نتایج جستجو برای: imbalanced classes

تعداد نتایج: 162059  

Journal: :Inf. Process. Manage. 2008
Efstathios Stamatatos

Authorship analysis of electronic texts assists digital forensics and anti-terror investigation. Author identification can be seen as a single-label multi-class text categorization problem. Very often, there are extremely few training texts at least for some of the candidate authors or there is a significant variation in the text-length among the available training texts of the candidate author...

2012
Victoria López Alberto Fernández María José del Jesús Francisco Herrera

The scenario of classification with imbalanced data-sets has supposed a serious challenge for researchers along the last years. The main handicap is related to the large number of real applications in which one of the classes of the problem has a few number of examples in comparison with the other class, making it harder to be correctly learnt and, what is most important, this minority class is...

2015
Evandro Brasil da Fonseca Renata Vieira Aline A. Vanin

In this paper we present our proposed model for coreference resolution and we discuss the imbalanced dataset problem related to this task.We conduct a few experiments showing how well our set of features can solve coreference for Portuguese. In order to minimize the imbalance between the classes, we evalaluated the system on the basis of well known re-sampling techniques.

Journal: :Appl. Soft Comput. 2014
Bartosz Krawczyk Michal Wozniak Gerald Schaefer

Real-life datasets are often imbalanced, that is, there are significantly more training samples available for some classes than for others, and consequently the conventional aim of reducing overall classification accuracy is not appropriate when dealing with such problems. Various approaches have been introduced in the literature to deal with imbalanced datasets, and are typically based on over...

Journal: :Journal of computational biology : a journal of computational molecular cell biology 2014
Md. Muksitul Haque Michael K. Skinner Lawrence B. Holder

In machine learning, one of the important criteria for higher classification accuracy is a balanced dataset. Datasets with a large ratio between minority and majority classes face hindrance in learning using any classifier. Datasets having a magnitude difference in number of instances between the target concept result in an imbalanced class distribution. Such datasets can range from biological ...

2011
Satyam Maheshwari Sanjeev Sharma

Today’s most of the research interest is in the application of evolutionary algorithms. One of the examples is classification rules in imbalanced domains. The problem of Imbalanced data sets plays a major challenge in data mining community. In imbalanced data sets, the number of instances of one class is much higher than the others, and the class of fewer representatives is of more interest fro...

2017
Arjun Magge Matthew Scotch Graciela Gonzalez

Most practical text classification tasks in natural language processing involve training sets where the number of training instances belonging to each of the classes are not equal. The performance of the classifier in such a case can be affected by the sampling strategies used in training. In this work, we describe a cost sensitive and random undersampling variants of convolutional neural netwo...

2013
Madhuri Agrawal Gajendra Singh Ravindra Kumar Gupta

In binary classification problems it is common for the two classes to be imbalanced: one case is very rare compared to the other. Traditional classification approaches usually ignore this class imbalance, causing performance to suffer accordingly. In contrast, the algorithm infinitely imbalanced logistic regression (IILR) algorithm explicitly addresses class imbalance in its formulation. This p...

2014
Reena Srivastava Hemlata Pant

44 Hemlata Pant and Dr. Reena Srivastava A SURVEY ON MULTI-RELATIONAL CLASSIFICATION OF IMBALANCED DATABASES Hemlata Pant, Dr. Reena Srivastava Research Scholar, School of Engineering, BBD University, Lucknow Dean, School of Computer Applications, BBD University, Lucknow ____________________________________________________________________________________ ABSTRACT: The multirelational classifica...

Journal: :J. Inf. Sci. Eng. 2013
Cunhe Li Guoqiang Shi

Multi-instance multi-label learning (MIML) is a novel learning framework where each sample is represented by multiple instances and associated with multiple class labels. In several learning situations, the multi-instance multi-label RBF neural networks (MIMLRBF) can exploit connections between the instances and the labels of an MIML example directly. However, it is quite often that the numbers...

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