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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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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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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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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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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23 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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32 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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25 views

How to extract information about the trees in the Random Forest?

In the randomForest package by Breiman and Cutler, how can you know: the exact subsample (S_t) used to train each tree (the subsample used just for training and not including the sample points used ...
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7 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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Decision Tree in Machine Learning, weights sign ?

I'm using sklearn.linear_model.DecisionTreeClassifier() to classify some data, and I was wondering if the weights of this classifier (given by the attribute feature_importances_) can be positive and ...
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16 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?
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25 views

How to set threshold of class counter / probability to label “predicted class” in R rpart

I am using rpart function to get a decision tree to predict Owner / No-owner based on a set of variables .Below is the excerpt of output Node number 2: 8 observations, complexity param=0.08333333 ...
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how to define defrule in CLIPS

(defrule amphibian "" (water-aniaml yes) (aquatic yes) (eats-instencts no) (not(guess ?)) => (assert (guess("guess not amphibian")))) (defrule skin-dddeceptionn "" (water-aniaml yes) ...
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Weka creating decision tree

I have a text file that contains data as follows <.2334,4> <6543,4> <34356,3>.... I want to create Decision tree (J48) but I have no idea how to start. could someone help me? do I need the ...
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32 views

WEKA J48 decision tree with non linearly separable data

Does Weka J48 Decision Tree classifier support classification for a problem with intrinsically non linearly separable data? In short, is J48 either a linear or a non linear classifier?
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33 views

Learning a union of intervals

Suppose I have N one-dimensional points xi and their labels yi = 1/0. I would like to learn a set of k intervals such that, when label 1 is given to all the points in those intervals, error is ...
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23 views

What splitting criterion does Random Tree in Weka 3.7.11 use for numerical attributes?

I'm using RandomForest from Weka 3.7.11 which in turn is bagging Weka's RandomTree. My input attributes are numerical and the output attribute(label) is also numerical. When training the RandomTree, ...
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19 views

get the actual decision tree in pandas

I'm using pandas command tree.DecisionTreeClassifier to build a (binary) classification tree. Something along the lines of: dcrG = ...
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34 views

how to quickly split data for a decision tree like algorithm

I have a decision tree like algorithm. The data in the matrix X is recursively split in 2 subset from the _split_data function. This operation is quiet expensive because it requires to copy of the ...
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Multiclass Classifiers

I am working on a audio multi class classification problem (noise,vessels,2 types of animals) by using MFCC features. I am getting different results with different classifiers. I tried Bayesian type, ...
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Counting attributes in decision tree - Orange Data Mining

I need to count attributes in decision tree. At a SCREEN for example attribute petal width occur 3 times. Question is how to count these attributes?
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36 views

max_depth of the DecisionTreeClassifier

I'm creating a DecisionTreeClassifier object, which is class from sklearn.tree. In the sklearn documentation, it is said that such an object has the attribute max_depth, by which we can have a deeper ...
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46 views

Decision Tree in R using rpart based on multiple splitting attributes

I am trying to build a decision tree for a prediction model on the following dataset: And here is my code: fitTree = rpart(classLabel ~ from_station_id + start_day + start_time + ...
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21 views

How to develop a Decision Support System

I would like to develop a decision support system for diagnosis disease. I am newbie for the programming. Can anyone suggest which programming language is most suitable?
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Use a DecisionTree throughout whole lifetime in C# .NET application

I have a webapplication in development. I'm thinking about using a DecisionTree to analyse certain things. The DecisionTree has to be created and will be used in different fases. E.g. in a ...
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45 views

How to extract the splitting rules for the terminal nodes of ctree()

I have a data set with 6 categorical variables with levels ranging from 5 to 28. I have obtained an output from ctree() (party package) with 17 terminal nodes. I have followed the inputs by @Galled ...
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Computing the score of a test on extra-trees

Simply put, I would like to know how is the score of a test calculated on the extremely randomized trees algorithm ? (the test compares the value of a pixel at a certain position to a threshold s)
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50 views

How to Prepare Data for DecisionTreeClassifier Scikit

I have the following Data in csv , the top row indicate column headers and data is indexed, all the data is dicretized. I need to make a decision tree classifier Model . Could some one guide me with ...
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Select a random value according to a distribution , java equivalent [closed]

I'm trying to code the extra-trees classifier algorithm proposed here but I'm stuck on the part where i have to select a threshold Ath at random according to a distribution N(µ,σ), where µ and σ are ...
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28 views

How to stratify data using Orange?

Looking for some help from the Orange experts out there. I have a data set of about 6 million lines. For simplicity's sake, we'll consider only two columns. One is of positive decimal numbers and ...
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28 views

Same decision tree, different results

I work on a machine learning application and use Weka for testing, comparison classification algorithms etc. After the test operations on Weka, I determined to use J48 decision tree. I parsed the ...
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25 views

Feature processing in making a decision tree/

I wanted to know when applying a decision tree Algorithm on a data set, what is the processing required on the data set with discrete and continuous feature values?
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17 views

How to Update the weights of sample in AdaBoost

i have problem with the updating of adaboost weights here is an example... how to get the value of Zt and D(t+1) ?
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24 views

Force the left to right order of nodes in graphviz?

I want to draw a decision tree chart using graphviz. The graph I want to draw looks like this: I am using the following dot language: graph a { A [shape=box; label="A"] B [shape=box; ...
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19 views

dealing with the missing value when using C4.5 technique

I'm trying to build a classifier "model" using some classification techniques. Beginning with the C4.5 technique, faced the problem of missing values so: How to deal with the missing values exist in ...
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Weka decision tree prediction NA treatment on missing values

Hi at the moment I'm working on implementing a big Hellinger distance decision tree and I have encountered a problem. I have a continuous variable in the tree node and I don't know how the tree will ...
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56 views

Dynamic if-then Code

I'm using Decision Tree algorithm and I get if-then rules (returned as text) for example: if(Parameter1 > 10) then if(Parameter2< 5) then do A else do B else do C I want to use these ...
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40 views

not creating tree by rpart in R

I'm new to R and rpart package. I want to create a tree using the following sample data. My data set is similar to this mydata = "","A","B","C","status" "1",TRUE,TRUE,TRUE,"okay" ...
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how level-wise decision tree construction works

I have read spark 1.0 Decision tree implementation. It mentioned that it use level-wise strategy to reduce the data I/O, as the data in spark distributed to different machines. But, I am still not ...
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RMOA package throws error

I have a dataset of 50,000 records. I am building a hoeffding tree with first 10,000 records as training data set. The remaining 40,000 test records are divided in chunks of 10,000 records each. After ...
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39 views

sk-learn: cannot train decision tree with big dataframes

I'm on my first project with Python and sk-learn. In the project I have to do a prediction based on available data. For this I want to use the DesicionTreeClassifier. I did load and clean the data ...
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30 views

pyspark---randomForests specify categorical variables using “categoricalFeaturesInfo”

how do you specify categoricalFeaturesInfo in pyspark randomForests? the documentation isn't very clear on this and I tried a few like: categoricalFeaturesInfo= {(12,4)} categoricalFeaturesInfo= ...
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Decision Tree, What is Wrong here?

I took a contest two days ago. one of our question is as follows: decision tree with depth 2 is constructed for two binary feature. how many features are in hypothesis space that can be shown ...
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28 views

Creating an arff file for Weka

I am creating an arff file and loading it into Weka and when I try to run a J48 decision tree i am getting the following error message: Can't have more folds than instances Below is the arff ...
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31 views

How to generate confusion matrix in c45?

I am trying to implement c45 algorithm on Map Reduce and the code here generates only a rule set given some training data. This class contains the main method. public class DecisionTreec45 extends ...
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Variable number of arguments in r decision tree

Thanks for any help - I'm building a decision tree in R, and the classic example is iris_ctree <- ctree(Species ~ Sepal.Length + Sepal.Width + Petal.Length + Petal.Width, data=iris) My question ...
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Binary decision tree in Scikit Learn

i have a simple question that i didn't understand: Why decision tree in Scikit Learn is Binary tree instead of n-ary tree? Anyone knows the answer? Please tell me, thank you so much.
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40 views

party package for decision tree in R does not support character data type?

If one of the columns in my data frame is of data type character, I get the error below. > library("party") > r2 <- ctree(Sepal.Length ~ .,data=df) Error in trafo(data = data, numeric_trafo ...
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91 views

RapidMiner: Can I use a wildcard as an attribute value for training a decision tree model?

I am working on a fairly simple process in RapidMiner 5.3.013, which reads a CSV file and uses it as a training set to train the decision tree classifier. The result of the process is the model. A ...
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51 views

Understanding of minbucket function in CART model using R

Assume the training data is "fruit", which I am going to use it for predict using CART model in R > fruit=data.frame( color=c("red", "red", "red", "yellow", "red","yellow", ...
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Get decision tree rule/path pattern for every row of predicted dataset for rpart/ctree package in R

I have built a decision tree model in R using rpart and ctree. I also have predicted a new dataset using the built model and got predicted probabilities and classes. However, I would like to extract ...