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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asRules(tree) R save rules

I do have next trouble: I created a decision tree with R based on rpart library, and since I have a broad list of variables, rules are and endeless list. By using asRules(tree) from rattle library, ...
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Looking for python library to create decision trees which includes conjunction and disjunction

I just read through a paper which contains very nice decision tree plots. What kind of libraries do you know to create such kind (or quite familiar) of decision tree plots in python. In my case, it ...
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26 views

R programmin help, trying to create a decision tree(now fixed typo) [on hold]

This is the R command I used to create a decision tree, k <- C5.0(data1[1:16000,-32],as.factor(data2{1:16000,32]) but this output I get for error: Error: unexpected '{' in "k <- C5.0(...
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1answer
27 views

c50 code called exit with value 1 on Mushroom Data set [duplicate]

I'm getting error while working on C5.0 with Mushroom Data set. I've factored the target class and there are no missing values. f <-file("https://archive.ics.uci.edu/ml/machine-learning-databases/...
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1answer
21 views

how to set the number of features to use in random selection sklearn

I am using sklearn RandomForest Classifier/Bag classifier for learning and I am not getting the expected results when compared to Java/Weka Machine Learning library. In Weka, I am learning the model ...
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32 views

I am trying to convert a RDD into a dense vector in apache spark

Python 2.6.6 Spark Version 1.3.0 Loading the csv file into a RDD : Welcome to ____ __ / __/__ ___ _____/ /__ _\ \/ _ \/ _ `/ __/ '_/ /__ / .__/\_,_/_/ /_/\_\ ...
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33 views

What is the best way to build a decision tree in java

Hi I want to write a decision tree based on Jira ticket summary which I will classify using naive bayes. The decision tree will take input from a MYSQL db.Based on the input I want to build a decision ...
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6 views

Multiple categories with in a variable in decision tree

This is more of a conceptual question than implementation on decision trees. I've a feature vector say V1,V2,V3,target_variable If the vector is a,b,c,true then Using normal decision trees we can ...
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33 views

Variable importance in decision tree of caret package in R

I am using the Caret package in R for training the tree based models for a classification problem. I have been able to get the trees and the accuracy etc but I also want the importance of the ...
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1answer
20 views

How to display contingency table on a new window in R [closed]

I want to display the contingency table relative to decision tree regression in a new window. when I execute this line : table(filteredDataFinal$rate, predArbreDecision) The contingency table is ...
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1answer
96 views

Extract All Possible Paths from Expression-Tree and evaluate them to hold TRUE

This is a follow-up question of my previous one: Better Class-Structure for logical expression parsing and evaluation Brief introduction: rules as strings combinations of logical-and, logical-or, ...
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27 views

How to create a decision table for the following code

I am attempting to create a decision table for a Triangle Classification Program, code shown below. UPDATE def tritype(a, b, c): if ((a ^ 2 + b ^ 2) == c^2): return "Right Triangle" ...
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Decision Tree on matlab

I applied decision tree on PCA and LDA and LBP individually, I have 3 Decision tree now. I want to multiply these trees to get one.(I want to get random forest from these trees) any Idea how to do ...
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17 views

MLLib Scala ArrayIndexOutOfBoundException when MaxBins >= maximum num of categories

I am learning how to use MLLib and I encountered an ArrayOutOfBoundException when maxBins >= maximum number of categories for a feature. I use a dataset (on animal shelter) from kaggle.com with the ...
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25 views

Converting Non-Binary expression to boolean logic

DISCLAIMER: The question title may not be perfect or may be slightly deviated. I am pretty sure I am not aware of some major keywords So high level decision trees generally have conditional operators ...
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2answers
21 views

Saving a MLLib decision tree model

I have a decision tree in MLLib scala: val tree = model.stages(1).asInstanceOf[DecisionTreeClassificationModel] I would like to save this model to disk or to hdfs. When I type tree.save(...) it ...
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26 views

Response and predictor must be vectors of the same length

I'm using pROC curve in order to compare the performance of models. I have plotted four SVM models. Now when I plot Decision tree model I get the following error: Error in roc.default(x, predictor, ....
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41 views

How to build dynamic formula for decision tree in r

I am using Shiny dashboard and I am talking input from Shiny dashboard. The formula for decision tree is like this treemodel <- tree(Churn.~.-State-Phone , raw_data), where . refers to all the ...
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1answer
23 views

Getting the distribution of values at the leaf node for a DecisionTreeRegressor in scikit-learn

By default, a scikit-learn DecisionTreeRegressor returns the mean of all target values from the training set in a given leaf node. However, I am interested in getting back the list of target values ...
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17 views

Decision tree continous atributes

I am makind datamining model by using decision tree. And if I have binary attribute like MALE and FEMALE I know I will have two branches from the Gender node when spliting. But what if I have ...
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25 views

Using decision tree output from the Weka J48 Java API

Hey I'm using the Java API from Weka for the J48 decision tree algorithm. It creates a decision tree without any problem, but now I have the problem how I can use the tree in my source code. As far as ...
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1answer
54 views

plot a decision tree with python

Hi I've found this code and I'm trying to plot a decision tree, but at the very end this "visualize_tree(test,columns)" give me an error: this is the code from __future__ import print_function ...
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1answer
28 views

Displaying the decision tree in Spark MLlib with the correct feature names

I build a decision tree in Spark MLLib val dt = new DecisionTreeClassifier().setLabelCol("indexedLabel").setFeaturesCol("indexedFeatures").setImpurity(impurity).setMaxBins(maxBins).setMaxDepth(...
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13 views

Get decision tree nodes cardinals

I am using mllib to compute a decision tree model for classification. When I analyse the result model, I cannot find the information of how many "elements" are in each nodes. It is possible to find ...
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21 views

Node labels are not in sequence in trees using fancyRpartPlot

I applied the decision tress algorithm to famous breast cancer data set from UCI after removing 16 records with missing rows. The tree I obtained is given below. As it can be seen that the small ...
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2answers
33 views

Passing categorical data to Sklearn Decision Tree

There are several posts about how to encode categorical data to Sklearn Decission trees, but from Sklearn documentation, we got these Some advantages of decision trees are: (...) Able ...
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How can I extract to see each result of Classify Cross-Validation in weka?

I use weka for classify tree.J48 and select 10 Folds Cross-validation,so the final reult is show calculate average result of 10folds,Can I extract to see result each folds?
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31 views

What does the “numDecimalPlaces” in J48 classifier do in WEKA?

Can anyone explain the purpose of "numDecimalPlaces" parameter in J48 WEKA classifier ? Its default value is 2 and its description is given as follows: The number of decimal places to be used for ...
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21 views

Print Decision Tree Rules

Suppose I have a simple tree with form like this : 3 --- 6 --- REJECT --- ACCEPT --- 2 --- ACCEPT --- REJECT Now I know it doesn't seem like a tree, but that's not a problem. So, ...
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1answer
38 views

How to specify number of branch in decision tree in R

I'am using decision tree to predict future behavior of my dataset.It contains decision variable called "rate" That I want to predict.I have many characteristics that influences on the rate column but ...
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1answer
26 views

Java DOM parser cast error

Ok, so this is a simple decision tree, breadth and depth first search program. In my print tree method, im using the same element casting process as in my search methods, i get no errors when i run ...
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1answer
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decision tree and maximum depth

I am new to decision tree model and have a seemingly stupid question. Say I have a decision of which max_depth is set to be 20. Does it mean that the tree has to be 20 layers deep or any integer ...
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21 views

Decision Tree in android application based on openCV library

I want to develop a real-time application based on decision tree. I use android and openCV. OpenCV provides CvDTree class, but I didn't know how to use it and I didn't found any example. Can you help ...
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21 views

Calculating the entropy of a specific attribute?

This is super simple but I'm learning about decision trees and the ID3 algorithm. I found a website that's very helpful and I was following everything about entropy and information gain until I got ...
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1answer
21 views

Decision Tree clarification

I just want to ask/clarify if decision trees are essentially binary trees where each node is a boolean, and it continues down until a desired result is reached?
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1answer
58 views

Saving a decision tree model for later application in Julia

I have trained a pruned decision tree model in Julia using the DecisionTree module. I now want to save this model for use on other data sets later. I have tried converting the model to a data array ...
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Does presorting slow down training of large decision trees?

In Scikit-Learn's documentation for the DecisionTreeClassifier class, the presort hyperparameter is described like this: presort : bool, optional (default=False) Whether to presort the data ...
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56 views

Selecting CP value for decision tree pruning using rpart

I understand that the common practice to select CP value is by choosing the lowest level with the minimum xerror value. However, in my following case, using cp <- fit$cptable[which.min(fit$cptable[,...
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1answer
26 views

How to calculate credit score on the basis of credit history

I have a dataset of credit history of certain population i need to calculate the credit score for each one of them. What I'm planning is to calculate a probability on the basis of credit history ...
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69 views

Python - ValueError: could not convert string to float:

I am trying to make a simple decision tree , but I keep on getting the same ValueError and none of the similar threats was of any help. None of my variables are string but still I am getting an error ...
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47 views

Equivalent of mllib.DecisionTreeModel.toDebugString() in ml.DecisionTreeClassificationModel

As the question says, is there any equivalent of Spark org.apache.spark.mllib.tree.model.DecisionTreeClassificationModel.toDebugString() in org.apache.spark.ml.classification....
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1answer
44 views

Statistics for Spark mllib DecisionTree

After learning a mllib DecisionTree model (http://spark.apache.org/docs/latest/mllib-decision-tree.html) how do I calculate node statistics, such as support (how many samples match this subtree) and ...
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35 views

How do I get a detailed decision tree when 7 of my 13 independent variables are categorical in nature?

I'm analyzing persistency using decision trees with 13 independent variables (7 of which are categorical) but I'm getting a tree considering only one numeric variable). My code is: fmla=STATUS~. tm=...
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34 views

Implementing Monte Carlo Tree Search - Game State nodes vs. Possible Move nodes

I am trying to implement the Monte Carlo search tree method on a rather complicated game, but there is something I don't understand about it (maybe this applies to other search algorithms, I'm not ...
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1answer
26 views

How to optimize parameters of CART by using the genetic algorithm with R

In order to train the support vector machine, we must determine various parameters. For example, there are parameters such as cp and minsplit. I am using cross validatio right now , to find these ...
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33 views

C5.0 decision tree - input string 1 is invalid in this locale

I have read the questions related before, but still can not solve my problem, my training data does not have missing values, so I don't know where it was wrong. Another problem is the tree size is 1, ...
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46 views

Intuition on KL-divergence and feature selection

I'm having a bit of a hard time understanding KL-divergence and how I can use it for feature selection. So let's say I have a set of observations (e.g. zeroes and ones) and a 2 features generated for ...
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16 views

Regression Trees to Predict Continous Variables in Spark

I want to use PySpark regression trees to predict a continuous variable instead of classifying data. EG at each terminal node use the mean of the remaining training data. And the labels are [0, ...
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1answer
17 views

Scikit-learn random forest tree - how to interpret 'samples' and 'values'?

I've made a random forest with the scikit learn package (python). However, when showing the trees, there seems to be something wrong. The total samples per node is not the sum of the values. Also, ...
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45 views

decision tree in R error:fit is not a tree,just a root

good afternoon! I have problem with a decisional trees. f11<-as.factor(Z24train$f1) fit_f1 <- rpart(f11~TSU+TSL+TW+TP,data = Z24train,method="class") plot(fit_f1, uniform=TRUE, main="...