Questions tagged [decision-tree]

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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k nearest neighborhood and decision tree [on hold]

Could any give me a comparison about the K nearest neighborhood algorithm and decision tree algorithm? I wonder what are they advantage and disadvantage. Also, if I only have those two choice, which ...
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22 views

Decision Tree for MergeSort

If a decision tree for merge-sort has 2^k elements, wouldn't the longest and shortest path in that tree be the depth? i.e.: 2^k log 2^k
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30 views

Decision Tree error in Trafo and level in factors

I have this code: mydata= read.csv("/home/file.csv",stringsAsFactors=F) sapply(mydata, class) chr start stop strand num_probes segment_mean is_nocnv That return: ...
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python Using a dictionary to plot a decision tree (not using sci kit or graphviz)

Does anyone know how to plot a dictionary to a decision tree in Python? It is a manual entry so i'm not interested in sci kit or graphviz. I've tried pyplot but that doesn't seem to work. Any ...
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14 views

opencv decision tree regression, predict unseen responses?

I am using opencv3 for Visual Studio 2017, coding in C++, on a surface pro (windows 10 64-bit). I want to train a decision tree so that it can predict with regression. I need it to be able to predict ...
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27 views

Creating a metric for True Positives with make_scorer

I'm trying to create a metric to optimize the precision of True Positives of the positive class in a Decision Tree classifier: metrica = make_scorer(precision_score, pos_label=1, greater_is_better=...
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19 views

Convert Decision tree from text 2 visual

I have a decision tree output in a 'text' format which is very hard to read and interpret. There are ton of pipes and indentation to follow the tree/nodes/leaf. I was wondering if there are tools out ...
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44 views

Getting the value of a leaf node in a DecisionTreeRegressor

I've been trying to analyze the DecisionTreeRegressor I trained in sklearn. I found http://scikit-learn.org/stable/auto_examples/tree/plot_unveil_tree_structure.html useful in determining the ...
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Exporting a graphviz for Test data on which you make predictions

All the training tutorials that I see great a graph_viz export on the training data for some reason. I can get that to work and here is my code: from sklearn.tree import DecisionTreeClassifier DT = ...
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14 views

Number of features of the model must match the input. Model n_features is 4 and input n_features is 3

I am stucking with a problem with My tree based algorithm with python: Here is my train function : # The function to execute the training. def train(): print('Starting the training.') try: ...
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1answer
19 views

Can BDT do squares?

I am trying to separate background from signal where it is known that the quantity x^2 - y^2 is the physical reason why the background and signal are different. If I provide x and y as input variables,...
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Visualizing large-scale decision trees

I need to visualize a large-scale decision tree classifier (binary classifier) using Scikit-learn. However, it returns a scaled graph (.png) which is not illustrative at all. Below is the scaling ...
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Questions about the split of feature in the buidling of decition tree

i am studying the Decision tree algorithm and i read the sklearn source code. When i read the part of the spliting of a feature in the buliding of decision tree, i meet a question in the _splitter.pyx ...
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38 views

Different way to think about feature importance

In Friedman’s “Greedy Function Approximation” in the Annals of Statistics, 2001, the relative importance of input variables is described in section 8.1. Equation 44 (from Breiman, Friedman, Olshen &...
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14 views

Decision tree classifier fit function throwing error “ValueError: could not convert string to float: 'E-50'”

I am trying to fit data taken from xlsx file with decision tree classifier but i am getting error "ValueError: could not convert string to float: 'E-50'". Following is my code from my Jupyter ...
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ID3 Decision Tree Runs forever

I have a decision tree to classify data from the mushroom data set. The labels are either edible or poisonous. I am using entropy to calculate information gain for each attribute. When I set a depth ...
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1answer
26 views

Optimal Hyper-parameter Tuning for Tree Based Models

I am trying to produce 5 machine learning models and tune them based on a grid search class in order to tune the models in an optimal way so that I am able to use them for predicting new data that ...
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Why the training and test data split is different in vm with 1CPUs and 2CPUs?

I am working on a Cloudera VM machine with only using 2 CPU for one of my projects and found that when I used randomsplit([o.8,o.2],seed=13234) to generate training and test data I got an output of ...
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Decision tree using rpart to produce a sankey diagram

I can create a tree with Rpart using the Kyphosis data set which is part of base R: fit <- rpart(Kyphosis ~ Age + Number + Start, method="class", data=kyphosis) printcp(fit) plot(fit, ...
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how to form a decison tree in python

I can calculate an informative predicate for a node and share the data with it. However, I do not understand how to link the nodes together in order to represent a tree structure to access the data ...
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1answer
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One node decision tree in matlab

Im using matlab 2014a and I cant find how to do 1 node decision tree (and 2 nodes, 3 nodes ext.) Itried to use: "MaxNumSplits",and "MaxDepth" but I got MaxNumSplits is not a valid ...
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Decision Trees - Taking a long time to process String values but working fine for float values. How to understand?

I am trying to build a decision tree classifier using the code below from sklearn.tree import DecisionTreeClassifier clf = DecisionTreeClassifier() and my data is age type_income loan_purpose ...
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38 views

Use decision rules to split other data

I am looking for an elegant solution to use the decision rules created in one dataset (for a example your training set) to split the data of another dataset (e.g test data) according to these rules. ...
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30 views

How can I use Decision Tree algorithm in h2o?

I am trying to train a decision tree model by using h2o. I am aware that no specific library for decision trees exist in h2o. This is the code when I use GBM algorithm in h2o, but I can use Decision ...
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1answer
24 views

What is causing this error message when using the party package for a decision tree plot?

I am plotting a decision tree using the party package. When running the plot(tree) function, it plots the decision tree. However, I want to change the font size of the node labels and I am using the ...
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unbalanced sets in Boosted Classification Trees

I was attending a data science conference, and during the very brief(!) Q&A, the speaker was asked about his strategies for dealing with unbalanced sets in classification problems. Since he was ...
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How to address hierarchical, dependent features in decision trees

In preprocessing a dataset, I have a set of features that are hierarchical in nature as derived from a json document. { "feature1": { "feature2": { "feature3": "Value" } } } Simply ...
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Feature importance challenge: define the importance for over 30 variables in a dataset

from sklearn.tree import DecisionTreeClassifier from sklearn.model_selection import train_test_split X = home_features y = home_data['SalePrice'] X_train, X_test, y_train, y_test = train_test_split(X,...
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Error while building decision tree using C5.0 in R language

Here, I am predicting the type of glass based on its chemical content.chemical contents are input which are of numeric type(Ri,Na etc) and type of glass is output(Typec) which is factor.After building ...
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Is it possible to use maximum value instead of mean when constructing DecisionTreerRegressor in ScikitLearn?

I am using a DecisionRegressor for a task where it seems I would benefit from having the leaf node values defined by the maximum over its samples instead of the mean over its samples. Yet, I couldn't ...
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2answers
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How do I generate a Decision Tree plot and a Variable Importance plot in Random Forest using R?

I am new to Data Science and I am working on a Machine Learning analysis using Random Forest algorithm to perform a classification. My target variable in my data set is called Attrition (Yes/No). I ...
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Decision Tree - How does decision tree select rules on each node

I am learning decision tree algorithm in machine learning What I could understand from tutorials is that at each node decision tree calculate Information gain and based on that it determines the best ...
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Represent a generic decision tree with SQL Alchemy

I want to create a generic decision tree using SQL Alchemy. That is, each node has zero or more children of any type, and the task is to evaluate some expression using the tree root, which will pass ...
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44 views

Decision Tree Algorithm Implementation

For this code to implement a decision tree algorithm, I'm getting the following error: IndexError: too many indices for array. I actually want to assign a partition of the 2-D Numpy Array to ...
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1answer
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Plot decision tree over dataset in scikit-learn

I've been trying to divide randomly into test and train sets my dataset and train on a 5 deep decision tree and plot the decision tree. P.s. I'm not allowed to use pandas to do so. Here is what I ...
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Creating a decision tree based on two columns

I am using Spark for some large data processing. But I think this problem is kind of independent. I have following data set with some other columns: -------------------------------------------------- ...
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The difference between accuracy of test(60%) and training(99.9%) data sets is huge indicating high variance

What should I do to to reduce variance.I checked for multicollinearity using VIF.VIF for all the parameters was less than 2.AIC and BIC are high.Adj R^2 is around 0.45 which is less.The condition ...
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1answer
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How do you use the partysplit function from partykit library to make a split with multiple factor levels in one child node

I am making a manual decision tree tool in R and am having trouble with categorical splits. For a table df below I want to make a split on the variable cat1 such that levels 1, 2, and 5 are in ...
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Why AUC=0 for Decision Tree

I have a very small dataset including only 5 instances with 3 attributes. I applied 2 algorithms such as Naive Bayes and Decision tree for classification problem (with leave one out cross validation). ...
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1answer
40 views

Parameters Equivalence between scikit-learn and OpenCV (Decision Tree)

I'm trying to convert an implementation of scikit-learn to OpenCV of several Machine Learning algorithms. First of all, do you know of any specific question/document where I can find the parameters ...
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1answer
29 views

sklearn's DecisionTreeClassifer for mixed data

I have a data set with columns that are strings(dtype:object), int and floats. After cleaning the data, when trying to run the classifier, I keep getting this error: "ValueError: could not convert ...
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1answer
55 views

Interpreting Decision Tree in Python

I built a Decision Tree in python and I am struggling to interpret it. The tree look like as picture below. This a Churn model result. I want to know how can I interpret the following: 1. Number ...
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Retrieve Array of Target (y) Values in Regression Tree Leaf - Scikit Learn

I am trying to perform regression using ensembles of decision trees. I have trained and grown an ensemble of regression trees on an array X_train. Using X_test, I understand that I can retrieve the ...
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1answer
83 views

How to get feature importance in Decision Tree?

I have a dataset of reviews which has a class label of positive/negative. I am applying Decision Tree to that reviews dataset. Firstly, I am converting into a Bag of words. Here sorted_data['Text'] is ...
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Extract trees and weights from trained xgboost model

I have already trained an xgboost model with about X trees. I want to create some replicas of the model with exact same hyper parameters, but prune the number of trees. for example i want to create a ...
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How to read Scikit-Learn source code?

I am learning to use scikit-learn to build a decision tree. However, when I go with the example code. I found the kernel code of the tree building is empty. I am using the following code: from ...
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Feature importances with forests of trees

I am trying to find out the importance of my features and wanted to understand how the forest of trees works? To my understanding, it makes decision trees and the bar graphs show how much variance is ...
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how derive standard deviation of the leaf nodes (rpart)?

I have done a regression tree with rpart to assess the walking of elderly people based on a few variables. With the use of the plot I would like to use the output for further analysis in another ...
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27 views

Reticulate: Extract SKLearn Decision Path in R

I am using reticulate with sklearn.ensemble and I would like to extract decision paths. library(reticulate) # set up data for sklearn features = names(iris[1:4]) # extract explanatory variables ...
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Running CHAID on continuous predictors

Please, did anyone try to run CHAID algorithm on continuous predictors ?? At first, I used SPSS Modeler and it worked fine. but when I tried it on Python 3.6, it didn't work for me. Thanks :) P.S. ...