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 a decision trees branches meet after they have split earlier?

When you are drawing a decision tree, are you allowed to converge again after a split earlier in the tree like the picture shows?
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Error for prediction using Random Forests and Decision trees

I am getting the below error : ValueError: Input contains NaN, infinity or a value too large for dtype('float32'). I am trying to make prediction based on GaussianNB, SVM, Decision Trees and Random ...
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42 views

Probability Trees in Java

I want to write a Hearthstone RNG calculator. Hopefully, to those that have played the game - this will make a little bit of sense - to those that haven't - sorry! :) The Problem The enemy has ...
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1answer
20 views

Assigning different dictionaries from a combobox

I have a linear decision tree in which the user can select different comboboxes which create different possible outcomes in the forms they receive. In this case there are two factors that come into ...
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25 views

How do i draw decisiontree? (TypeError: startswith in graph from dot data, pydot)

I am new at working with Scikit Learn, machine learning, with Python. I was trying to work with a decision tree. I managed to do all the cleaning of the data, analysis and so on until I tried to get ...
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2answers
28 views

Applying the decision tree in the database

Description: I have a case in finding a solution to a problem. rules to find the solution as follows: Case 1: IF T01 AND T02 AND T03 THEN S01 Case 2: IF T04 THEN S02 Case 3: IF T04 ...
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11 views

Are decision trees useful in operations

I'm seeing a lot of examples of decision trees with random, seemingly unrelated variables trying to predict financial outcomes. Also, the variables included are often not actionable. For example, it ...
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26 views

Can a classification algorithm be used to measure the Clustering Quality (CQM)?

Can a classifier be used to measure the Clustering Quality measure? I have come across this paper where the researcher uses a classifier like : five nearest neighbor classifier, a C4.5 decision ...
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1answer
30 views

Pruning rule based classification tree (PART algorithm)

I am using PART algorithm in R (via package RWeka) for multi-class classification. Target attribute is time bucket in which an invoice will be paid by customer (like 7-15 days, 15-30 days etc). I am ...
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1answer
30 views

Data mining and weka

Hi ive beeen asked to search for at least 20 different datasets with a maximum of 40 datasets. i need to apply the following classification techniques using the WEKA software on the chosen datasets: ...
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1answer
26 views

When does rules based classifier outperforms decision trees?

Suppose I have an option to choose between making a Decision Tree and a rule based classifier, which one should I choose? Assuming that the rule based classifier has mutually exclusive and exhaustive ...
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2answers
61 views

Splitting List into sublists based on unique values

I have a list of lists: List<ArrayList<String>> D = new ArrayList<>(); When it's populated, it might look like: ["A", "B", "Y"] ["C", "D", "Y"] ["A", "D", "N"] I want to split the ...
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1answer
48 views

Rattle R package: What is the best metric to evaluate model performance of logistic regression model and decision tree model?

I have a data set asked to be evaluate in two models : logistic regression and decision tree. What is the best metric to evaluate these two model performance?
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C4.5 Select the split point (threshold) for a Continuous Attribute

Using the "play golf" or "play ball" data (listed at the bottom), to pick the root node we look at Outlook, Temperature, Humidity, and Wind, to see which has the highest GainRatio. Now, Outlook will ...
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11 views

RandomForest Impute aborts R session every time

I am trying to impute missing values so I can run RandomForest classification on data (at least 100k rows and 10k variables). Currently my code is as follows: #Establish a dependent variable to test ...
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30 views

Variable selection methods for big sparse data in R with many NULL values

I am working with datasets with at least 100K rows and at least 10K variables. There are a considerable amount of NULL values. Most of the variables are numeric with a handful being categorical. I ...
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1answer
51 views

How to force rpart to do exactly 1 Split

Having a problem similar to this, I am trying to force rpart to do exactly one split. Here is a toy example that reproduces my problem: require(rpart) y <- ...
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2answers
46 views

strings as features in decision tree/random forest

I am new to machine learning! Right now I am doing some problems on application of decision tree/random forest. I am trying to fit a problem which has numbers as well as strings (such as country ...
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1answer
35 views

is it proper to use float64 data type with scikit-learn ML algorithms?

I am trying to execute Decision Tree and SVM for a dataset given here using scikit-learn. My purpose is to compare these two algorithms so that I am using KFold cross-validation method for both ...
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60 views

Understanding python script to create Kuhn Poker game tree

For a University project I am trying to follow a script I have access to which supposedly creates the game tree structure for two player Kuhn Poker - written using Python's class structure. When run ...
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40 views

Decision Tree R

My intention is to classify my dataset according to some training set using the ctree R package. I have problems understanding what the parameters formula and data should be. features <- c("c1", ...
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1answer
15 views

How come stratification doesn't improve fit

Introduction Stratification is when you train a model per subset of your data according to a categorical feature (e.g. one classifier for man and one for woman, when classifying for a disease). ...
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1answer
101 views

chaid regression tree to table conversion in r

I used the CHAID package from this link ..It gives me a chaid object which can be plotted..I want a decision table with each decision rule in a column instead of a decision tree. .But i dont ...
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1answer
24 views

Create a vector of accuracy measures in CARET for repeated hold-out samples

I want to create a vector of accuracy measures from decision trees created by repeating holdout samples (same size). I am trying this in CARET. library(caret) ctrl <- trainControl(method = ...
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1answer
70 views

How to use mahout random forest in real project?

The list below are some packages related to classifier among mahout-distribution-0.8. org.apache.mahout.classifier org.apache.mahout.classifier.df org.apache.mahout.classifier.df.builder ...
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1answer
28 views

Decision Tree English Rules and Dependency Network in MS SSAS

I created a Decision Tree model in Microsoft Analysis Services (SSAS, Visual Studio 2010). There are two tabs in the Mining Model Viewer tab: (1) Decision Tree that shows a tree itself, and (2) ...
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1answer
124 views

Pruning Decision Trees in Python

I wanted to create a decision tree and then prune it in python. However, sklearn does not support pruning by itself. With an internet search, I found this: ...
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40 views

Recursion in trees

I'm building a simple binary decision tree in Python. I'm using recursion to build the tree, but, being a person without a firm grasp on the concept, I'm having some trouble. I want to stop the ...
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Visualizing scikit-learn/ sklearn multi-output decision tree regression in png or pdf

this is the first question I'm posting on stackoverflow so I apologize for any mishaps in layout and so on (advice welcome). Your help is much appreciated! I'm trying to visualize the output of ...
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73 views

Classification Tree for a table

Problem Description I have a simple table with 2 factors and 3 rows (Table 1). Note that in this table there are three unique patterns for Factor1 and Factor2, which are F1=0&F2=1, F1=1&F2=0 ...
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77 views

Control tree growth based on Impurity threshold in R

I want to implement decision tree in R. I have to put a threshold on the decrease in impurity, i.e. if the impurity change is less than a certain threshold, don't split the tree i.e. don't split the ...
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60 views

Information gain calculation

I have this set with continued valued attribute Temperature and boolean valued attribute for Play Tennis: Temperature: 40 48 60 72 80 90 Play Tennis: No No Yes Yes Yes ...
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75 views

Decision tree with adaboost

Helllo! I'm currently learning the AdaBoost algorithm to use it with Decision Tree. I want to implement everything myself (that's the way I learn - implement everything from scratch and later use ...
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16 views

Number of feature_importances_ does not match no of features in Scikit learn's DecisionTreeClassifier

I fitted a decision tree to a dataset having 20 inputs and 1 categorical output using the following Python Code (wordsDatum is just an array containing inputs in columns 0 to 19 and the output in ...
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2answers
147 views

Tree sizes given by CP table in rpart

In the R package rpart, what determines the size of trees presented within the CP table for a decision tree? In the below example, the CP table defaults to presenting only trees with 1, 2, and 5 nodes ...
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1answer
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online/incremental learning for classifiers

I understand that in online/incremental learning it is possible that SVM or NN learn incrementally, as the new data becomes available over time. What if instead of new cases, just new ...
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2answers
158 views

Visualizing decision tree in scikit-learn

I am trying to design a simple Decision Tree using scikit-learn in Python (I am using Anaconda's Ipython Notebook with Python 2.7.3 on Windows OS) and visualize it as follows: from pandas import ...
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94 views

Decision Tree - How to get good estimates

I want to examine a data set of a web shop. The data set includes the number of visits and the number of orders including some personal data. I want to find out, on which values a "high order rate" ...
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1answer
51 views

How to transform GBM trees to rpart or ctree in R?

Do you know any way to transform trees obtained with gbm package (extracted with function pretty.gbm.tree) to any of the objects concerning decision tree building (rpart or ctree)?
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1answer
62 views

Can you get the selected leaf from a DecisionTreeRegressor in scikit-learn

just reading this great paper and trying to implement this: ... We treat each individual tree as a categorical feature that takes as value the index of the leaf an instance ends up falling in. We ...
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query dataset classification

I have set of questions for around 35 categories. For few categories like travel, substance, symbol very few question list for training. like 8-12 question. To improve result, I tried Improving ...
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1answer
118 views

ID3 Decision Tree Clarification

I am currently working on implementing an ID3 algorithm. I've been going through the classic play tennis example, however I cannot seem to understand why the attribute TEMPERATURE is left out of the ...
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50 views

Show values at each node level of scikit-learn decision-tree

I'm trying to extract node sample values at each node level. However, when I check, only leaf value are accurate adn node values doesn't make any sense. dot_data = StringIO() iris = load_iris() clf ...
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1answer
33 views

How to know the size (Number of nodes) of the tree built using Scikit-learn?

decReg = DecisionTreeRegressor() clf = decReg.fit(X, Y) Intuitively anyone would expect either decReg or calf should have a function which will return the number of nodes in the tree grown. But, I am ...
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235 views

How do I create a gain chart in R for a decision tree model?

I have created a decision tree model in R. The target variable is Salary, where we are trying to predict if the salary of a person is above or below 50k based on the other input variables ...
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27 views

adaboosted decision trees node split criteria

I'm implementing adaboost and uses C4.5 as the weak learner. Now I use sampling to simulate the weighting. But I want to know how to take into account the weights when we decide the best split. ...
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0answers
36 views

How to create a Decision Tree?

So I have this problem with 12 customers purchasing 5 different items. 0 meaning they did not buy that product and 1 means they did purchase that item. So I'm having trouble on how to start with ...
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1answer
22 views

Incremental Adding of New Categories

I was wondering if there is any algorithm for incrementally adding new classes to existing classifier system. For e.g. if I have trained a system with 50 categories, and I want to add another 10 ...
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1answer
42 views

Logistic regression coefficients in weka LMT tree

How can I obtain the coefficients of the regression function in the LMT leave nodes? Thanks!