I want to compute the entropy and Gini-index of the first split. As far as I can tell, there's no easy way to get this from the decision tree itself (correct ...
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Value Error: y contains previously unseen labels:

I've used Decision Tree Classifier and I want to enter my input as a string rather than giving an integer value, but it gives me error like: Traceback (most recent call last): File "D:/backup ...
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Combining Random Forest from 2 different data sets: “Error: X has 3 features, but DecisionTreeClassifier is expecting 4 features as input.”

I'm trying to train Random Forest on two data sets, that have same and different variables. Then I get the decision trees that match the variables of one data set and want to include them into the ...
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2answers
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'factors with the same levels' in Confusion Matrix

I'm trying to make a decision tree but this error comes up when I make a confusion matrix in the last line : Error : `data` and `reference` should be factors with the same levels Here's my code: ...
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21 views

'Can't subset columns that don't exist' for decision trees

Hello, I'm coding a decision tree in R, and there is this error when I run my code : Error : Can't subset columns that don't exist. x Columns Member, Normal, Normal, Member, Normal, etc. don't exist. ...
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30 views

Error in Displaying Decision Tree in Jupyter Notebook

My Code : from IPython.display import Image from sklearn.externals.six import StringIO import pydotplus dot_data = StringIO() tree.export_graphviz(clf, out_file=dot_data, ...
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Python- display Gini impurity next to prediction and search for single/multiple strings from multiple columns - DecisionTreeClassifier?

Summary: Question 1: How to print Gini Impurity along with predicted target value? Question 2: How to search for single or multiple strings from multiple columns while performing Decision tree ...
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Entropy and Decision Trees

Suppose I have a table of customer information with attributes such as customer ID, name, date of birth, nationality, income, etc. Each customer in the table has a unique customer ID. I know that the ...
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9 views

How to use a cross entropy loss function in sklearn Gradient Boosting Classifier

Is there any way how I can use a cross entropy loss function for my Gradient Boosting Classifier model? It seems like it's not supported but are there any work arounds? Thanks in advance for any ...
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What makes Naive Bayes a better classifier for SPAM filtering/sentiment analysis rather than Decision Trees?

I am using the same exact data set Data set is split into 80 training/ 20 testing Multinomial-NB accuracy: 80% nb = MultinomialNB() DT accuracy: 70% dtc = DecisionTreeClassifier(criterion='...
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D3 Decsion Tree not loading properly

I am following this tutorial and ran into a two problems. The first one being, if I want to add more data in the JSON which extends the decision tree. All the values get squashed together and text ...
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Naive Bayes, Single Decision Tree

Can parameters learned from Naive Bayes can be used to compare results of a single decision tree? How to interpret the question?
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Error in fitting decision tree - Input contains NaN

This question has three-part. I can solve the first part, and I am stuck on the second part of this question. dataset link (ClaMP_Raw-5184.csv) #1- Create a decision tree classifier with atleast 700 ...
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23 views

multi-class multi-output regression using sci-kit learn

I am attempting to use sci-kit learn to develop a Machine Learning program which predicts 9 outputs from 5 inputs but am having trouble. I have acquired 20,000 instances of the 5 inputs with ...
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Theoretical Question on Machine Learning & Features Correlated to Predictor Variable [closed]

I have a theoretical question about creating an artificial feature based off of a binary classification label, and then adding it into my feature set to run my analysis. First, let me show you what I ...
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After I modify manually the Decision Tree, I would like to re calculate the splitting metric (Gini or entropy) and samples [closed]

After I build fully the decision tree, I am modifying manually the features and the thresholds of the parent nodes. For example, If the root has a splitting feature and threshold x1>0.5, I change ...
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Convert object feature into float

I'm trying to run a DecisionTreeClassifier on the Kaggle titanic database. (https://www.kaggle.com/rahulsah06/titanic?select=train.csv) This is my code: from sklearn.ensemble import ...
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18 views

Information Gain in Gini Impurity?

I have a little confusion in entropy and Gini impurity in the decision tree. Suppose we have a problem and we are trying to get the best root node in the decision tree. So as we know that have two ...
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29 views

How to retrieve the full branch path leading to each leaf node of a sklearn Decision Tree?

I have this decision tree, which I would like to extract every branch from it. The image is a portion of the tree, since the original tree is much bigger but it doesn't fit well on a single image. I'...
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21 views

How to graphically print a custom Binary-Tree in Python [closed]

I have written a code that builds the decision tree from scratch. Below is the structure of my Node class class Node: def __init__(self, parent, impurity): self.parent = parent self....
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Calculating the hypothesis space bias ratio

Info: x is the amount of inputs. y is the amount of different values a single input can get. For every input, the amount of different values it can get is the same (y). Formulate the hypothesis ...
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1answer
25 views

Type error during training of Decision Tree model in Python?

I have code and error like below, where is the mistake ? What can I do? when i use this code for other model everything was good: X_DT = data_modelling.loc[:, data.columns != "wine_type"] ...
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11 views

mse and value information in plot_tree from sklearn.tree

I don't know what means the mse and value numbers that appear in splits that aren't a final leaf of the tree. For example in this case: What does it mean that in the first split we have mse = 0.154 ...
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20 views

The prp() function from rpart in R only plots a single leaf node. Why?

I am learning how to code in R for machine learning. I am using rpart to do the heavy lifting. However, when I go to plot my decision tree, only a leaf node 'yes' is plotted. I've created the decision ...
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Cross-Validation Classsification tree

Given sample of customers of a bank that reflects the characteristics of the clients and whether the bank continues to work with them or not (churn). The sample concerns 10,000 customers, while the ...
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25 views

How can I understand an rpart plot without any splits?

I got some figures after I did decision tree model using part library. This figures shows fundamental function of part library. In these figures, I understand all excepts fourth kind of figure. This ...
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1answer
40 views

Branching in Pandas with multiple conditions

Basic decision-making logic I managed to complete but, ironically, struggling with something very basic. 80% of cases my code is catching but asking help with the remaining 20%. Not even sure if this ...
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1answer
32 views

Grid Search to find the best parameters for decision tree classification

I have a dataset, whose Target variable is Target. I splitted the dataset into the Training set and Test set and I applied the decision tree classification: library(rpart) classifier = rpart(formula = ...
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Using Weka to Create a Decision Tree

I'm reading the Book Jason Bell - Machine Learning - Hands-On for Developers and Technical Professionals. EAN 9781119642251 Verlag John Wiley & Sons Mr. Bell has Examples in the Book which the ...
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Manually categorize vs Decision Tree categorize in Classification

encountering a problem when doing a classification problem in Kaggle competition. If I am trying to categorize numeric variables or categorical variables into other categories manually(from plotting ...
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GridSearch for Decisiontree - Score gets worse

I want to optimize my hyperparameter with GridSearch. After I optimize my paramaters for the Decisiontreeclassififer, my score drops significant. Notes:My dataset contains 3333 rows and its Imbalanced ...
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How to select the best splitting feature in a regression tree (with continuous values)

Within the framework of the ID3 algorithm and discrete decision trees, I know that we can use information gain to determine the best splitting feature. Is there a similar approach to choosing the best ...
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15 views

Calculating accuracy for gini index?

I'm building a decision tree from scratch without the use of the sklibrary. The current method I've used to split the sample is the K-fold method. I would like to switch from the K-fold method to the ...
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is it possible to compute weight of evidence when dependent variable is multiclass?

I have a data set with many continuous features and a multi-class dependent variable. Is there a way that I can classify my features with weight of evidence so I could use them in a decision tree?
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can not drawing decision tree with tree.export_text(clf)

i wanna visualize my Decision Tree with the below code: from sklearn.tree import export_graphviz from sklearn.externals.six import StringIO from IPython.display import Image import pydotplus ...
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How to get TP, TN,FP and FN of K-fold Pipeline in python

I tried this code and it works fine. # define dataset X, y = make_classification(n_samples=1000, n_features=10, n_informative=5, n_redundant=5, random_state=1) # create pipeline rfe = RFECV(estimator=...
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1answer
29 views

clustering a panel with many features

I have a panel of 70,000 firms and 200 features for 10 years (unbalanced). There is possibility of correlations among the features I may end up considering a few of them. Is there a way to cluster ...
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1answer
21 views

How to create a new data file from an existing dataset to load into Rattle?

My goal is to create a decision tree model in Rattle for a school project. I've been able to determine the variables that I would need for my research question and created a new dataset from the ...
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1answer
37 views

numpy delete is converting float values into string

I'm writing a decision tree algorithm in python for class for both continuous and categorical values and I'm having problems updating the database after choosing the best attribute. I wrote functions ...
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37 views

Error while using Graphviz, it is giving that TypeError: can only concatenate str (not “numpy.int32”) to str

import graphviz dot_data = tree.export_graphviz(clf_gini, out_file=None, feature_names=X_train.columns, class_names=y_train, ...
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LightGBM: Does it make a difference in performance if all the 'bool' features are converted to a 'category' data type?

By performance I mean a log-loss or accuracy. I have a data set with > 500k observations and about 50 features. 60% of them are marked as bool and the rest are categorical features with more than 2 ...
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1answer
33 views

R: (Selectively) Trimming the Results of a Loop

I am using the R programming language. I am learning how to iteratively loop a procedure (e.g. generate some random data and fit different decision trees). In a previous question (R: Saving the ...
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1answer
26 views

Defining data in classification trees: ordinal vs nominal

My question is, when building a decision tree in sklearn, if I have a categorical variable, is there a problem if I manually input the values of the variable as numbers? (assuming the dataframe is ...
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1answer
104 views

R: Multiclass Matrices

I am working with the R programming language. I am trying to learn how to make a "confusion matrix" for multiclass variables (e.g. How to construct the confusion matrix for a multi class ...
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1answer
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The target average value in Decision Trees is calculated using mean or median?

What measure of average is considered for calculating the target average value in Decision Trees? Is it mean or median? Also, if it is mean, then, why is median not considered since it is a better ...
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100 views

R Language: Storing Results of a Loop into a Table

I am using the R programming language. I am learning about how to loop a procedure and store the results into a table. For this example, I first generated some data: #load libraries library(caret) ...
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1answer
47 views

How to get indexes of items greater or less than each item in a NumPy array without using a loop?

I am writing a Decision Tree algorithm from scratch, right now I'm trying to split the data into groups where each group contains values that are greater or equal or less than each value in a NumPy ...
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1answer
36 views

R: Disabling Scientific Notation

I am using the R programming language. On some bigger data, I tried the following code (make a decision tree): #load library library(rpart) #generate data a = rnorm(100, 7000000, 10) ...
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30 views

Is there a way to plot the decision tree/visualize the decision tree from pmml file

need it in python for a xgboost model that is saved as pmml

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