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.
decision-tree
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How should I set the conditions to say can't move there when the player goes out of bounds? [duplicate]
I'm creating a game where there is a 10x5 grid with "#" as walls, "O" as the player and "X" as the checkpoint you need to get to to win. I need to make sure that whatever ...
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Importing a partially trained decision tree with River Library
I'm using the River Library to build incremental decision trees in Python. Once the tree is partially trained, I can save its strucuture in a dataframe using the 'to_dataframe' method. I would like to ...
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How do I get my variables on a node in decision tree? I get Key Error 7
I am about to visualize a causal decision tree based on my model. I finally made it to actually plot the tree but somehow it doesnt show my variables names but X[5] on the nodes name. As soon as I add ...
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How to avoid overlapping labels in rpart.plot
When using rpart.plot to plot the decision tree, how do you ensure that the labels do not overlap, especially when one variable has many categories? Can the labels be "repelled" like in ...
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how to rectify this error in decision tree model AttributeError: module 'sklearn.tree' has no attribute 'predict'
i am not able to correct above error in jupiter
AttributeError: module 'sklearn.tree' has no attribute 'predict'
to run decision tree
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How do I create a decision tree from my data frame and how would I evaluate it? (Jupyter)
I'm trying to use decision trees and a random forest classifier to predict accuracy. I don't quite understand how to implement them. This is my data set, the areaName is United Kingdom for the whole ...
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Spark - DecisionTree model with wrong features importance
I'm running a DecisionTree model and everything looked right except when I ran the feature_importance to check what are the most important features in this model.
The result is wrong because the sum ...
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What is bootstrap dataset in random forest?
Random forests train multiple CARTs on bootstrapped samples of training data. Few places say that the bootstrapped sample has a subset of original features (like this) and few of the places say that ...
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What is the solid black rectangle adjacent to the decision tree?
I adapted this code from https://www.dasca.org/world-of-big-data/article/know-how-to-create-and-visualize-a-decision-tree-with-python.
I removed two arguments to the DecisionTreeClassifier constructor,...
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Is there a way to calculate training and test error multiple times using a loop?
I am trying to prune a decision tree to create 19 trees that have 2-20 terminal nodes, and I would like to calculate the training and test error for each. I used this code:
range <- c(2:20)
for (i ...
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Similar validation accuracy for sparse and non sparse dataset in case of decision trees
The blog https://www.kdnuggets.com/2021/01/sparse-features-machine-learning-models.html mentions that the decision tree overfits the data in the case when we have sparse features.
To understand the ...
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Genetic Algorithm for Decision Trees
I made a natural selection simulator in pygame where there are ten characters that each take in sensor inputs that are fed into a decision tree (with randomly initialized nodes) and tell them to ...
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R : How to write confusion matrix with decision tree output?
I am studying decision tree and confusion matrix.
I am not doing coding in R script, but I would like to know how can I make confusion matrix from the attached screenshot, which is the output of rpart ...
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How to obtain the interval limits from a decision tree with scikit-learn?
Say I am using the titanic dataset, with the variable age only:
import pandas as pd
data = pd.read_csv('https://www.openml.org/data/get_csv/16826755/phpMYEkMl')[["age", "survived"]...
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Finding Pickel File in local files
import pickle
filename='pred_model1'
pickle.dump(b_dtc, open(filename,'wb'))
#here b_dtc is my modelname`
when I executed the code it works well but how to know where the pickle file is downloaded in ...
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where to store decision trees and multiple regression models? [duplicate]
I have implemented decission tree and multiple regression models. I am planning to deploy it and have access to calculate/classify something by rest. Will use most likely rest from python. The only ...
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Does re-labelling categorical variables change conditional inference tree result in partykit?
I'm using the ctree function from partykit from my analysis. My ctree contain all binary/categorical variables. When I change the value labels of the binary categorical variables, I end up getting a ...
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GridSearchCV on ExtremelyFastDecisionTreeClassifier() isn't working (skmultiflow)
i looking for help to execute GridSearchCV on the hyperparametres of my EDFT classifier. i got an error and don't find any ressource on the web or an effective answer by chatGPT... so i'm here.
here ...
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R decision tree hangs for hours
I am using R and I am training a decision tree. There are 10 columns with features and 1170 observations. I open an Excel file, transform it into a data frame and train the tree. Of course, a column ...
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Is there a way to obtain integer values when using class_weight parameter in DecisionTreeClassifier
I am using a DecisionTreeClassifier() for an imbalanced dataset with class_weight='balanced' parameter.
When plotting the tree, the nodes have floats in the 'value' attribute, which I guess it has ...
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How to make spark decisiontree model use feature subsetting?
I am trying to build a random forest model using pyspark ml library. However, there is some special bootstrapping strategy that fits my dataset. So my plan is to do the bootstrapping separately and ...
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Prediction intervals for DesicionTreeRegressor
I am trying to find a way to get prediction intervals for sklearn DecisionTreeRegressor.
I have a categorical input variable and the target value is numeric.
Simple executable script:
from sklearn....
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Display probability for internal nodes in partykit conditional inference tree (classification tree)
In the partykit package print(i.ctree) provides the probability of the outcome at terminal nodes (classification tree). However, I would like to know the probability of the outcome at internal nodes ...
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How to call the argument name of a constructor inside a new function?
A DecisionTreeRegressor has the callable arguments of max_depth, min_samples_split, and so on. I want to create a function that chooses which argument (feature of the tree) to call. An example:
import ...
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Value error: too many values to pack - in a decision tree algorithm
I've copied the code that is used for data visualization in kaggle. I applied it with another dataset. When I was executing for confusion matrix, visualization etc. it shows value error: too many ...
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Decision tree vs Decision space
I understand given tabular data how to create a decision tree from scratch. I program in python, we create a class called node inside the class we can add functions making child, root, split etc.
May ...
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Why GridSearchCV has higher score with a subset of parameters?
Below is my code, I run it twice. The first one with "criterion": ['gini', 'entropy'] and the second one with just 'entropy' ('gini' was removed), nothing else changed. I expected with less ...
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Categorical data decision tree coded different than the correct one
I'm trying to code some example data I got from a course. However, the result I received is different from the course's result.
The data is categorical so I used one hot coder and for the output (...
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Can anyone explain about "Formula Value" of v1 ,v2 in PredictionValuesChange of Feature importance in CatBoost? what is Formula Value?
what is Formula Value? --> "Formula Value" of v1 ,v2 in PredictionValuesChange of Feature importance in CatBoost?
to find out what meaning of Formula Value ? calculate from what ...
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Retrieve features names on the Decision tree which were coded
I have a test data which is in String so I coded the strings using the one-hot-encoding technic. now I am looking for two things, Extracting the features names and putting them into the decision tree ...
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Why does my predict() function return the same class label every time
I am working on a reimplementation of the ClassificationTree class in Matlab, I have implemented a findBestCutPoint() function and a buildTree() function. These work great albeit a little inefficient. ...
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what is the range of gini impurity when more than 2 classes?
when we are building a decisiontree, we are usually calculating the gini impurity at each node.
I am interested to see the range of gini impurity in case of more than 2 classes.
Because entropy always ...
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How to correctly load images from local directory with sklearn.datasets.load_files?
I have a bunch of spectrograms with labels that I want to use different machine learning methods for classification on. So I've wanted to use "sklearn.datasets.load_files()" to try out my ...
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TypeError: '<' not supported between instances of 'float' and 'str' for ID3
I am currently trying to create a decision tree using the ID3 algorithm in Python. My code works with a simple dataframe of five categorical variables, but when I try to use it on a more complex ...
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how to show every each of the bootstrapped data / sampled data in random forest sklearn?
from what i understand about random forest alogirthm is that the algorithm randomly samples the original dataset to build a new sampled/bootstrapped dataset. the sampled dataset then turned into ...
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How do the splits in a decision tree classifier work?
I would like to know how the splits in the decision tree look like.
More specifically, I am wondering if they can be "relative". For example can the criterion be something like:
if x > y ....
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How to do training and testing for decision tree classifier
im try to do training and testing for my decision tree classifier. im still new in decision tree. i have 150 data with two columns in my csv file and im tried to split it into 100 training and 50 for ...
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Why does Scikit-Learn's DecisionTreeClassifier return zero weighted features after removing zero weighted features and refitting?
Ive been trying to figure out why this is happening. I'm fitting a DecisionTreeClassifier and the model determines that a few features are not informative for the prediction. Fitting the same model ...
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setdiff() showing no data in r
Trying to use a decision tree to predict drug classes, when I set a seed and then set the sample_frac() for my training data & then use setdiff() for my test data im seeing my data within the ...
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Weka decision tree is very cluttered no options to organise it?
Hi i am in weka trying to produce a decsion tree for the data but all i get it this
My only options that do anything are if i right click and click auto scale but then its very spread out and mostly ...
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How to fix weirdly perfect testing scores in machine learning
I am really new in programming, especially, in machine learning. Currently, I am training my dataset and I am using KNN, random forest, and decision tree as my algorithms. However, my accuracy, ...
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Get 100% accuracy score on Decision tree model
I got 100% accuracy on my decision tree using decision tree algorithm but only got 75% accuracy on random forest
Is there something wrong with my model or is decision tree best suited for the dataset ...
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Getting desired output + lots of clutter printed on decision tree feature importance (ValueError: continuous is not supported)
I have the following code to do feature ranking and some cross validation on it.
from sklearn.tree import DecisionTreeRegressor
dtr = DecisionTreeRegressor(random_state = 42)
# Train model
model = ...
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could not find function "C5.0 r using C50
I would like to use C5.0 but with few error
this is the code:
library(modeldata)
data(credit_data)
set.seed(2411)
in_train <- sample(1:nrow(credit_data), size = 3000)
train_data <- credit_data[ ...
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sklearn.exceptions.NotFittedError: This DecisionTreeClassifier instance is not fitted yet
im try to visualize decision tree with using mode from image data in python without graphviz using DecisionTreeClassifier but im keep getting error
sklearn.exceptions.NotFittedError: This ...
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Ideas on how can i implement a decision criteria matrix in c#
like the title said, i need to implement a decision matrix, one like the image below but with n amount of criteria and n amount of decision
I've thought on using a Dictionary where i can store the ...
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Dtreeviz - AttributeError: 'DataFrame' object has no attribute 'dtype' Python . Scikit-learn
I am trying to do a decision tree with dtreeviz
import pandas as pd
from sklearn import preprocessing, tree
from dtreeviz.trees import dtreeviz
I have a pandas df like:
df1:
id | age | gender | ...
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Should I include group column in data to use ctree in r?
I have data like below:
structure(list(`h:23705` = c(7.16421907753984, 7.18756733158759,
6.71825354529678, 7.06582535720175), `h:9076` = c(3.63561443591981,
8.80110411390239, 3.42736295167031, 6....
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Why won't my Decision Tree classifier work. The functions say not enough input arguments
I have coded a Decision Tree classifier in Matlab. To the best of my knowledge everything should work, the logic checks out. When I try to call the fit method it breaks on one of my functions telling ...