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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Can rpart be applied on mixed data set in R?

I have a dataset with both categorical and numeric attributes. Also, 17% of the data contains missing values. I want to apply decision trees on it. Can rpart function from rpart library in R be ...
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35 views

Balanced Random Forest in R

Hi I am developing a fraud prediction model. Because this is a highly unbalanced classification problem I have chosen to try to resolve it by Random Forests. Inspired by this article ...
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8 views

Decision Tree - arriving at leaf nodes

While creating a decision tree is there a recommended guideline to arrive at leaf node? I mean what is the optimum depth at which a leaf node can exist for us to say that our Decision Tree is sound / ...
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23 views

Feedback: Visualization for Apache Spark Decision Trees

One of the issues I've run into with Apache Spark, is visualizing Decision Trees. I can produce a tree using DecisionTree.trainClassifier. and I can get some rudimentary output using : ...
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1answer
36 views

Using GridSearchCV with AdaBoost and DecisionTreeClassifier

I am attempting to tune an AdaBoost Classifier ("ABT") using a DecisionTreeClassifier ("DTC") as the base_estimator. I would like to tune both ABT and DTC parameters simultaneously, but am not sure ...
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7 views

Decision-Making App

I'm still new to Python and am trying to build a piece of software in Python to output a solution. I have 3 levels, lets call them x, y and z. They have 5 (x1 - x5), 6 (y1 - y6) and 7 (z1 - z7) ...
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48 views

Extracting contents from decision tree J48

I have the following decision tree (created by JWEKA package - by the command J48(NSP~., data=training) ): [[1]] J48 pruned tree ...
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1answer
21 views

Decision tree for continues target variable

I am trying to build a decision tree in which I have mixed independent variables and continuous dependent variable in r.which decision tree can I apply? I don't want to use CART as I want more than 2 ...
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21 views

Decision tree using MNIST dataset

I am working on image recognition (MNIST dataset). I want to implement this by using decision tree(in both classification and regression). I have searched many resources but couldn't find any relevant ...
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2answers
77 views

Spark Multiclass Classification Example

Do you guys know where can I find examples of Multiclass classification in Spark, I spent a lo of time searching in books and in the web, and so far I just know that it Is possible since the latest ...
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24 views

What is the right strategy to set up decisionTree for fraud detection?

The data sets are online transactions. For each one, we label it as "fraud" or "good". This is a binary classification problem. With decisionTree, we can identify those combined conditions that are ...
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1answer
52 views

How to get pos/neg instance counts for all nodes of a scikit-learn decision tree?

I've trained a sklearn decision tree. from sklearn.tree import DecisionTreeClassifier c=DecisionTreeClassifier(class_weight="auto") c.fit([[0,0], [0,1], [1,1], ],[0,1,0]) Now ...
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Building decision trees on MLlib 1.1.0 gets stuck

I am using MLlib 1.1.0 and cannot update to a latter version. The input RDD is consisted if 775946 rows, 845372 columns and has the following form: res19: ...
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24 views

CART with Ordinal Response Variable using rpartScore Stuck

I'm trying to fit a decision tree over some data which has ~40K rows and ~200 features. The response variable, y, is ordinal and takes values {1,2,3} or {1,2,3,4} depending on the problem definition. ...
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1answer
39 views

issue in analysis using decision tree algorithm in Spark and Python

I am doing a churn analysis for telecom industry and I have a sample dataset. I have written this code below where I am using decision tree algorithm in Spark through python. In the dataset I have ...
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15 views

Java heap space while building a DecisionTree in Apache Spark

I am trying to build a DecisionTree in Apache Spark as follows: val dtModel = DecisionTree.train(data , Algo.Classification , Entropy , maxTreeDepth) Where data RDD is a sparse dataset of 775946 ...
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2answers
28 views

as_formula specifier for sklearn.tree.decisiontreeclassifier in Python?

I was curious if there is an as_formula specifier (like in statsmodels) for sklearn.tree.decisiontreeclassifier in Python, or some way to hack one in. Currently, I must use clf = ...
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33 views

Aggregating labels in GradientBoostingRegression

I am trying to understand Scikit-Learn's Gradient Boosting Regression algorithm. I followed their source code and have a good understanding of their iterative construction of trees based on a chosen ...
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2answers
51 views

How to perform regression analysis in Spark MLlib for churn determination in telecom industry?

I am working on churn prediction(whether a customer move to another company) in telecom industry using decision tree(supervised learning). I have a dataset with following structure(csv data): number ...
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35 views

How do I visualise / plot a decision tree in Apache Spark (pyspark 1.4.1)?

I am using Apache Spark Mllib 1.4.1 (pyspark, the python implementation of Spark) to generate a decision tree based on LabeledPoint data I have. The tree generates correctly and I can print it to the ...
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22 views

How to fit d3.js tree on a page

var svg = d3.select("#body").append("svg").attr("width", screen.width).attr("height", screen.height) .call(zm = d3.behavior.zoom().scaleExtent([-10, 3]).on("zoom", redraw)).append("g") ...
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31 views

Sample Size of Random Sampling for Bad and Good Samples

I have a very large data set now. The response variable is binary 1/0. The bad population size is a very small portion of the entire data set. The good population size is 8,000,000. The bad population ...
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10 views

Simple decision tree constructors/exporters

I have a two part question: 1.) Are there any GUI tools for constructing simple decision trees, which can then export those trees into code-usable format (csv or some other format). They have to be ...
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39 views

Error when using Decision Trees in OpenCV 3.0.0-rc1

I am doing some machine learning in OpenCV and i'm using Decision Trees. I am currently using OpenCV 3.0.0-rc1. Whenever i attempt to train Decision Trees with my training data and labels, i get ...
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11 views

Alternative decision tree frameworks

I am to make a decision tree, to a wordpress site, but all the available plugins are not what I am looking for. Does anybody have suggestions to any frameworks that might help me in making a decision ...
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31 views

d3.js: Sizing decision tree nodes according to the frequency with which they occur

I'm building a decision tree using d3. It's going well but I'm currently having some trouble trying to size lines through the decision tree differently according to the frequency they occur. I'm ...
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17 views

adding constraints for decision tree classifier in sci-kit learn

I want to use sci-kit learn to create a decision tree classifier that takes a large number of parameters as a vector and creates a decision tree that predicts one of them but in such a way that i can ...
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30 views

Analysis of decision tree in sorting algorithms

In a decision tree of height h in a sorting algorithm with n elements: We have something like this: n! <= 2^h Hence h>=log(n!) I know that n^n is greater than n!, but here we are talking about ...
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28 views

Can someone explain to me the process of variance reduction when constructing decision trees.

So I'm constructing a regression tree and I need the greedy attribute selection to be based on the value. Information gain isn't an ideal choice in this case. So i read about variance reduction a bit ...
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1answer
59 views

in R: Error in is.data.frame(data) : object '' not found, C5.0 plot

This question is similar to some other questions on Stackoverflow (here, here and here), but different enough so that I cannot extrapolate those answers to my case. I have a function in which I fit a ...
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2answers
65 views

Convert Decision Table To Decision Tree

How to convert or visualize decision table to decision tree graph, is there an algorithm to solve it, or a software to visualize it? For example, I want to visualize my decision table below: ...
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51 views

d3.js: Horizontally center a <g> element with an unknown size within it's parent <svg> element

I'm creating a decision tree in d3.js and I'm having trouble centering it's g element within the parent svg element. The g element's width is unknown. How would I center the g element horizontally? ...
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41 views

Do I need to I save intermediate subsets of data while building decision tree on spark recursively?

I am building a Decision Tree on Scala/Spark (on a 50 node cluster). Since my dataset is somewhat big (~ 2TB), I want to parallelise it. My code looks like this def buildTree(data: ...
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19 views

mathematical function generation using a GUI

I would like to find a mathematical representation of a function by shaping it manually using a GUI. There is an actual software which performs it which is Logical Decisions. I want to use these ...
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12 views

Why are the cp values in plotcp() chart modified from the original table?

What are the cp values on the rpart plotcp() chart? I would expect these values to match the cp column in printcp(), but instead the following scale is calculated (from the plotcp code): p.rpart ...
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1answer
120 views

Solving GridWorld using Q-Learning and function approximation

I'm studying the simple GridWorld (3x4, as described in Russell & Norvig Ch. 21.2) problem; I've solved it using Q-Learning and a QTable, and now I'd like to use a function approximator instead of ...
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10 views

continuous information gain, feature selection, decision tree

-Using threshold(sort on each feature and calculate IG on each point whose next point has a different label with it) -Using split value who measures how many different values this feature has to ...
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1answer
38 views

Machine Learning Algorithm Suggestion?

I'm novice in ML. I've crunch time and in need to choose the algorithm to complete my following task: Traveler, is visiting my website. I make them fill the form and have all the necessary signal ...
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20 views

What string format does these lines of codes process?

Below is partial codes from shark lib for importing data of specified format from file with data organized in according manner,however,I couldn't find its specification of data format of input file ...
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1answer
54 views

Gibberish Output in RPart plot in R

I am trying to run a Decision Tree using RPart in R, on a data set with 26 variables to classify an outcome as 0 or 1. The model has a fair accuracy of 81% and when I go ahead and plot the tree, I get ...
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1answer
46 views

Why am I getting a negative information gain?

[SOLVED] My mistake was that I did not realise that entropy is 0 if all are of one type. Thus if all are positive, entropy is 0 and if all are negative it is zero as well. Entropy will be 1 if equal ...
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1answer
21 views

increment a counter under certain condition (ex: only if user didn't input wrong answer)

Right now, the code in this jsfiddle produces math questions and when user enters the right answer, the correct counter goes up. When the user enters the wrong answer the wrong counter goes up. I ...
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1answer
33 views

Python Decision Trees - Creating a graphical representation of a decision tree which includes variable names

I'm doing some work using Decision Trees on Python, using scikit learn. The classifier itself works absolutely fine, however when I create a graphical representation of this, instead of displaying the ...
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84 views

How to make Decision Tree rules more understandable?

I'd like to extract useful rules from Decision Trees/Random Forest in order to develop a more applicable way to handle the rules and predictions. So I need an application which makes the rules more ...
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79 views

Decision tree completely different between rpart and party package

I want to compare CART and CHAID algorithm, I choose rpart (cart algorithm) and party (chaid algorithm) to see the difference between them. My data is about blood pressure : The party function ...
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42 views

Random Forest Bootstrapping Option

Is there any open source implementation of random forest in C++ or Matlab that allows multiple dataset bootstrapping (second figure) instead of random sampling from only one dataset? (I have done my ...
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15 views

nltk.DecisionTreeClassifier.train doesn't work

I am attempting to run the following code which was provided as an example in the following book chapter: http://www.nltk.org/book/ch06.html [see 1.4 Part-of-Speech Tagging] import nltk from ...
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1answer
54 views

Multiclass classification with Random Forest in Apache Spark

The Apache Spark's documentation (1.4.0) promises that Random Forest (the same promise is for decision trees) can be extended to multiclass classification setting. However, I can't find any way to ...
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1answer
48 views

How to plot a decision boundary of random forect model

I have ## Classification: library("randomForest") data=iris data<-data[data$Species!="setosa",] data$Species<-factor(as.character(data$Species)) iris.rf <- randomForest(Species ~ ...
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1answer
40 views

Python, PyDot and DecisionTree

I'm trying to visualize my DecisionTree, but getting the error The code is: X = [i[1:] for i in dataset]#attribute y = [i[0] for i in dataset] clf = tree.DecisionTreeClassifier() dot_data = ...