Questions tagged [multilabel-classification]

Multi-label classification refers to the problem in Machine Learning of assigning multiple target labels to each sample, where the labels represent a property of the sample point and need not be mutually exclusive.

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Using multiple columns of text as features for multi class classification

I have a dataset containing multiple text columns which I have to use as features for Machine Learning model for multiclass classification. eg. feature(all text) target(text classes) feature1 ...
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1answer
30 views

How to resolve bad input shape for Multilabel classification

I am trying to do multilabel classification with a TfIdfVectorizer transformed data with shape (218,1861) on tags which have the shape of (218,5). I am getting a ValueError: bad input shape (218,...
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34 views

SageMaker Image Classification: How to get an ordered list of classes corresponding to the output of the model

I'm training a model for multi-class image classification on AWS sagemaker using a custom dataset. The dataset has around 50 classes. I'm following this notebook: Image classification transfer ...
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40 views

Guessing the categories for receipts

We have large number of receipts (more than 20k) and want to categories these receipts. One receipt can belongs to one or more categories. And we have more than 500 categories currently. i.e If ...
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45 views

Multi-label classification Keras metrics

Which metrics is better for multi-label classification in Keras: accuracy or categorical_accuracy? Obviously the last activation function is sigmoid and as loss function is binary_crossentropy in this ...
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1answer
42 views

Pre-training for multi label classification

I have to pre train a model for multi label classification. I'm pretraining with cifar10 dataset and I wonder if I have to use for the pre training 'categorical_crossentrpy' (softmax) or '...
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43 views

Combining multiple regressions in mlr

Is there a way to combine multiple regressions in the mlr package analogously to the multilabel classification with the makeMultilabelBinaryRelevanceWrapper()? I have several dependent variables and ...
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1answer
41 views

Is it possible to let a neural network classify entities based on classified documents? [closed]

I tagged a dataset of texts with independent categories. When running a CNN classifier in Keras, I receive an accuracy of > 90%. My texts are customer reviews "I really liked the camera of this ...
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2answers
73 views

Using fit_generator in Keras Model

I'm trying to train a neural network using Keras and Tensorflow backend. My X is text descriptions which I have processed and transformed into sequences. Now, my y is a sparse matrix since it's a ...
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1answer
149 views

How to predict a label in MultiClass classification model in pytorch?

I am currently working on my mini-project, where I predict movie genres based on their posters. So in the dataset that I have, each movie can have from 1 to 3 genres, therefore each instance can ...
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2answers
53 views

Does any H2O algorithm support multi-label classification?

Is deep learning model supports multi-label classification problem or any other algorithms in H2O? Orginal Response Variable -Tags: apps, email, mail finance,freelancers,contractors,zen99 genomes ...
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how many classes h2o deep learning algorithm accepts?

I want to predict the response variable, and it has 700 classes. Deep learning model parameters from h2o.estimators import deeplearning dl_model = deeplearning.H2ODeepLearningEstimator( ...
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47 views

accuracy for multi label text classification

How to find the accuracy, f1 score, precision and recall for this program. I want to calculate confusion matrix for this program and I'm having trouble to find these using this functions : metrics....
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Can I implement the classifier-chains algorithm using TensorFlow?

I'm learning about multi-label classification and want to implement the Classifier Chains algorithm. I have implemented a Binary-Relevance model using TensorFlow using ResNet-50 pretrained on ...
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15 views

neutral label for NLTK

I have similar problem like below Why did NLTK NaiveBayes classifier misclassify one record? In my case, I queried positive feed and built positive_vocab and then queried negative feed and built ...
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16 views

Multi-label classification: scikit-learn weighted and micro Recall averages produce the same values, whereas Precision do not

I have computed the weighted and micro averages for the results of a multi-label classification problem which involves 37 unbalanced classes (min 300 examples - max ~1000 examples). I have found that ...
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Keras LSTM training works but prediction is always the same

I am trying given a question to predict a domain in the 12 domains available. My model is the following: train_model = Sequential() train_model.add(Embedding(vocabulary_size(~68k), embedding_size(300)...
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1answer
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Transform pandas Data Frame to use for MultiLabelBinarizer

My question is: How can I transform a Data Frame like this to eventually use it in scikit's MulitLabelBinarizer: d1 = {'ID':[1,2,3,4], 'km':[80,90,90,100], 'weight':[10,20,20,30], 'label':['A','B','C'...
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Training multi-label classifier with unbalanced samples in Keras

I'm trying to train a keras model that takes in samples, let's say x_i for sample i, and predicts multiple independent labels, {y_hat}_ij, such that {y_hat}_ij = 1 if the model predicts sample x_i to ...
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49 views

Segmentation Fault 11 when retraining Mask R-CNN

When running models/research/run.sh, in tensorflow, to retrain Mask R-CNN pets model, I get a Segmentation Fault: 11 error. I am training on a CPU (MacOS). No stack information is available to share ...
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1answer
64 views

Caffe: Accuracy stuck on 0

I'm trying to train AlexNet with multi class lmdb data. The input layers are: layer { name: "data" type: "Data" top: "data" data_param { source: "/home/gal/caffe-1.0/models/mixDCNN/hdf5/...
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140 views

Python: Imbalanced data for XGBoost Multi-label classification

I have a dataset of a stock's returns where the Y-label is price change direction (= 2 if upward tick, = 1 if downward tick, and = 0 if no move. Some of the features, X, include the lagged label ...
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42 views

Tensorflow multi-label with NCE or sampled softmax

Are there any code examples for using Tensorflow's sampled_softmax_loss or nce_loss functions with multi-label problems? That is, where num_true is more than one? What follows is my attempt to create ...
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Second GPU not utilized - tensorflow gpu with python Bi-LSTM - Multi class Multi label classification

My second GPU is not used and below is my model and its associated training code. (Bi-LSTM tensorflow and python). Could anyone give me where to do changes (tf.devices & tf.variable_scope and so ...
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1answer
66 views

Convolutional Neural Network : Weights and Bias initialization

I'm building convolutional neural network for classification of the data into different categories The input data is of shape : 30000, 6, 15, 1 the data has 30000 samples, 15 predictors and 6 possible ...
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Mulan cross validation evaluation failure

I am using mulan for multi label classfication and facing a weird problem.When i am classifying with six labeled classes it works fine with any number of cross validation folding. But when i am ...
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29 views

Keras multi-label time-series classification considering time-series as an input image vector

I am trying to build a multi-class classifier using Keras. I am not quite sure I have implemented it correctly. Data is like this label time-series variables [0:25728} index 0 1 2 3 4 ...
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Why the classification results are concentrated in one category in CNN model?

I want to use CNN model in classification and the num_classes is 22. I use the example code of TensorFlow directly. The number of training samples is 16522. All the pictures has a same shape (50,52). ...
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1answer
206 views

Multi-class and multi-label image classification using Caffe

I'm trying to create a single multi-class and multi-label net configuration in caffe. Let's say classification of dogs: Is the dog small or large? (class) What color is it? (class) is it have a ...
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33 views

hierarchical image classification in tensorflow

I want to do two steps classification. for each input I want to go for classify it to class1, 2, or ... and then based on each class, classify my input to specific class (for example is in first step ...
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1answer
72 views

keras custom metrics for multi-label classfication

I'm using sigmoid and binary_crossentropy for multi-label classification. For example, the label of y_true is like [1,0,1,0,0], and the label of y_pred is like [0.8,0.3,0.9,0,0]. How can I set a ...
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1answer
51 views

Multi-label classification

I have a dataset that looks like A B C D sex weight 0.955136 0.802256 0.317182 -0.708615 female normal 0.463615 -0.860053 -0.136408 -0.892888 ...
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Predict_proba function for Multi-target Classification

I am working on a Multi-Target (binary) classification. There are 11 targets and I am using sklearn's MultiOutputClassifier. I am having difficulty with the Predict_proba function. See a snippet of ...
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2answers
86 views

Caffe - multi-class and multi-label image classification

I'm trying to create a single multi-class and multi-label net configuration in caffe. Let's say classification of dogs: Is the dog small or large? (class) What color is it? (class) is it have a ...
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0answers
8 views

weird (?) conv-net behaviour

I have an imagenet pre-trained resnet architecture (like resnet18 but one residual block less). First I used it for 'mono-label' classification. This worked quite well. (4 classes) To make my ...
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How to calculate the accuracy when dealing with multi-class mutlilabel classification in tensorflow?

I am working with FER2013Plus dataset from https://github.com/Microsoft/FERPlus which contains the fer2013new.csv file. This file contains labels for each image in the dataset. An example on labels ...
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1answer
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Multi label classification using meka java

Can anyone help with full documentation for classifying a multi label dataset using meka java code..i have to train 80% data first and then test 20% data.How to do this with meka?It will be really if ...
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cost-sensitive multi-label classification using mlr package

Is there a way to perform a cost-sensitive multi-label classification with example-dependent costs using the mlr package? (not class-dependent costs! see: mlr tutorial) It seems to me the according ...
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1answer
61 views

Can I minimize tf.nn.sigmoid_cross_entropy_with_logits without reduce_mean?

I'm training my multi label model with tensorflow. The loss is calculated with tf.nn.sigmoid_cross_entropy_with_logits. Can I just minimize the loss without reduce_sum or reduce_mean like this: ... #...
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1answer
24 views

How to convert to a multi-class classification model?

I am trying to implement multi-class classification using the cloud samples github.It was a classification model and i have to alter the code.I found some suggestion to change the final layer and loss ...
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1answer
50 views

R: XGBoost and Feature Hashing. MError keeps increasing

I'm working on a multiclassification problem with just over 500 classes. The data is restaurant menu related and my goal is to classify an item based off the item name and the category it belongs to. ...
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1answer
75 views

How to get Top N predictions using sklearn's SGDClassifier

I try to set up a simple text classification task with the SGDClassifier of scikit and try to get the top N predictions back including their probabilities. As sample training data I have the three ...
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146 views

How to visualize errors of multilabel classifiers

For multiclass classification you would normally choose a confusion matrix to plot the error of predicted classes against the target classes. What is the best way to visualize errors of multilabel ...
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1answer
199 views

Feedback loop implementation for multi-label DNNClassifier

Our current implementation of recommender system is based on tf.estimator.DNNClassifier. And we're using weight_column hyper-parameter defined as numeric_column (based on this answer). During initial ...
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2answers
49 views

multi label classification confusion matrix have wrong number of labels

i am feeding in y_test and y_pred to a confusion matrix. My data is for multi label classification so the row values are one hot encodings. my data has 30 labels but after feeding into the confusion ...
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1answer
38 views

image multi classification with keras

so if I have two labels "dogs" and "cats" and I want to create multi classification neural network. now if I provided a new random image which is not a dog or a cat, is there a way I can teach the ...
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95 views

multi label classification in keras

I tried to build a model that would help me identify images of a multi label classification problem, for example if I had pictures of cats, dogs and cows. I ran a CNN model but it didnt catch at all (...
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50 views

How to pickle a sklearn pipeline for multi label classifier/one vs rest classifier?

I am trying to create a multi-label classifier using the one vs rest classifier wrapper. I used a pipeline for TFIDF and the classifier. When fitting the pipeline, I have to loop through my data ...
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How can I reduce the “zeroes” effect on a high dimensional sparse matrix?

I'm a newbie at python and data science and I'm trying to run a multilabel classification. However, I have over 2.000.000 observations and 230 categories to predict. The main problem here is that my ...
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Difference between onevsrestClassifier and individually applying the classifier on the labels in multilabel classification

My purpose is to do multi-label classification. I have read this link which talk exact the same thing I am looking for. however it is more based on the concept rather than the code implemented. I ...