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LIBSVM: A library for support vector machines

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TLDR
Issues such as solving SVM optimization problems theoretical convergence multiclass classification probability estimates and parameter selection are discussed in detail.
Abstract
LIBSVM is a library for Support Vector Machines (SVMs). We have been actively developing this package since the year 2000. The goal is to help users to easily apply SVM to their applications. LIBSVM has gained wide popularity in machine learning and many other areas. In this article, we present all implementation details of LIBSVM. Issues such as solving SVM optimization problems theoretical convergence multiclass classification probability estimates and parameter selection are discussed in detail.

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Citations
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Hybrid feature selection by combining filters and wrappers

TL;DR: A hybrid feature selection method which combines two feature selection methods - the filters and the wrappers is introduced, which shows that equal or better prediction accuracy can be achieved with a smaller feature set.
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iRSpot-EL: identify recombination spots with an ensemble learning approach.

TL;DR: A predictor, called iRSpot-EL, is developed by fusing different modes of pseudo K-tuple nucleotide composition and mode of dinucleotide-based auto-cross covariance into an ensemble classifier of clustering approach, which remarkably outperforms its existing counterparts.
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Self-Recalibrating Surface EMG Pattern Recognition for Neuroprosthesis Control Based on Convolutional Neural Network.

TL;DR: A self-recalibrating classifier that can be automatically updated to maintain a stable performance over time without the need for user retraining is proposed, based on convolutional neural network using short latency dimension-reduced sEMG spectrograms as inputs.
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A spatial-spectral kernel-based approach for the classification of remote-sensing images

TL;DR: The proposed method deals with the joint use of the spatial and the spectral information provided by the remote-sensing images with very high spatial resolution and is competitive with other contextual methods.
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Acoustic classification of multiple simultaneous bird species: A multi-instance multi-label approach

TL;DR: This work formulates the problem of classifying the set of species present in an audio recording using the multi-instance multi-label (MIML) framework for machine learning, and proposes a MIML bag generator for audio, i.e., an algorithm which transforms an input audio signal into a bag-of-instances representation suitable for use with M IML classifiers.
References
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Journal ArticleDOI

Support-Vector Networks

TL;DR: High generalization ability of support-vector networks utilizing polynomial input transformations is demonstrated and the performance of the support- vector network is compared to various classical learning algorithms that all took part in a benchmark study of Optical Character Recognition.

Statistical learning theory

TL;DR: Presenting a method for determining the necessary and sufficient conditions for consistency of learning process, the author covers function estimates from small data pools, applying these estimations to real-life problems, and much more.
Proceedings ArticleDOI

A training algorithm for optimal margin classifiers

TL;DR: A training algorithm that maximizes the margin between the training patterns and the decision boundary is presented, applicable to a wide variety of the classification functions, including Perceptrons, polynomials, and Radial Basis Functions.

A Practical Guide to Support Vector Classication

TL;DR: A simple procedure is proposed, which usually gives reasonable results and is suitable for beginners who are not familiar with SVM.
Journal ArticleDOI

A comparison of methods for multiclass support vector machines

TL;DR: Decomposition implementations for two "all-together" multiclass SVM methods are given and it is shown that for large problems methods by considering all data at once in general need fewer support vectors.