0
votes
0answers
89 views

C5.0 classification using the caret package in R

I'm having trouble implementing the c5.0 in the caret package My code is as follows: C5fit <- train(Round~.,data = RoundTrain, method = "c5.0") When I try to fit the model I get the following ...
0
votes
1answer
27 views

Classification tree that can fetch more than 1 prediction per observation

I'm searching for an algorythm from the classification trees algorythm familiy, that can provide a number (more than 1) of predicitions (in some ranked order) per observation. To be more specific - I ...
0
votes
1answer
81 views

Can't implement Decision tree in R using 'party' package. How to do it?

I am trying to construct decision tree in R using the "party" package, I am following the approach mentioned on http://www.rdatamining.com/examples/decision-tree in which they have shown decision ...
3
votes
1answer
286 views

Viz a C50 decision tree in R

I am using the C50 decision tree algorithm. I am able to build the tree and get the summaries, but cannot figure out how to plot or viz the tree. My C50 model is called credit_model In other ...
0
votes
1answer
55 views

scikit-learn interpretation of integer variables

I'm just started to use scikit-learn after years of datamining with SAS/SPSS products. I'm amazed by the capability of scikit-learn and pandas however there is one thing I can't figure out by myself. ...
-2
votes
1answer
79 views

Why Adtree has more accuracy than C4.5 [closed]

I've been working on a data mining project lately, and it confuses me a lot that alternating decision tree seems to have more accuracy than WEKA built-in j48 algorithm. I don't have much idea about ...
0
votes
1answer
183 views

DecisionTree Predict

i'm a bit newbie in R data mining algorithms and I need to develop a script that help me to predict an event. So, i've chosen a decision tree model to help with this task. My dataset has this ...
0
votes
1answer
1k views

How to use Decision Tree Classification Matlab?

I have data in form of rows and columns where rows represent a record and column represents its attributes. I also have the labels (classes) for those records. I know about decision trees concept and ...
1
vote
3answers
128 views

can “splitting attribute” appear many times in decision tree?

Just want to clarify one thing: the same attribute can appear in decision tree for many times as long as they are in different "branches" right?
0
votes
1answer
449 views

How to let J48 fit data

I have a small question about the J48 from Weka. I run this algorithm from R, using RWeka. Probably an easy solution, but i can't seem to find it on the web. A very small example: require(RWeka) ...
2
votes
1answer
1k views

Exact implementation of RandomForest in Weka 3.7

Having reviewed the original Breiman (2001) paper as well as some other board posts, I am slightly confused with the actual procedure used by WEKAs random forest implementation. None of the sources ...
1
vote
1answer
55 views

How to Save an Input table in Mining Model Prediction tab in SSAS

I am using SSAS (Visual Studio 2010) to create a Decision Tree model. After the model has been created I can go to the Mining Model Prediction tab to "score" another data set against the model. ...
0
votes
2answers
2k views

J48 decision tree

I've been searching the web on how to generate J48 decision trees but so far after almost a couple days I haven't found any result about how to generate a J48 decision without Weka, I mean manually by ...
2
votes
1answer
118 views

manually control decision tree in weka

Month is an attribute in my dataset, which I believe is very important and I want it to be split first in j48. But by default, weka would choose other attribute to split first. Is there any way to ...
1
vote
2answers
171 views

How to classify a small and peculiar subset out of a large database?

I have to perform a data mining task on a database containing informations about insurance policies. Each tuple indicates data about a single policy, along with information regarding the agency that ...
1
vote
2answers
3k views

rapid miner: how to add a 'label' attribute to a dataset?

I want to apply a decision tree learning algorithm to a dataset I have imported from a CSV. The problem is that the "tra" input of the Decision Tree block is still red, stating "Input example set must ...
0
votes
2answers
279 views

Decision trees Cross Validation questions

so im in the middle of writing a decision tree program. lets say i have a dataset of 1000 instances. as i understand it - with cross validation i split the dataset to 900-100 groups. each time using ...
0
votes
1answer
688 views

Data structure for representing Decision Tree Induction

Currently, I've been involved in some projects related to Data Mining. And, I've to classify the given data sets (.csv format) into different classes by using decision tree induction with GINIsplit as ...
0
votes
1answer
372 views

Decision Tree - Sparse dataset

I have very sparse dataset with huge number of attributes (~12 K features and 700K records) I can not fit it in memory (attribute values are binomial i.e. True/False) , As it is sparse I keep the ...
1
vote
2answers
642 views

how to get all terminal nodes - weight & response prediction 'ctree' in r

Here's what I can use to list weight for all terminal nodes : but how can I add some code to get response prediction as well as weight by each terminal node ID : say I want my output to look like ...
0
votes
1answer
1k views

C4.5 and ID3 algorithms with emphasis on practical details

I began to apply data mining algorithms. Now I study decision trees. There a lot of material across the Internet about C4.5 and ID3 algorithms, but I want to know practical details, pros and cons and ...
-2
votes
2answers
544 views

Decision Tree vs Naive Bayes vs Apriori Algorithm and Multi Regression Model [closed]

What is the difference between these algorithms? Decision Tree - Naive Bayes - Apriori Algorithm - Multi Regression Model
3
votes
2answers
2k views

How to deal with missing attribute values in C4.5 (J48) decision tree?

What's the best way to handle missing feature attribute values with Weka's C4.5 (J48) decision tree? The problem of missing values occurs during both training and classification. If values are ...
0
votes
1answer
258 views

Decision Tree. Strategy for noise

What are the good strategies to combat noise in decision tree? In my training data, I have two records with the same attributes but they give different classification. Female, Luxury, LV, Yes ...
2
votes
1answer
1k views

C4.5 decision tree: classification probability distribution?

I'm using Weka's J48 (C4.5) decision tree classifier. In general for a decision tree, can a classification probability distribution be determined once you hit a leaf? I know with Naive Bayes, each ...
0
votes
3answers
181 views

Converting to binary for decision tree algorithm in oracle

i have a problem while dealing with data mining I now attached a picture which show the table that i have. In this table there is a subscriber_id column which is unique and i have to use the decision ...
0
votes
2answers
3k views

How to find feature importance in a Weka-built decision tree

I used Weka to successfully build a J48 (C4.5) decision tree. I would now like to evaluate how effective or important my features are. One obvious way is to loop through all the features, remove one ...
0
votes
1answer
267 views

Classifcation/Decision Trees and Choosing Splits

This is a very basic example. But I am doing some data analysis and am continually finding myself writing very similar SQL count queries like so to generate probability tables. My tables are defined ...
13
votes
1answer
9k views

Decision tree vs. Naive Bayes classifier

I am doing some research about different data mining techniques and came across something that I could not figure out. If any one have any idea that would be great. In which cases is it better to use ...
0
votes
2answers
394 views

Java library to generate and work with generated decision trees

I'm looking for a Java libraries that can not only build decision trees using ID3 or C4.5 algorithms, but also store newly built tree in some suitable format. The matter is that I'am planning to use a ...
2
votes
3answers
840 views

How decision tree calculate the spliting Attribute

When we are using any decision tree algorithm and our data set consists of numerical values. i have found that the results provided by the program splits the node on values that are not even exist in ...
0
votes
1answer
173 views

Microsoft Decision Trees: support cases for a specific node

I'm using Microsoft Decision Trees in Microsoft Analysis Services Data Mining, and need to show the historical data (the support cases from the training data used to train the decision tree) for a ...
5
votes
4answers
2k views

Decision Tree Learning and Impurity

There are three ways to measure impurity: What are the differences and appropriate use cases for each method?
1
vote
2answers
355 views

question about decision trees

after studying decision tree for a while, I noticed there is a small technique called boosting. I see in normal cases, it will improve the accuracy of the decision tree. So I am just wondering, why ...
3
votes
3answers
959 views

The effect of Decision Tree Pruning

I want to know if I build up a decision tree A like ID3 from training and validation set,but A is unpruned. At the same time,I have another decision tree B also in ID3 generated from the same training ...
1
vote
3answers
3k views

Decision tree induction open-source code

I am preparing a task for computer vision class, which involves training a simple classifier after extracting features from images. Since machine learning is not the main topic here, I don't want ...
4
votes
5answers
959 views

Interactive Decision Tree Classifier

Can anyone recommend a decision tree classifier implementation, in either Python or Java, that can be used incrementally? All the implementations I've found require you to provide all the features to ...
2
votes
2answers
1k views

Languages for implementing decision trees

What would be a good choice of programming language in which to implement a decision tree? The results of the implementation will be for personal use only, so no need to consider ability to publish ...