In machine learning and statistics, classification is the problem of identifying which of a set of categories a new observation belongs to, on the basis of a training set of data containing observations whose category membership is known.

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Which classifier is efficient in dealing with test query which belongs to no trained class?

Suppose classifier trained with 5 class, and input query content does not belong to any of the trained class data. Naive bayes provides and random class as a result here. Which classifier deals best ...
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1answer
17 views

dealing with the missing value when using C4.5 technique

I'm trying to build a classifier "model" using some classification techniques. Beginning with the C4.5 technique, faced the problem of missing values so: How to deal with the missing values exist in ...
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26 views

How to interpret concretely the misclassification error? [migrated]

I'm reading about Cart classification with rpart on R, and after all we should compute the misclassification error, given that y is the column that stocks classes, and x is the variable columns and ...
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1answer
39 views

Music Genre classification based on plays in radios [on hold]

I have data about thousand of tracks being played in different radio stations. Numbers are play count for each track in each radio station: station1 station2 station3 station4 ... ...
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1answer
16 views

SVM parameter tuning

I am newbie to using svm for classification. I want to tune svm parameters by .TrainAutofunction in EmguCV. But I don't know what are the range(min-max value) of below parameters that I should give to ...
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4answers
404 views

Can sklearn Random Forest classifier adjust sample size by tree, to handle class imbalance?

Perhaps this is too long-winded. Simple question about sklearn's random forest: For a true/false classification problem, is there a way in sklearn's random forest to specify the sample size used to ...
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1answer
20 views

Text detection on images

I am a very new student on machine learning. I just wanted to ask what are possible ways to improve a method (Naive Bayes for example) to get better results classifying images into text or non-text ...
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0answers
20 views

Error in Confusion Matrix : the data and reference factors must have the same number of levels

I've trained a Linear Regression model with R caret. I'm now trying to generate a confusion matrix and keep getting the following error: Error in confusionMatrix.default(pred, testing$Final) : the ...
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1answer
8 views

classify the units in Deep learning for image classification

Suppose we have a database with 10 classes, and we do classification test on it by Deep Belief Network or Convolutional Neural Network. The question is that how we can understand which neurons in the ...
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4answers
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Neural networks for email spam detection

Let's say you have access to an email account with the history of received emails from the last years (~10k emails) classified into 2 groups genuine email spam How would you approach the task of ...
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1answer
17 views

Vowpal Wabbit model works badly

I am using Vowpal Wabbit to classify multi class images. My data set is similar to http://www.cs.toronto.edu/~kriz/cifar.html , consisting of 3000 training samples and 500 testing samples. The ...
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0answers
19 views

Auto-Recommendation System for suggest items via Data Mining and Machine Learning

i develop web-base portal with asp.net mvc and C# about Placement Process that user upload resume and find job also employer register job opportunity. i want to develop Auto-Recommendation system for ...
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6 views

Does Sample Affect Parameter Tuning with Hill Climbing

I am new to this area, but hope my question makes sense here. I am trying to build a binary classification model using Logistic Regression. There is around 10 features for every instance, and there's ...
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17 views

Vowpal Wabbit multiclass (csoaa) classification always returns max label, even for training data

I am trying to get a simple multiclass classification to work using Vowpal Wabbit, but despite reading every available example and stackoverflow posts, it just won't work correctly. This is what my ...
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0answers
26 views

Classification labeled rows based on multiple columns of different types

I have a set of rows which are to be classified. The row contains multiple fields ranging from numeric data to large text chunks. How do i Integrate them in a single classifier. For now, I was only ...
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1answer
23 views

Select a random value according to a distribution , java equivalent [on hold]

I'm trying to code the extra-trees classifier algorithm proposed here but I'm stuck on the part where i have to select a threshold Ath at random according to a distribution N(µ,σ), where µ and σ are ...
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1answer
41 views

Identify the factors with the highest counts and sums within each combination of two grouping variables

For this study, we recorded the species and diameter at breast height (dbh) for every tree > 1.5m in height and >1.8 cm in diameter within a 100m2 circular plot. There were 100+ circular plots ...
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0answers
29 views

weka Java classification issue [closed]

The marked line is intended to classify the unlabelled instance to one of the given two given categories after training , but rather it gives a NullPointerException. The file is not empty, I have ...
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1answer
30 views

Lightweight incremental classification of 1 dimensional data in java

I have a set of pairs of observations (value, class). Values are natural numbers. There are only two classes. I expect that it is quite easy to separate the classes at a single decision point, e.g., ...
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Java use jAudio to classify music, which features to use?

I am working on music genre classification based on Java domain. (5 classes so far: Jazz,folk,pop,classical,easylistening) The tools I have used is jAudio, dom4j, and LibSVM or BP The flow is use ...
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0answers
18 views

Naive Bayes python taking long time [on hold]

I am trying to classify text data using naive bayes classifier using python nltk. For training it for 50,000 records it take a very long time. How can i improve it to run faster.
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16 views

Classifier for mixed data points

I have a dataset looking like this: Item: 1 -> Label: 50, Score: 0.0015272063901647925, FALSE Item: 2 -> Label: 50, Score: 0.012096011079847813, TRUE Item: 3 -> Label: 50, Score: ...
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2answers
179 views

Multiclass classification with growing number of classes

I have a dataset of music listening history: when it was listened, where it was listened, what was the weather outside (and many more other features are coming soon) and a track_id as a label. I'm ...
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9 views

Segmentation - What is a good way to combine features for two or more traces segmented together?

I need to combine the features for two or more traces to send to my Random Forest symbol classifier. My segmenter also needs to combine the features for two or more traces to try to predict the best ...
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9 views

Which MaxEnt accuracy to report?

In NLTK, the MaxEnt classifier reports multiple accuracy metrics, as shown in the screenshot below. The first set is the accuracy per iteration. The second, printed at the bottom of the screenshot, is ...
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31 views

Inconsistent results when classifying with a neural network

I have used this MATLAB code for the classification using neural network. net=newff(Train, group); net.trainParam.epochs=100; net.trainParam.show=10; net.trainParam.Ir=0.05; net.trainFcn = 'trainb'; ...
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24 views

float() argument must be a string or a number in Stochastic Gradient Descent of scikit learn

I am trying to use svm classifier for text classification, self.clf = linear_model.SGDClassifier(alpha=1e-3,loss="hinge", penalty="l2") data_folder = self.root_dir + "/trec_data" train_dataset = ...
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0answers
13 views

String predictive data analysis using WEKA

I am new to data mining and came across this tool WEKA. Can someone help me with the following problem. I have two datasets of products. Lets say for example *) The first dataset has columns like ...
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1answer
19 views

Authorship Attribution using Machine Learning [closed]

I am working on a practical machine learning problem as an exercise. I just need help formulating my problem. I have text from 20 books of a famous old Author. there are 5 more books that has been ...
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2answers
405 views

How to control depth of tree weaklearner with Matlab's fitensemble

I'm using Matlab's fitensemble function on a data with 8 features and 5000 samples. With the following command I can train a model: ada= fitensemble(datafeatures,dataclass,'AdaBoostM1',200,'tree'); ...
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0answers
7 views

ROC for multiple parameters?

I work on an algorithm for object detection in images (counting prostate cells via nuclei detection). I have a ground-truth dataset, where each object I want to detect is annotated. The algorithm I ...
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1answer
22 views

SkLearn Multinomial NB: Most Informative Features

As my classifier yields about 99% accuracy on test data, I am a bit suspicious and want to gain insight in the most informative features of my NB classifier to see what kind of features it is ...
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0answers
16 views

How to read (understand) the output from RapidMiner Neural Network

Hi fellow data miners. I'm in a small project where I'm using RapidMiner Neural Networks to predict wind speed. The two inputs are a Model's predicted Wind direction and Wind speed and, the output is ...
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1answer
46 views

Is a Conditional Random Field with training sequences of length 1 just a Maxent model?

I am trying to perform a classification procedure where my training data looks like this: (state, (feature_1, feature_2, feature_3, ..., feature_n)) Thus, given a set of features, I need to predict ...
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0answers
31 views

value error happens when using GridSearchCV

I am using GridSearchCV to do classification and my codes are: parameter_grid_SVM = {'dual':[True,False], 'loss':["squared_hinge","hinge"], ...
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3answers
359 views

Using StratifiedShuffleSplit with sparse matrix

I'm trying to replicate the example of StratifiedShuffleSplit with X not being an array but a sparse matrix. In the example below, this matrix was created by a DictVectorizer fit to an array of mixed ...
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Sequential based classifiers in Weka library in java

Could I ask is the SVM classifier in Weka library sequential based?? and what are other classifiers that considered sequential based??
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0answers
28 views

Finding (using Python) the terminal node of a Decision Tree applied to a sample input

Using Python, I have built a decision tree on a set of input samples (lets call that array input_X), using DecisionTreeClassifier. How do I run the tree on input_X to get the terminal node (i.e., leaf ...
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1answer
31 views

Python: In which cases will random forest and SVM classifiers can produce high accuracy?

I am using Random Forest and SVM classifiers to do classification, and I have 18322 samples which are unbalanced in 9 classes (3667, 1060, 1267, 2103, 2174, 1495, 884, 1462, 4210). I use 10-fold CV ...
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2answers
32 views

Is it possible to adapt the sci-kit CountVectorizer for other features (not just n-grams)?

I'm new to scikit and working with text data in general, and I've been using the sci-kit CountVectorizer as a start to get used to basic features of text data (n-grams) but I want to extend this to ...
0
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1answer
33 views

How to calculate KNN Variable Importance in R

I implemented an Authorship attribution project where I was able to train my KNN model with articles from two authors using KNN. Then, I classify the author of a new article to be either author A or ...
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3answers
59 views

Decision Tree, What is Wrong here?

I took a contest two days ago. one of our question is as follows: decision tree with depth 2 is constructed for two binary feature. how many features are in hypothesis space that can be shown ...
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0answers
22 views

Training Dataset required for Classifier [closed]

I am currently trying to develop a classifier in python using Naive Bayes technique. I need a dataset so that I can train it. My classifier would classify a new document given to it into one of the ...
1
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1answer
44 views

Cross validation and pipeline in sci-kit learn

For a machine learning project, i'm trying to predict a categorical outcome variable using features extracted from text. Using cross validation, i split my X and Y into a test set and training set. ...
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0answers
43 views

get probabilistic forecast of Bayesian Network in R (bnlearn package)

library(bnlearn) ?bnlearn:::predict.bn.fit says that predict returns a factor for discrete networks. In other words, it returns only the most likely class for each new observation. But what I need ...
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0answers
39 views

Malware Classification: Using strace to classify the malware samples [on hold]

I have 1000 malware samples. I want to have feature vector to classify those malware samples. I'm planning to extract the feature vector using strace. What can be the best strategy to define the ...
0
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0answers
6 views

what does weka do for categorical attributes in rotation forest method?

I have a dataset which has numerical and categorical attributes. I'am doing classification by rotation forest in weka. I know that rotation forest just works in numerical attributes because it ...
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1answer
34 views

Caret error using GBM, but not without caret

I've been using gbm through caret without problems, but when removing some variables from my dataframe it started to fail. I've tried with both github and cran versions of the mentioned packages. ...
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1answer
42 views

How to correctly override and call super-method in Python

First, the problem at hand. I am writing a wrapper for a scikit-learn class, and am having problems with the right syntax. What I am trying to achieve is an override of the fit_transform function, ...
2
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3answers
3k views

How to create a dendrogram with colored branches?

I would like to create a dendrogram in R which has colored branches, like the one shown below. So far I used following commands to create a standard dendrogram: d <- dist(as.matrix(data[,29])) ...