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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DecisionTreeClassificationModel - how to parse and visualize decision tree in PySpark?

I have a model fitted by DecisionTreeClassifier (class DecisionTreeClassificationModel) and need to parse it's tree nodes in order to visualize a subset or whole tree, but it seems that methods ...
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7 views

Unexpected symbol in rstudio in decision tree

I am getting an unexpected symbol error in my code in rstudio. tree<-ctree(Income Level~Employment+Education Level+Profession, data=traindata) Error: unexpected symbol in "tree<-ctree(Income ...
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21 views

Creating my own split criteria function for MATLAB decision tree [on hold]

In MATLAB there is fitctree function. I want to implement my own splitting function like information gain and use that on fitctree. Is it possible in MATLAB?
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Dropping dummy variables during DecisionTreeClassifier() methods

I am working on a DecisionTreeClassifier scikit model with a data set about defaults on student loans. The dataset contains categorical data like the field of studies or the gender. So I need to get ...
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2answers
37 views

How do I get all Gini indices in my decision tree?

I have made a decision tree using sklearn, here, under the SciKit learn DL package, viz. sklearn.tree.DecisionTreeClassifier().fit(x,y). How do I get the gini indices for all possible nodes at each ...
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164 views

Conversational AI bot algorithms [on hold]

What is required to build a conversation AI bot ? What programming language should I use to build an AI conversational bot ? What AI learning algorithms are suitable for developing a conversational ...
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31 views

how to map each leave samples in each tree in random forest classifier to it's X and y after fit?

i am triyng to understand how to map leaves to it's original X and y . i tried to used the Print the decision path of a specific sample in a random forest classifier and i can't understand how to map ...
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error: scala decision tree implementation “overloaded method value trainClassifier with alternatives”

I am trying to implement decision trees using : https://spark.apache.org/docs/latest/mllib-decision-tree.html#examples And my sample code is: val splits = predictionsNewdfNew.randomSplit(Array(0.7, 0....
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10 views

“Histogram and binning” technique for categorical variables publication and implementations

H2O.ai have implemented the "histogram and binning" technique for efficient and accurate tree-building using categorical variables of high cardinality (>100): http://docs.h2o.ai/h2o/latest-stable/h2o-...
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1answer
48 views

Decision Tree Classifier outputs “Male” if true and “Male” if false?

I am working with a decision tree classifier to try and predict Male or Female based on a genre of a show. Once I visualize the decision tree using graphviz, the graph outputs Male as True and False. ...
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breast cancer classification: undefined columns selected error

I am a new data science student. I'm running decision tree classification for predicting breast cancer. Dataset link here: https://www.kaggle.com/uciml/breast-cancer-wisconsin-data Here is my code: ...
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1answer
22 views

In MATLAB how to get the result of a classification tree in a matrix?

I made a Classification Tree, code: mytree=ClassificationTree.fit(MyData,MyLables); mytree.view('mode','graph'); My data has two classes and I want to get the result of prediction as a matrix that ...
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1answer
23 views

Is there any relationship between logistics regression and decision tree? [closed]

I tried to make a decision tree, and predict the result of the tree with predict function. predict(c.tree1,D1, type = "prob") when the type is "prob" it will give you back the probability of getting ...
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24 views

How to transform JSON-style C4.5 model into an image with graphviz?

This model is created from my blog using the dict-type style in Python from "Machine Learning in Action" (a famous book): C4.5 model= { 'A9': { '=t': { 'A15': { ...
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1answer
20 views

How to get which result satisfy from confusion matrix prediction

I did a decision tree model to predict the MVP from an NBA player dataset. The outcome of the confusion matrix indicates that it has three right predictions, so I wonder is it anyway for me to find ...
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28 views

How to interpret MeanDecreaseGini, what does the numbers mean on the scale?

I have to interpret the most important variables by speaking about the MeanDecreaseGini in randomForest. For example, I have variable x, with a value of 250. How can you explain that 250? What does ...
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28 views

Decision tree: case weights - how does this actually work?

I have used case weights in my decision tree to "make my minority class more important". This is my code: caseweights <- ifelse(train$number== "problem",0.75,0.25) tree <- rpart(train$...
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2answers
31 views

Equivalent of predict_proba for DecisionTreeRegressor

scikit-learn's DecisionTreeClassifier supports predicting probabilities of each class via the predict_proba() function. This is absent from DecisionTreeRegressor: AttributeError: '...
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15 views

How to reduce the number of rules in decision tree with Support and Confidence

The following is a set of rules in decison tree. How to reduce the number of rules in the set with Support and Confidence? If Ascites = 'Yes' then if Class = 'Live' then if Spiders = 'Yes' then if ...
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11 views

cost-complexity pruning in tree() in r,

I cannot figure the out what the stopping criteria is in the tree() and whether or not is has a build in cost-complexity pruning function. I have tried to run the tree(), but it seems like it is ...
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2answers
42 views

Reading data from a csv file Java

I want to read data from my dataset train.csv and I am trying to implement that using Java. My aim is to get this raw data in order to in the csv file in order to create a decision tree from this ...
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1answer
28 views

ValueError: could not convert string to float: 'never_thought'

I used decisionTreeClassfier in python sklearn. And put data in the database screenshot of database There is string data in my database. When I fit the database,there is a wrong message. How could ...
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2answers
24 views

Labels are blank in Decision Tree plot in r

I am using caret package to train my model. My model is working fine. But when I plot the decision tree, the labels are blank. How do i get the labels? carMod <- train( FLAG ~.,data=df_train, ...
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27 views

Traverse a Decision Tree based on User Input

I'm currently studying decision trees, and have implemented my own. The dataset I used is of phone apps. It has the following feature names: App Name, Category, Ratings, Reviews, Size, Installs, Type,...
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21 views

How do i tune the parameters?

I have a decision tree model written with the codes below, may I know how can I tune the parameters to make the result of the model better? Can I use something like GridsearchCV or something else? The ...
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1answer
16 views

Subtle mistakes of one implementation of decision stump

Note: this question arises because of implementation details instead of decision stump ERM algorithm itself. I am trying to implement the decision stump algorithm by myself and compare it with a ...
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16 views

How to use rpart.plot to plot a decision tree?

For the last line, how to use rpart.plot to plot a decision tree instead of post? ```{r} #A. (forum.posts and grade) c.treeA <- rpart(certified ~ forum.posts + grade, method="class", data=M1,...
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1answer
27 views

How may I un-encode the features from a decision tree to see the important features?

I have a dataset that I am working with. I am converting them from categorical features to numerical features for my decision tree. The conversion happens on the entire data frame with the following ...
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21 views

I am having 3 classification, but my decision tree shows only 2

library(caret) library(rpart.plot) car_df <- read.csv("E:/SMM/TrainingDataSet (3).csv", sep = ',', header = TRUE) str(car_df) with(car_df, table( Result)) set.seed(3033) intrain <- ...
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20 views

Select among predictors with equal improvement

I try to implement RPART in order to make some developments later. So far only for regression (ANOVA) model. Everything seems pretty clean except one thing — how RPART selects best split among several ...
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14 views

Can Generalisation error beat training error in Discrete AdaBoost with stumps?

I have this strange performance of a discrete AdaBoost algorithm with stumps. The prediction on the testing data is more accurate than the prediction on the training data. I use rpart command as ...
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Checking whether a decision tree has been fitted or not (python) [duplicate]

I'm using Scikit learn's DecisionTreeClassifier with a personal implementation of the AVA multiclass model. It so happened that one of the tree was not fitted due to lack of samples for some classes, ...
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1answer
43 views

Decision tree in r is not forming with my training data

library(caret) library(rpart.plot) car_df <- read.csv("TrainingDataSet.csv", sep = ',', header = TRUE) str(car_df) set.seed(3033) intrain <- createDataPartition(y = car_df$Result, p= 0.7, list =...
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16 views

Fast (faster than c4.5) native (or .net) decision tree library with permissive license

At the moment I'm using the Accord.net implementation of C4.5 decision trees, but its pretty slow (not too surprising as C4.5 has O(n*m^2) (n = samples, m=features) complexity). Also it is missing ...
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1answer
20 views

Convert a decision tree to a table

I'm looking for a way to convert a decision tree trained using scikit sklearn into a decision table. I would like to know how to parse the decision tree structure to find the decisions made at each ...
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1answer
14 views

Could you give a clear example about Critical Value pruning?Many Thanks

Could you give a clear example about Critical Value pruning?Many Thanks. Critical Value pruning is proposed in It use CHi-square to chop decision trees. Please help,thanks in advance. https://www.cs....
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28 views

Random Forest and Decision Tree Algorithm

As Random Forest is a collection of Decision Trees following bagging concept, so when we move from one Decision Tree to the next Decision Tree then how is information learned by last Decision Tree ...
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1answer
58 views

Why can xgboost not deal with this simple Chinese sentence case?

There is only 1 feature dim. But the result is unreasonable. The code and data is below. The purpose of the code is to judge whether the two sentences are the same. In fact, the final input to the ...
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142 views

'undefined columns selected' in decision tree c50 prediction model

I am trying to fix this issue about factor for hours. I am using C50 library to make decision tree prediction on my dataframe, but it gives "undefined column selected error" for model.DT The goal is ...
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60 views

Decision Tree How to insert items to the right or left of node?

Say I have a List of Numbers I want to insert everything in the A1 column to the left if it's bigger than A1, if it's not bigger than I want to insert it to the right of my decision node. Something ...
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25 views

PHP Machine Learning - Graphical representation of Decision Tree

Good Morning All, I am very new to machine learning , however I managed to create my first program. I however would like to visualise the decision tree which the programme used to reach a conclusion(...
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28 views

Binary Splitting Decision Tree splitting decision for numerical values

I'm trying to calculate the entropy gain to decide the best decision split node, however I am having trouble understanding how to do this with doubles. I have columns listed out as A1 and A2 the ...
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1answer
47 views

Plotting a ctree method decision tree in caret, remove unwanted bargraph underneath

I'm running a ctree method model in caret and trying to plot the decision tree I get. This is the main portion of my code. fitControl <- trainControl(method = "cv", number = 10) dtree <- train( ...
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0answers
36 views

XGBoost binary:logistic and self-implemented log loss do not yield same results

I was trying out the custom loss functionality in XGBoost and ran across https://github.com/dmlc/xgboost/blob/master/demo/guide-python/custom_objective.py which demonstrated how to implement the ...
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1answer
21 views

Access trees and nodes from LightGBM model

In sci-kit learn, it's possible to access the entire tree structure, that is, each node of the tree. This allows to explore the attributes used at each split of the tree and which values are used for ...
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Visualizing decision jungle in Azure Machine Learning Studio

I have trained a decision jungle model on Azure Machine Learning, and now I want to visualize the trees, to see if I can identify the root nodes that are the most determinant in the decision. When I ...
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9 views

How do you ensure that decision tree does not have irrelevant attributes?

I have a data set containing variables that predict if a person needs additional learning material. If I were to structure the data set so that certain color of dress almost always correlated with "...
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2answers
55 views

XGBoost - n_estimators = 1 equal to single-tree classifier?

I have some training pipeline that heavily uses XGBoost instead of scikit-learn, only because of the way XGBoost cleanly handles null values. However, I'm tasked with introducing non-technical folks ...
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10 views

How to deal with missing values in a categorical variables

I have a categorical variables where each variable has missing observations. How do i need to deal with these missing observations which has empty cells. Do i need to fill it with NaN or 0?
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1answer
59 views

How to properly implement voting on decision tree bagging method with for loop?

I am new to python and machine learning I've tried to look at at sklear documentation for voting classifier and to be quite hones I was bot lost. I have performed bagging for a decision tree inside a ...