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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ID3 Decision Tree Clarification

I am currently working on implementing an ID3 algorithm. I've been going through the classic play tennis example, however I cannot seem to understand why the attribute TEMPERATURE is left out of the ...
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23 views

Show values at each node level of scikit-learn decision-tree

I'm trying to extract node sample values at each node level. However, when I check, only leaf value are accurate adn node values doesn't make any sense. dot_data = StringIO() iris = load_iris() clf ...
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30 views

why am i getting this error? Error: object of type 'closure' is not subsettable

tumor.rpart1=rpart(formula,data=tumor,method="class",x=FALSE,y=TRUE,control=rpart.control(minsplit=6)) Error: object of type 'closure' is not subsettable
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25 views

How to know the size (Number of nodes) of the tree built using Scikit-learn?

decReg = DecisionTreeRegressor() clf = decReg.fit(X, Y) Intuitively anyone would expect either decReg or calf should have a function which will return the number of nodes in the tree grown. But, I am ...
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123 views
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How do I create a gain chart in R for a decision tree model?

I have created a decision tree model in R. The target variable is Salary, where we are trying to predict if the salary of a person is above or below 50k based on the other input variables ...
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16 views

adaboosted decision trees node split criteria

I'm implementing adaboost and uses C4.5 as the weak learner. Now I use sampling to simulate the weighting. But I want to know how to take into account the weights when we decide the best split. ...
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19 views

How to create a Decision Tree?

So I have this problem with 12 customers purchasing 5 different items. 0 meaning they did not buy that product and 1 means they did purchase that item. So I'm having trouble on how to start with ...
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17 views

Incremental Adding of New Categories

I was wondering if there is any algorithm for incrementally adding new classes to existing classifier system. For e.g. if I have trained a system with 50 categories, and I want to add another 10 ...
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19 views

Logistic regression coefficients in weka LMT tree

How can I obtain the coefficients of the regression function in the LMT leave nodes? Thanks!
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25 views

Univariate Decision Tree Splits

I am looking to to class a continuous variable for use in logistic regression (binary outcome) and trying to find a simple way to find the best cut points. In the past I have manually looked at CART ...
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7 views

Fail: unknown method name `evaluateModel' in RJB code

I am making an web application that will train a J48 model and use test data to evaluate it. The training module works fine. The testing module however has issues. I keep getting the error : Fail: ...
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58 views

Function returning to previous without being recursive (c)

I'm creating a decision making program, but I want some of the functions that I call to be able to return to the previous function. How do I do that without using indirect recursion? An example of ...
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38 views

Decision Tree algorithms in R packages

Is there any way to specify the algorithm used in any of the R packages for decision tree formation? I know that CART and C5.0 models are available. I want to find out about other decision tree ...
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30 views

Finding Importance Value from Spark's Decision Tree using MLlib

We are running Spark 1.0 or 1.1 for Decision Tree using MLlib. When I run the sample SCALA code with sample data, it worked with no error, but I could not find the feature importance from the result. ...
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14 views

Decision nodes and chance nodes definition in decision tree

Could someone please provide a definition of decision nodes, change nodes and end nodes. I have view the decision tree interpretation on wikipedia and haven't found the clear definition about the ...
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42 views

Python - scikit-learn: how to specify a validation subset in decision and regression trees?

I am trying to build decision trees and regression trees with Python. I am using sci-kit, but am open to alternatives. What I don't understand about this library is whether a training and a ...
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14 views

Adding weights to weka J48

I'm wondering how I would add weights to the training set for weka J48 classification. Specifically, I currently have output = commands.getstatusoutput("java -cp %s weka.classifiers.trees.J48 -c 1 ...
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40 views

Why is Decision tree not working as expected in WEKA?

I am following a book "Machine Learning: Hands-On for Developers and Technical Professionals" to create decision tree with WEKA. Though I followed the same process as shown in the book, I am not ...
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26 views

how to make the branches in a decision tree wider with more data

So I am currently using R part and i have a simple decision tree working. For example if I wanted a tree on the iris.csv dataset it would look like : mydata<- read.csv("~/iris.csv") ...
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27 views

Using cross-validation to find the right value of k for the k-nearest-neighbor classifier

I am working on a UCI data set about wine quality. I have applied multiple classifiers and k-nearest neighbor is one of them. I was wondering if there is a way to find the exact value of k for nearest ...
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Error in trafo(data = data, numeric_trafo = numeric_trafo, factor_trafo = factor_trafo [closed]

My code: #Read file mydata<-read.csv("C:/Users/DINESHKUMAR/Desktop/Sample.csv",header=T) #Decision tree with party library(party) datactree <- ...
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26 views

Determine the attribute that influences the outcome most

I have a dataset in .csv format as shown: NRC_CLASS,L1_MARKS_FINAL,L2_MARKS_FINAL,L3_MARKS_FINAL,S1_MARKS_FINAL,S2_MARKS_FINAL,S3_MARKS_FINAL, FAIL,7,12,12,24,4,30, PASS,49,36,46,51,31,56, ...
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28 views

Extract probabilities from decision trees

I need to extract the path and probability of each leaf in a decision tree. Here's a quick sample to work with: data(iris) model<-rpart(Species~., data=iris) summary(model) I'd like to be ...
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21 views

Labeling and formatting issues for Decision Trees in R

I am trying to do a tree for a large dataset that I have. I can run the tree fine and receive no error. However, when I look at the labels for the tree they are very messy and not legible. ...
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65 views

building classification tree having categorical variables using rpart

I have a data set with 14 features and few of them are as below, where sex and marital status are categorical variables. height,sex,maritalStatus,age,edu,homeType SEX 1. Male 2. ...
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60 views

How to handle the Nominal Data by Weka J48

When I ran J48 of weka with binary split option, such decision tree was built. http://www.fastpic.jp/viewer.php?file=2693704973.jpg Input explanation variable is 1 nominal data which was made by ...
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28 views

Labeling issues for rpart in decision tree in R

I am trying to do a tree for a large dataset that I have. I can run the tree fine and receive no error. However, when I look at the labels for the tree they are very messy and not legible. ...
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24 views

what is the meaning of the results saved in fast vector from Evaluation.predictions() Weka-api java

When i run the j-48 decision tree classifier in my data set, i evaluate it with fold cross validation and took the result into a fast vector by predictions.appendElements(validation.predictions()); ...
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98 views

Python decision tree classification of complex objects

I have a collection of clothing / accessory products (represented by a Python object) with various attributes. These products are generated by a combination of querying an external API and scraping ...
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32 views

Weka J-48 decision Tree not completing

I am using a multi-attribute dataset for classification purpose. I am using WEKA API on java.The dataset have both categorical and numerical variables. When i run the dataset on weka-GUI i get a ...
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1answer
30 views

How to find out the size of a decision tree in python?

I'm doing some feature induction with decision trees and would like to know the size of the tree in terms of number of nodes. How do I do that in python? Using the stock example from sklearn's ...
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28 views

SAS EM decision tree bin vs leaf

I recently did a decision tree using SAS Enterprise Miner. In the results section, I can use the scoring ranking table option to get a table that has the following columns: Target Variable, ...
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79 views

Infinite Recursion in Recursive Tree Builder

I've got an interesting problem with a recursive python function of mine. I must be missing some subtle base case or something! The objective of the code you'll see below is to build a decision tree ...
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How to improve predictor importance in decision tree ensemble (using TreeBagger class in Matlab)

I'm trying to train a classifier (specifically, a decision forest) using the Matlab 'TreeBagger' class. I notice from the online documentation for TreeBagger, that there are a couple of ...
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28 views

Error while building Classification Tree in python

This is a code which i found in scikit learn website from sklearn.datasets import load_iris from sklearn import tree iris = load_iris() clf = tree.DecisionTreeClassifier() clf = clf.fit(iris.data, ...
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27 views

Why the decision tree shows a correct classificationthe while some instances are being misclassified

I am using WEKA, 10-fold cross validation or split 66% to create training and testing sets .. I used c4.5 (J48) as a classifier .. I get in my results that some instances are misclassified, but, when ...
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Use boosting for decision trees and importance of concept hierarchies

I have two questions. 1. To improve the performance of classifiers, most of the times we use bagging or boosting methods.Can we use boosting to improve the accuracy of decision tree classifier? 2. We ...
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52 views

Unable to create a decision tree in R

I am not able to understand the below error when I am trying to construct a decision tree. What are factor predictors? Does the number of levels of the factor predictors refer to the number of ...
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16 views

Binary Search on data distributed by an histogram, to solve optimization with a decision solver

Imagine I need to solve TSP. I have a solver that solves "is there a route less than k?" and it returns one of such routes (not necessarily the optimal, let's assume there is no way to know if what ...
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70 views

How to identify sequences within each leaf from a regression tree?

Using the biofam dataset library(TraMineR) data(biofam) lab <- c("P","L","M","LM","C","LC","LMC","D") biofam.seq <- seqdef(biofam[,10:25], states=lab) head(biofam.seq) Sequence ...
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155 views

relocation truncated to fit: R_X86_64_PC32 against undefined symbol `cfree'

I am trying to compile C4.5 algorithm in Cygwin for Win64. I have error as besttree.o:besttree.c:(.text+0x240): undefined reference to `cfree' besttree.o:besttree.c:(.text+0x240): relocation ...
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86 views

mapping scikit-learn DecisionTreeClassifier.tree_.value to predicted class

I am using a scikit-learn DecissionTreeClassifier on a 3 class dataset. After I fit the classifier I access all leaf nodes on the tree_ attribute in order to get the amount of instances that end up in ...
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45 views

save a decision tree model python

I'm building a decision tree using scikit learn in Python. I've trained the model on a particular dataset and now I want to save this decision tree so that it can be used later (on a new dataset). ...
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1answer
64 views

Weka Decision tree Java to lists

I want to make a decision tree and break it to lists (name , sign , val). I made the tree with this code : //Get File BufferedReader reader = new BufferedReader(new FileReader(PATH + ...
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60 views

Trying to make a decision tree

Name Hair Eyes Shirt Glasses Smiling Hat Alice BROWN BLUE GREEN YES YES NO Bob BROWN BROWN GREEN YES NO YES Dave BROWN BROWN GREEN NO YES ...
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193 views

weka decision tree java

I want to make a list of all the predictions. I have this code : //Get File BufferedReader reader = new BufferedReader(new FileReader(PATH + "TempArffFile.arff")); //Get the data ...
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DecisionTree Selector in AngularJS

I am trying to find a smart way to create a multi-level decision tree selector in angularjs. So, basically what I am looking for is: If I select Maingroup "GroupA" from a dropdown list, than I should ...
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Auto-collapse all childs before open another child(Mbostock D3 Collapsible decision tree)

I'm creating a web app with the collapsible decision tree and i need to prevent the user from opening more than one 'last tree child', so if a last child is open, and the user tries to open another ...
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29 views

How to use all features in rpart?

I'm using rpart for decision tree classification. I have a dataframe with around 4000 features (columns). I want to use all features in rpart for my model. How can I do that? Basically rpart will ask ...
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83 views

What is an example of using Adaboost (Adaptive Boosting) approach with Decision Trees

Is there any good tutorial that explains how to weight the samples during successive iterations of constructing the decision trees for a sample training set? I want to specifically how to the weights ...