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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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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15 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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6 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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57 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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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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32 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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24 views

Combining results of different decision trees or build one decision tree?

Imagine you have data concerning customers, products and sales and now have to predict something. Would you join the data and build one decision tree with all of the attributes? With this approach ...
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1answer
34 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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33 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
20 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
28 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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68 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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36 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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38 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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11 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
41 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
33 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
29 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 = ...
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11 views

Can you specify a cost matrix to control false positives and negatives in MLlib decision trees?

I'm looking for a way to specify a cost matrix for a DecisionTree in Spark's MLlib. Is it possible? I couldn't find any reference to it.
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1answer
24 views

Is it possible to specify the order of spliting in decision tree with scikit-learn?

Given three columns, ["A", "B", "C"], can we specify the order of splitting, so that it firstly split on categories of "A", then "B", and then by others? Based on on documentation page on ...
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20 views

Visualize j48 tree weka

I want to visualize my tree in a nicer layout GraphViz, but for some reason it doesn't show the tree at all even though it does show in the default layout.
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2answers
51 views

Saving decision tree's output into a text file

I'm looking for a method to save decision tree's output in R. Here is a simple decision tree code in R: library(rpart) data(kyphosis) fit <- rpart(Kyphosis ~ Age + Number + Start, data = kyphosis) ...
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8 views

Python NLTK decision tree default split method

Does anyone here know what the NLTK decision tree classifier ( nltk.classify.DecisionTreeClassifier ) use as split criterion? Since you can set the entropy I'm guessing Information gain but the Scikit ...
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1answer
23 views

Scaling plots in the terminal nodes of ctree graph

I am trying to scale the plots that appear in the terminal nodes of a ctree. I have tried using the yscale parameter but this just results plots that extend beyond the plotting window For example: ...
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1answer
44 views

create decision tree from data

I'm trying to create decision tree from data. I'm using the tree for guess-the-animal-game kind of application. User answers questions with yes/no and program guesses the answer. This program is for ...
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1answer
22 views

Why do I get this error below while using the Cubist package in R?

I have some personal dataset. So I split it into variable to predict and predictors. Following is the syntax: library(Cubist) str(A) 'data.frame': 6038 obs. of 3 variables: $ ads_return_count : ...
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2answers
65 views

What is causing this StackOverflowError?

What am I missing? I have my base case and it appears that the 'left side' runs with no problem, but I get the error when the right side gets executed. I'm fairly new to recursion and I'm sure the ...
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18 views

Implement all possible questions on a node in Decision Tree in Sklearn?

I am thinking about some trouble that might occur while implementing decision trees. Suppose, I select X3 as my root attribute to start splitting. I have X1, X2 and X3. So, X3 gives me higher ...
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2answers
40 views

Can I manually create an RWeka decision (Recursive Partitioning) tree?

I have constructed a J48 decision tree using RWeka. I would like to compare its performance to a decision tree described an existing (externally computed) decision tree. I'm new to RWeka and I'm ...
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49 views

What is the equivalent to rpart.plot in Python? I want to visualize the results of my random forest

In [R], you can visualize the results of your random forest like so (image shamelessly stolen from the internet). What is the equivalent in Python? I can get the results of my sklearn random forest ...
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1answer
20 views

Complex conditional filter design

I'm stuck at implementing some conditional rules in a form in the backend. Basically i need to come up with an efficient and scalable way of doing this. I was looking into binary trees and decision ...
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46 views

training and testing image data with neural network tool in MATLAB

My original pictures are gray scale 200x200x3. I have downscaled them to 50x50x3. They are mug shots of 100 different people. I have taken the copy of 30 of them, and corrupted, and put back in ...
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56 views

Kaggle Titanic: Machine Learning From Disaster Decision Tree for Cabin Prediction

I am very new to machine learning and still new to R, having only started learning month ago. For those unfamiliar with the data in the Kaggle Titanic competition, please bare with me. One of the ...
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15 views

For extraction method of Spark MLlib DecisionTree execution result

I have tried the Spark MLlib. I tried to run the sample of official HP , but it is not useful . We want to extract the grouped data or the conditions , but the way is I do not know . Please advice ...
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1answer
37 views

Is it possible to add duration and easing to window.scrollTo?

I'm using Bill Miller's Interactive Decision guide code. http://www.guiideas.com/2013/09/interactive-decision-guide.html To scroll new questions into view at the bottom of the page he uses ...
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1answer
27 views

How to get WEKA Classification Path of ADTree

I'm using WEKA for their implementation of trees for its decision trees. (I am currently using the GUI to test how the program works, but this question is oriented both towards how to do it in GUI or ...
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1answer
65 views

scikit-learn RandomForestClassifier - How to interpret tree output?

I have the below code, but I just don't understand how to interpret the tree output data from the RandomForestClassifier, like how the gini was calculated, given the samples and how the totals in the ...
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1answer
20 views

Feature importances, discretization and criterion in decision trees

I'm working with numerical features and I want to use a Decision Tree classifier in sklearn to find the feature importances. So, if I select the entropy criterion for splitting, information gain is ...
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1answer
29 views

Entropy of pure split caculated to NaN

I have written a function to calculate entropy of a vector where each element represents number of elements of a class. function x = Entropy(a) t = sum(a); t = repmat(t, [1, size(a, 2)]); ...
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30 views

Weka Pruneable Tree can't handle Strings

I am trying to use Weka in my Java code. Some of it has worked, some has not. So, I am getting this error: weka.core.UnsupportedAttributeTypeException: ...
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2answers
76 views

Decision Tree visualization error in rattle Error: the FUN argument to prp is not a function

I created a decision tree in rattle for the in-built wine dataset. The output is shown below Summary of the Decision Tree model for Classification (built using 'rpart'): library(rpart) ...
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1answer
70 views

Finding a corresponding leaf node for each data point in a decision tree (scikit-learn)

I'm using decision tree classifier from the scikit-learn package in python 3.4, and I want to get the corresponding leaf node id for each of my input data point. For example, my input might look ...
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1answer
45 views

decision tree formula in R

I am trying to analyze marathon data. I build a simple model and created a decision tree: fit <- rpart(timeCategory ~ country + age.group + participated.times, data=data) My goal is to create a ...
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19 views

Decision tree Information gain split order (ID3)

I understand that when deciding on what attribute you should split on with a decision tree you should calculate the information gain for each of them, one thing I don't understand is the order. For ...
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22 views

which way of representing boolean attribute in weka is memory efficient?

I know that there is no boolean attribute in Weka, so what is the memory efficient way of representing the boolean attribute? Is it considering it as Numeric attribute with 0 and 1 values or Nominal ...
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1answer
33 views

Python Scikit Decision Tree with variable number of outputs

I'm looking to setup a multi-output decision tree using the Python SciKit library. The problem I'm facing however is that it's not a simple "n_outputs" classification. Some samples will have 3 ...
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42 views

How to handle catagorical data while training decision tree using scikit-learn/ sklearn?

I am new to scikit. I am trying to use the sklearn module to train a decision tree classifier. The data consists of some categorical features and some continuous features. But when I train the ...
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1answer
15 views

information gain calculation for non discrete (continuous) data

I'm using the iris data set. this is a non-discrete data set. I'm divided into 3 equal-width method. but after that I do not know what to do. How do I calculate information gain for this dataset ? How ...
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1answer
43 views

Adaboost Implementation with Decision stump

I have been trying to implement Adaboost using decision stump as weak classifier but i do not know how to give preference to the weighted miss classified instances?