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 extract classification informations from a tree object of the R package rpart?

I will use the rpart package on R to obtain a classification for my data. tree.res <- rpart(x ~ ., data, method="class", parms=list(split = "gini")) I know that I can retrieve the results of ...
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32 views

Using partition.tree in Shiny to create a scatter plot with classification lines

Using the ‘shiny’ and ‘tree’ packages in R, I am trying to create an app that allows users to upload their own data, select 2 variables and a class, and plot a scatter plot that shows these variables ...
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14 views

why does library(partykit) take indefinte time compared to library(party)? when performing classification? [on hold]

I know @Achim here has provided some clue about why library(partykit)takes little longer time than library(party). But in my case, the modelling takes 45 min with party and indefinite time with ...
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23 views

How to prepare a data for decision tree algorithm?

I have the following aggregated data: Page,UV_NOV, UV_DEC, UV_JAN --------------------------------------------------- pageA, 10000,9989,11000 pageB, 999,500,700 ... pageZ,200,50,34 What I'm trying ...
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1answer
16 views

printing decision boundary with pyplot

using pandas and sklearn to create a decision tree to learn on data where my pruning method for the tree is to retry different max depths. I believe that i have everything working however i cannot ...
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1answer
10 views

Decision tree entropy calculation target

I found several examples of two types. Single feature Given a data with only two items classes. For example only blue and yellow balls. I.e. we have only one feature in this case is color. This is ...
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38 views

Predict the future value - Random Forest [closed]

I have a dataset with 5 years transactional and demographics data. I want to predict the future value of each customer, taking into account their previous transactions and their demographics profile. ...
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1answer
30 views

Decision tree always returns perfect accuarcy

Working with a decision tree and using cross validation; I am recreating the tree n times to look for the best depth, but at every depth level (1-20) i am returning 100% accuracy despite splitting the ...
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1answer
20 views

cross validation + decision trees in sklearn

Attempting to create a decision tree with cross validation using sklearn and panads. My question is in the code below, the cross validation splits the data, which i then use for both training and ...
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1answer
38 views

How to plot an exploratory decision tree in R

Let's assume that a group of people is followed during time and at 3 time points they were asked if they would like become judge or not. During the time they will change their opinion. I would like to ...
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8 views

Possible to extract decision rule(s) for gradient boosted trees in sci-kitlearn/Rpy/mlpy

I want to train an ensemble method on decision trees. However, I want to have the target function(s)/decision rule(s) separately. I know that a gradient boosting tree are many weak tree (stumps) ...
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1answer
27 views

ValueError using sklearn and pandas for decision trees?

I'm new to scikit learn and I just saw the documentation and a couple of other stackoverflow posts to build a decision tree. I have a CSV data set with 16 attributes and 1 target label. How should I ...
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1answer
54 views

Conflicting splits in CART decision tree

I'm currently using decision trees (CART) in R with packages rpart and rattle for classification. After training my CART tree, I found that some rules conflict with each other. Consider the ...
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21 views

Using persist in Spark

Iam building a decicion tree using scala and i have this code (like pseudocode) here is the link: https://www.dropbox.com/s/q7i2f7ewgzqdswd/Captusssssre.PNG?dl=0 The program runs fine but i have a ...
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1answer
38 views

ABCMeta object argument after ** must be a mapping, not GridSearchCV

I've developed a Decision Tree with GridSearchCV. When I try to export the tree with export graphviz I get an error which I do not understand. I don't use an ABCMeta object at all. from sklearn ...
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34 views

ctree() - How to get the list of splitting conditions for each terminal node when the response variable is Categorical variable [duplicate]

For reproducing the error and what I intend to get. I have the following example. Lets say I have a datset : Iris. I am modeling a classification tree using library(party) ct <- ctree(Species ~ ., ...
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1answer
33 views

When to use regression trees/forests?

As I was looking for a fine regression algorithm for my problem. I found out one can do that with simple decision trees as well, which is usually used for classification. The output would be something ...
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1answer
37 views

There are no fitted values for the final model when using train from CARET

Here is the code: ctrl <- trainControl(method="cv",number = 5, summaryFunction=twoClassSummary, classProbs=T, savePredictions = T, verboseIter = T) ...
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2answers
43 views

How to interpret decision trees' graph results and find most informative features?

I am using sk-learn python 27 and have output some decision tree feature results. Though I am not sure how to interpret the results. At first, I thought the features are listed from the most ...
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1answer
32 views

R Weka J48 Decision Tree Cannot handle numeric class

I found this document on the web: https://www.erpublication.org/admin/vol_issue1/upload%20Image/IJETR032129.pdf There it uses on page 4 to build a decision tree with RWeka package and J48 function in ...
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17 views

How to fix Decision Tree outcome

I'm using a pandas data frame to hold my data which is built out of documents and class (binary classification problem). The way I ingest the data (first all of one class then the next) into the data ...
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19 views

sklearn - build own tree object

I like the way graphviz can display decision trees. But the tree is always built automatically. What I'd like to do is implement my own set of rules, see how it divides my data and display the result ...
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1answer
51 views

Translate Java code to C++

i have Java decision tree code to pass in C++. I don't remember well the logical inside pointers when i try to build the tree. Java code: public class Node { Node parent; Node children[]; ...
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1answer
30 views

decision trees from features of multiple datatypes

I'm trying to construct a decision tree with scikit-learn's DecisionTreeClassifier. My data has numeric features consisting of integers and float values. When constructing the decision tree, the ...
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1answer
20 views

Show the outcome of decision tree in a confusionmatrix

I trying to predict the outcome of a match. Therefore Im using the rpart algoritm on a test and training set. When im training my algoritm I do this: tree <- rpart(won ~ EXPG1 + EXPG2, ...
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Decision Tree Gini Impurity Basic Math Q

Say you have 3 classes of balls: red, green blue. The odds of any colored ball appearing are red = 4/10, blue = 3/10, green = 3/10 Misclassifying red is calculated as 4/10*(3/10 + 3/10) or the odds ...
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1answer
26 views

Decision Trees: Recommended Libraries [closed]

I want to know, if there are recommended libraries for decision trees. For me best laguages atm are Java (easiest) and PHP (long term-usefulness). I need them for a thesis at university and want to ...
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Antlr - Decision can match input such as “OTHER_CHAR {EOF, OTHER_CHAR}” using multiple alternatives: 1, 2

I write a rule for specific comments in my file. i consider as a comment : - Everything starting with 88 - Everything ending without PIC - Everything starting by * - Everything containing the "OCCURS ...
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34 views

How to combine 2 decision trees?

I need create the decision tree using CHAID algorithm by my own code, and I tried 'rpart', the tree could not be created. So I plan to combine the trees one by one, as shown in the picture.
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2answers
23 views

Import SPSS statistics data tree model into SPSS modeler?

I am trying to use SPSS Modeler to test a decision tree model built in SPSS statistics, but I can't find any straightforward way to do it (only xml export, which I cannot import later). I also tried ...
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1answer
36 views

Plotting a decision tree gives an error: dim(X) must have a positive length

I try to make a decision tree with the following dataset: RESULT EXPG_HOME R_HOME_3DAY 1 1.321 0.20 2 1.123 0.30 1 0.762 0.26 If I try this: library(rpart) tree <- ...
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2answers
34 views

how do duplicated rows effect a decision tree?

I am using Rpart{} to build a decision tree for a categorical variable and I am wondering whether I should use the full data set of just the set of unique rows.
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33 views

How to set a decision tree in Matlab

I had set classification trees in R but this time, I want to set a regression tree like in the picture, the thing is I have to do it in Matlab and it is not like the classification tree so I would ...
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1answer
23 views

How to make an arbitrary large number of variables be treated as factors

I have a large amount of variables that I must treat as categorical although they are represented numerically. For one variable I know I can use train$var1 = as.factor(train$var1) But how can I ...
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1answer
27 views

Decision tree with undefined set + output probabilities

Imagine you have type of data/columns like country, product_type, status. Where status is target/leaf node. Then you have data like 1: Germany | XBox | No Sale 2: UK | PS4 | Sale Now we'll ...
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1answer
62 views

What does `sample_weight` do to the way a `DecisionTreeClassifier` works in sklearn?

I've read from this documentation that : "Class balancing can be done by sampling an equal number of samples from each class, or preferably by normalizing the sum of the sample weights ...
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1answer
29 views

Where does the cv.tree function get the data to perform cross validation from? [closed]

The lab in chapter 8 of ISLR contains the following exercise to cross-validate a classification tree: library(tree) library(ISLR) attach(Carseats) set.seed(2) train=sample(1:nrow(Carseats), 200) ...
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1answer
18 views

Why does the input LibSVM dat format for Decision Tree in Spark MLLib look like this?

I am looking at the documentation of Decision Tree in Spark MLLib. Here is a line of code data = MLUtils.loadLibSVMFile(sc, 'data/mllib/sample_libsvm_data.txt') that loads the input data. When I ...
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46 views

Permutations and Decision Trees with R

I was wondering if there is a way to produce a decision tree that solves a permutation of selecting n objects of k classes. We have the set A={1,2,...,10}, and the subsets B={1,2,..,5}, C={6,7} and ...
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14 views

Classify according to decision tree leaves

I have performed a decision tree on a dataset. When I plot the tree evetything looks fine and I get a nice decision tree. Im looking for a way however to classify my datasets based on the leaves. So ...
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1answer
18 views

R multiway split trees using ctree {partykit}

I want to analyze my data with a conditional inference trees using the ctree function from partykit. I specifically went for this function because - if I understood correctly - it's one of the only ...
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1answer
23 views

Doubts regarding decision trees and random forest classifier (scikit)

I am a newbie to decision tree, so might be these are trivial questions. Decision Trees: As per scikit doc (http://scikit-learn.org/stable/modules/tree.html), "predict_proba" function returns the ...
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C5.0 -two of the classes in a multivariate classification are getting mis-classified

Im doing a multivariate classification using c5.0, i have boosted it 8 times. The results are good except that some of the bumps get classified as other faults and some other faults get classified as ...
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38 views

Different results for Decision Tree in Scikit Learn using same predefined folds (Solved)

Goal: I want to average results of 10-fold Stratified cross validation over multiple runs for a decision tree. Problem: I observe a strange behavior. The results for some classes are very ...
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37 views

Multidimensional explanatory variable in decision tree

Is it possible (by any available package) to build a decision tree based model with multidimensional response (/e dependent) variable in R? Let's assume we have random variable Y = [Y1, Y2, Y3] and ...
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10 views

See 5 Decision tree not diplaying?

new to See5. I entered in my .data file and .names file. I am getting a decision tree like this: http://imgur.com/SgX0wmt But I want it in the form of an actual tree, similar to this tutorial! ...
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58 views

subprocess.py, line 958, in _execute_child startupinfo WindowsError: [Error 2]

I'm testing code from http://chrisstrelioff.ws/sandbox/2015/06/08/decision_trees_in_python_with_scikit_learn_and_pandas.html in win7(64bit), anaconda(32bit) python 2.7 environment. I'm trying to ...
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1answer
60 views

Decision tree - multiple instances

Starting from these data i <- c("1","2","3","4","5","6","7","8") g <- c("man","man","woman","man","woman","man","woman","man") r <- c("100","34","22","42","62","73","8","66") o <- ...
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1answer
70 views

Feature Importance extraction of Decision Trees (scikit-learn)

I've been trying to get a grip on the importance of features used in a decision tree i've modelled. I'm interested in discovering the weight of each feature selected at the nodes as well as the term ...
2
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1answer
35 views

Can we choose what Decision Tree algorithm to use in sklearn?

My question is can we choose what Decision Tree algorithm to use in sklearn? In user guide of sklearn, it mentions optimised version of the CART algorithm is used. Can we change to other algorithms ...