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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How can I take factors used in a pruned tree and apply these to a random forest model?

The problem I am having is that I have created some decision trees and used the minerror and 1-se rule to prune these trees. From a pruned tree I want to use the variables that were used in a random ...
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37 views

Best pratices to select features in large dataset [on hold]

I have a large dataset with 276 features and 150 000 rows. Some of the features are categorical and several possible values or class (between 2 and 30 class). To predict a target variable (Y), I have ...
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21 views

Not able to interpret decision tree when using class_weights

I'm working with an imbalanced dataset. I'm using a decision tree (scikit-learn) to build a model. For explaining my problem I've taken iris dataset. When I'm setting class_weight=None, I understood ...
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1answer
24 views

XGBoost decision tree selection

I have a question regarding which decision tree should I choose from XGBoost. I will use the following code as an example. #import packages import xgboost as xgb import matplotlib.pyplot as plt # ...
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1answer
23 views

Decision Tree status column & related numerical value column

I have a data including two columns where one is categorically shows the status of the feature & the other one numerically shows the related value. Just like below: I want to run a decision tree ...
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11 views

In matlab, CompactTreeBagger. What do the DeltaCriterionDecisionSplit and NumPredictorSplit methods do?

When I try to use CompactTreeBagger in Matlab, I do not know what the DeltaCriterionDecisionSplit and NumPredictorSplit methods do. I read the offical documentation https://ww2.mathworks.cn/help/stats/...
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2answers
39 views

Decision Tree Learning

I want to implement the decision-tree learning alogorithm. I am pretty new to coding so I know it's not the best code, but I just want it to work. Unfortunately i get the error: e2 = b(pk2/(pk2 + nk2)...
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JuPyter: Creating Decision Tree, TypeError: '<' not supported between instances of 'str' and 'float''

I'm creating decision tree with JuPyter notebook and when I started creating the decision and putting the features and target class the jupyter give me this error that is found in this cell for the ...
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17 views

Get Subtrees from big Decision Trees in R

I have a Decision tree which is quite big, and thus is not readable when plotted. Is there a way to plot he subtrees from within the tree by using R's Function plot()
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48 views

What is the purpose of using a decision tree? [migrated]

I don't understand what is the purpose of the decision tree? The way I see it is, it is a series of if-else. Why don't I just use if-else instead of using a decision tree? It is because it decreases ...
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How to deploy a python trained model in a Java application

I have trained and built a decision tree classifier in python, I want to use this model in an application which is being built in Java. How do I do that? Regards, Anand.M
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Interpret graphviz output of Multi classification using Decision Tree

I am trying to match the Tree output with the ConfusionMatrix, but not able to get the flow of how DT classifies multiclass.. The information in the Decision Tree looks cryptic. Attached is both the ...
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40 views

Using a regression tree to split a population into groups with similar characteristics

I am trying to find a smart way to split and group 30.0000+ households into bins of minimum 100 households each based on different characteristics such as primary heating type, square meters, ...
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22 views

Import CART Tree from Earth-Engine into R

Classifier.explain() describes the results of a trained classifier (only works with CART) within the Earth-Engine. The result can be printed and is a JSON file which is a R-compatible tree. [EE ...
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1answer
21 views

Is there a way to make export_graphviz fill nodes of classification trees as if it were a regression tree?

I'm working with binary classification on a very imbalanced dataset and when I export my decision tree to graphviz using export_graphviz and setting filled to True all the nodes of tree are filled ...
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1answer
40 views

Extracting rules to predict child nodes or probability scores in a Decision Tree [closed]

I am relatively new to Python implementation of Decision Tree. I am trying to extract rules to predict only child nodes and I need it to be able to predict probability scores (not just final ...
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1answer
32 views

AdaBoost.M1 and DecisionTreeClassifier in Python

I'm trying to implement the following pseudocode in python with sklearn DecisionTreeClassifier with depth = 1. Pseudocode for AdaBoost However, I'm having trouble with the output (3). I have stored ...
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Decision Trees Python Classes in Terminal Nodes

I implement decision trees with python. I do cross-validation with grid-search to identify the optimal model parameters of the tree. dtc = DecisionTreeClassifier() parameter_grid = {'splitter': ['...
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Keep getting error when trying to make decision tree using rpart

Keep getting the following errors when trying to use rpart function: Object 'p' not found incorrect number of dimensions. I cannot see where it is my error is coming from. g <- runif(nrow(...
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34 views

How to extract decision rules to define final/terminal nodes in decision tree classifier and print code that would use numpy arrays

I am trying to extract decision rules to predict terminal nodes and to print code that would use pandas numpy arrays to predict the terminal node numbers. I found a solution that can pull the rules ...
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20 views

NotFittedError: This Pipeline instance is not fitted yet. Call 'fit' with appropriate arguments before using this method

I'm classifying gender based on first names with decision tree classifier. The DataSet contains three columns name, gender, race. The feature set was 'first_letter','first_two_letters','...
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17 views

Parallelism with tensorflow

I am trying to parallelize the growth of trees in random forest with my own implementation of a decision tree but parallelizing through tensorflow by building a parallel graph. Does tf.map_fn ...
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1answer
35 views

Can graphviz display one-hot decoded categorical data?

I am trying to have Graphviz display my oneHotEncoded categorical data but I can't get it to work. Here is my X data with theses columns: Category, Size, Type, Rating, Genre, Number of versions ...
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Inputting a decision tree into a function which returns a plot and some values using R and the Rpart library

I am trying to analyse decision trees using ROC curves and calculating their AUC's. I have created some code which can calculate this for a tree. However, i need to make this a function so i can do ...
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37 views

Custom Loss Function: Length of values does not match length of index

For a gradient boosted decision tree, I have implemented a custom loss function which looks like this (and works): def softmax(mat): res = np.exp(mat) res = np.multiply(res, 1/np.sum(res, ...
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Grid Search for Decision Tree: list indices must be integers or slices, not tuple

I want to do a grid search to get the optimal depth of a decision tree. I have a classification with 3 classes. This is my code: import numpy as np from sklearn.metrics import roc_auc_score from ...
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Plot sklearn RandomForestRegressor as a single tree

I know that it is possible to show individual decision trees from a Random Forest using export_graphviz, but is it possible to display the entire forest the same way? Because, as I understand it, the ...
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What is relation between R-squared and numerical data in case of Decision Tree?

Two questions here: 1) Why it's suggested to go with entropy and information gain in case of numerical data, while using Decision Tree algorithm ? 2)How R-squared comes into the picture in case of ...
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rpart.plot with Many Categorical Values, or Alternative for Plotting Rpart trees?

I have a decision tree produced with rpart and using a data set that includes categorical variables with many levels (80 or so, in my case). After plotting using rpart.plot I am encountering a ...
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1answer
30 views

Training and test accuracy plot shows strange behavior

I'm trying to build decision tree classifier for binary classification problem. My dataset was unbalanced (1=173 and 0= 354) and I used the resample approach to increase minority class and make them ...
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1answer
22 views

Does integer encoding of strings and using this as an input to decision tree (sklearn) makes the splitting attributes discrete or continuous?

I have to use Decision Tree classifier to classify certain data. However, the attribute values are strings, and as I found here: https://datascience.stackexchange.com/questions/5226/strings-as-...
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Decision Tree Algorithm in SAS Enterprise Miner

I am trying to construct a decision tree for a given dataset in SAS Enterprise Miner. Now, I am trying to decide on which algorithm I am using (C4.5, CART, etc.). Yet, there is no feature for doing ...
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1answer
94 views

Decision Tree not capturing the variance of the dependent variable

I am working with decision tree regressors. The number of data points are 15000, with 15 features. The problem I am facing is that even under high over-fitting conditions (I made depth = 25, min....
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22 views

decision tree rpart via caret giving ROC of 0.5

If I understand ROC correctly 0.5 is a null model with 0 predictive power. I'm using the same data to fit a logistic regression with ROC of 0.64 so I'm presuming there is some predictive ability in ...
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28 views

TypeError: a bytes-like object is required, not 'str' for Image command in Python

I'm trying to load the image of the Decision Tree in Python but I'm unable to do so. The code is: from IPython.display import Image #import pydotplus as pydot from sklearn import tree from os ...
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Classifying complex numbered data

I am using a number of classifiers, particularly J 48 and Naive Bayes, on Weka to classify complex values and magnitudes of these values saved in CSV files. I am finding it strange that while the ...
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How to see random data subset created by Matlab TreeBagger

I am using MATLAB TreeBagger to create a random forest. I use the following code to create the Forest and View Trees mytrees = TreeBagger(90, trainingDataAttributes, trainingDataClassifiers,'...
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Number of labels does not match samples on decision tree regression

Trying to run a decision tree regressor on my data, but whenever I try and run my code, I get this error ValueError: Number of labels=78177 does not match number of samples=312706 #feature ...
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What is the equivalent of 'tree.value' of a DecisionTree from sklearn in Spark ML?

Comparing the DecisionTree models from Scikit-learn and Spark ML. The following very closely match each other. The one I can't map is the value Schema for Spark ML DecisionTree data: root |-- id: ...
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1answer
35 views

R: decision tree Error in `[.data.frame`(frame, predictors) : undefined columns selected

m = matrix(rnorm(120, 100, 10), nrow = 20, ncol = 6) %>% data.frame() indx = 1:(0.8*nrow(m)) colnames(m) = c('True', 1:(ncol(m)-1)) tree(True~., data = m, subset = indx) When building the ...
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1answer
66 views

can we do multivariate regression under decision tree regression in python?

I am doing a decision tree regression in python. However the predicted target values corresponding to the test sample are coming out to be mean of the target variable in that leaf. Is there a way that ...
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1answer
35 views

combining ks.test, var.test, t.test and wilcox.test into a decision-tree like function or if else function in r

I have my data like: df1 <- read.table(text = "A1 A2 A3 A4 B1 B2 B3 B4 1 2 4 12 33 17 77 69 34 20 59 21 90 20 43 44 11 16 23 24 19 12 55 98 29 111 335 34 61 88 110 320 51 58 45 39 55 87 55 89", ...
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98 views

How to increase accuracy of decision tree classifier

How to increase accuracy of decision tree classifier? I wrote a code for decision tree with Python using sklearn. I want to check the accuracy of that code so I have split data in train and test. I ...
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2answers
88 views

Check the accuracy of decision tree classifier with Python

I wrote a function that takes dataset (excel / pandas) and some values, and then predicts outcome with decision tree classifier. I have done that with sklearn. Can you help me with this, I have looked ...
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23 views

Ways of setting up a Random Forrest in Python

What is the differences (advantages, disadvantages) between the following 3 methods? Specifically, what does the bagging classifier, max_features = 1., do? Because setting it to a float lower than 1 ...
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Implementation details for Prequential AUC Drift Detection for evolving data streams

I was reading the following paper below and I have some confusion on how to implement the algorithm in the paper. Prequential AUC for Classifier Evaluation and Drift Detection in Evolving Data ...
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how to build ID3 random forest in python

I've been playing around with scikit-learn and learned that the decision tree algorithm they use is CART for their DecisionTreeClassifier. I Now what I want to know is, how would one build an ID3 ...
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17 views

Spark ML DecisionTreeClassifier to Identify Categorical Features [duplicate]

I have 1 continuous feauture 'Tenure' and 1 categorical feature 'Nationality' in my sample. My sample observations have more than 50 different nationalities and 30 different tenures (0-30 years). In ...
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36 views

sklearn min_impurity_decrease explanation

The definition of min_impurity_decrease in sklearn is A node will be split if this split induces a decrease of the impurity greater than or equal to this value. Using the Iris dataset, and ...
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Can i put weigths on observations in a decision tree?

I would like to fit a decision tree for two different clusters. I clustered the dataset based on GMM and I would like to use the chance that an observation belongs to a certain class as the weight of ...