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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29 views

Plotting a decision tree manually with pyplot

I'm new to matplotlib and I'm trying to plot my decision tree that was built from scratch (not with sklearn) so it's basically a Node object with left, right and other identification variables which ...
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Confusions with exponential loss [closed]

I am reading a paper "Tracking-by-Segmentation With Online Gradient Boosting Decision Tree". In Section 2.1, the paper says I cannot understand the exponential loss function. In my opinion, ...
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In a DecisionTreeClassifer, why do some nodes have higher Gini Impurity scores than its previous node? [closed]

In a Decision Tree Classifier trained on the classic Iris dataset, while visualizing a tree, I noticed that some decision node's Gini Scores are higher than its subsequent nodes, screenshot here, ...
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Retrieving Decision rules from rpart model

I am working on a research project, where we are interested in generating decision rules from rpart model. I could retrieve, decision rules from the model trained on the training set. I would like to ...
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1answer
38 views

Prune sklearn decision tree to ensure monotony

I need to prune a sklearn decision tree classifier in such a way that the indicated probability (the value on the right in the image) is monotonous increasing. For example, if you program a basic tree ...
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How to handle extreme outlier in the prediction of Random Forest Regression Model

I have done Prediction by using Random Forest Regression and I have got r2score of 90% which is good for this dataset I guess, after checking MSE I got more than 1500 as result of mse. Then I checked ...
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Using a single regression tree for exploratory analysis [migrated]

Currently I am working with small dataset, 76 samples where I am interested to model how one measure that I have (diversity) is shaped based on 9 environmental variables. We observe multicollinearity ...
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1answer
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I am working on a ML model to predict promotion and this block is raising an error ie 'TypeError: None is not an estimator instance.'

prediction = RFECV.predict(np.array([[2, #department code 3, #masters degree 1, #male ...
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Error in rmse(., truth = variable, estimate = .pred) : unused arguments (truth = , estimate = .pred) in R Tidymodels (yardstick)

I am Fitting a regression tree model, using this Tidymodels tutorial. # Create a specification tree_spec <- decision_tree() %>% set_engine("rpart") # Create an engine reg_tree_spec &...
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1answer
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plotting Iris Classification

The code below classifies three groups of Iris through the Decision Tree classifier. import pandas as pd from sklearn import datasets from sklearn.model_selection import train_test_split, ...
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How to manually create a decision tree in Weka

I would like to create my own decision tree model in Weka. In other words, I would like to manually specify all the splits and all the split values in the decision tree, without training any of the ...
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Sklearn Precision and recall giving wrong values

Why is my precision score so low in the above image?
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How to externally validate a decision tree model in R?

I am interested in externally validating a decision tree model created by another researcher using my own data. I will be doing this in R but there is no code provided for the previous decision tree. ...
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Mutliway splitting on a multiclass decision tree

I'm trying to implement a decision tree with multiway splitting on a multiclass dataset looking like this: enter image description here I tried to find an algorithm online but I only found some for ...
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1answer
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What is the difference between capacity and node_counts in the sklearn.tree.tree.Tree?

I would like to export the decision tree structure from python. Hence I consider saving every node of the tree. In the doc of Tree from sklearn, I find two attribute capacity and node_counts very ...
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ValueError in DecisionTreeClassifier

Here's the link of the decision tree implementation I used. https://www.geeksforgeeks.org/decision-tree-implementation-python/ And my dataframe is only composed of "A" and "B" with ...
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How to give title to tree.export_graphviz object while displaying Tree Classifier? I tried tree.plot_tree method but it has low resolution

I want to add title to this graph. Here is my code: import graphviz dot_tree = tree.export_graphviz(clf, out_file=None, feature_names=new_columns, ...
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Are Random Forests trained with the whole dataset? [migrated]

I was reading "Hands On Machine Learning" by Aurelien Geron, and the following text appeared: As we have discussed, a Random Forest is an ensemble of Decision Trees, generally trained via ...
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Can decision tree be used for single feature text data?

I have a dataset that has only one feature which consists of some text data (basically acronyms for some technical term). I am using TF-IDF vectorizer and decision tree for my dataset. When I print ...
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How Decision Tree threshold choose in scikit-learn?

I have been searching for this for 2-3 hours include scikit-learn document, stackovwerflow, source code and wiki but there are only very few mentions about it I tried the above method from scikit-...
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ValueError: X has 1 features, but DecisionTreeRegressor is expecting 62 features as input

I'm not able to display graph (scatter plot). I'm getting value error: X has 1 features, but DecisionTreeRegressor is expecting 62 features as input. Can anyone please help. Thanks in Advance. X_pred,...
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Subtrees visualization in dtreeviz

I am new to dtreeviz. I am struggling with a very deep decision tree that is very difficult to visualize (overfitting is not an issue for my task). I would like to know if there is a way to visualize ...
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with quotation mark and without quotation mark, what is the difference

For the following code, I wish to find the minimun cp item which has the lowest xerror data(iris) install.packages("rpart") library(rpart) set.seed(161) tree.model1<-rpart(Sepal.Length~., ...
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tensorflow class_weight parameter throwing too many values to unpack error

Ok so I'm building a random forest model with the tensorflow_decision_forests library. I'm training on a binary classification task and I'm attempting to assign class weights for the two classes in ...
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How to calculate the output of a regression decision tree

I'm trying to understand after doing all possible splits in a regression tree. you end up with terminal node(s) then you need to calculate the output to obtain the regression estimate. In this case ...
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Uncertainty prediction in Quantile Regression

For an application, I am using a Gradient boosting Tree based quantile regression model (LightGBM,Catboot) to predict the 5th percentile of the target variable. The model predicts point estimates, but ...
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Pruned decision tree in r, ctree

I'm developing a binary decision tree in R with the "party" package, ctree. Further, I want to prune the tree with some controls (ctree_control) e.g., maxdepth, minsplit, and mtry. The model ...
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Weka 3.8 - the decision tree J48 seem to have correct tree to predicate data but fail on the testing

The decision tree J48 generated a tree structure as below. J48 pruned tree petalwidth <= 0.6: Iris-setosa (50.0) petalwidth > 0.6 | petalwidth <= 1.7 | | petallength <= 4.9: Iris-...
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Building Decision Tree with python: multiple label as output , how do I implement the information gain for each split point?

I have to build a decision tree where the class label can take more than 2 values and we split the tree into two (binary splits) based on a split value (passed from another function). How do I find ...
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1answer
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jupyter error: can't view decision tree as png in random forest

I am trying to look at my decision tree in Jupyter Notebook. I have installed graphviz (in anaconda cmd prompt) and pydot. #taking one tree from the forest and saving it as an image #!pip install ...
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1answer
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Understanding splits in xgboost

I must be missing something simple in my understanding of the splits in the underlying trees when using xgboost. If I use model.tree_to_dataframe(), I have been mentally interpreting the number given ...
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1answer
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Do we expect baseline (all features) and selected features to perform the same with decision trees? [closed]

I'm using sklearn's decision tree for a binary class problem. However it turns out that after optimizing everything (optimizing hyper parameters and using the optimal number of selected features), the ...
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Error while running randomForest in R: “Error in y - ymean : non-numeric argument to binary operator”

birth <- import("smoker_data1.xlsx") ## Splitting the dataset in test and train datasets mysplit <- sample.split(birth, SplitRatio = 0.65) train <- subset(birth, mysplit == T) ...
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How does function `train` for decision tree work in selecting the Best Tune?

In order to estimate the so-called complexity parameter cp (to which it is convenient to prune the tree), I used the grid search and the functions of another package, caret. This is the code: dataset =...
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Paths in a decision tree

I want to extract all paths of a decision tree in python and find out for each path which elements followed this path. Knowing their values for each split would be great too. Also how they would get ...
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Pass catagorical label values for prediction in machine learning decision tree algorithm without converting it to encoded number?

I am working on success prediction android app, and i take dataset which contains some categorical values. Columns like director name, actor name in categorical form and other columns like year of ...
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Merging Decision Tree Rule to DF based on ID and generate aggregated summary

I used PySpark's DecisionTreeRegressor to fit a decision tree. I output the rules of the tree as based on the block of code below: x = ['Variable_Final'] df = data_vector(main_df, x) dt = ...
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1answer
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Interpreting information on Decision Tree nodes from sklearn

What is the interpretation of the "value" of each node of a decision tree created with sklearn? I thought the numbers in "value" were supposed to add up to "samples," ...
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1answer
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Decision tree regressor used less features as my input

So I defined a simple regression model as follows: from sklearn_pandas import DataFrameMapper from sklearn.preprocessing import LabelBinarizer from sklearn.pipeline import Pipeline from sklearn import ...
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1answer
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One hot encode correlations and decision trees

I have few questions about preparing the data for learning. Im very confused about how to convert columns to categorical and binary columns when i want to use the for correlations and classifier ...
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How to Prune a Decision Tree That is Represented by a Nested Dictionary in Python

I have Decision Tree that I coded from scratch. It's in the form of a nested dictionary, but I have no idea how would I go about pruning the tree. I know the basic algorithm whereby you remove a sub ...
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Use classifiers with csv file as parameter X in Python

I have csv file, I took all data's that I will need later and wrote it in another file, and I took first column of original csv file and place it in variable Y. Now I just need to place my new csv ...
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graph_from_dot_data doesn't provide write_png module

I have a problem with write_png module of pydotplus.grapg_from_dot_data. Actually, It doesn't even appear as the modules of graph_from_dot_data. This is my code: dtree = DecisionTreeClassifier() dtree....
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Visualization of Random Forest Tree in PySpark?

How can I visualize the best Random Forest Tree in RandomForestClassifier, using TrainValidationSplit? I had no problem displaying a normal decision tree. When I did it this way, I just decomposed the ...
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21 views

Experiencing an Error in training a decision tree model

i am trying to train a decision tree model but i keep on encountering an error below is the code: from sklearn.tree import DecisionTreeClassifier dtree = DecisionTreeClassifier() dtree.fit(X_train, ...
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ValueError with Training Data during DTreeViz Command

I have created a DecisionTreeClassifier clf to model data, and am attempting to visualize the tree using the dtreeviz package. clf = DecisionTreeClassifier(max_depth=3) clf.fit(X_train, y_train) To ...
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2answers
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Newbie : How evaluate model to increase accuracy model in classification

my data how do I increase the accuracy of the model, if some of my models when run produce results like the one below ` from sklearn.tree import DecisionTreeClassifier classifier = ...
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Fast evaluation of a decision forest

I have some decision trees (1000-3000) which need to be evaluated as fast as possible. They all access the same set of double values. There are no categorical values at all (so all values are just ...
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1answer
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Test score NaN while trying to evaluate a decision tree regressor model

I am trying to evaluate the accuracy of a decision tree model using both numerical and categorical features from the ames housing dataset. For the preprocessing of numerical features, I have used ...
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1answer
18 views

Decision Tree in Python

How to implement the idea of a DecisionTree in python. In a TicTacToe game. Each gameState string represents the present situation 0 is Empty, 1 is Player 1 move, 2 is Player 2 move So a single ...

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