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:

References in zbMATH (referenced in 592 articles )

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  1. Alabdulmohsin, Ibrahim; Cisse, Moustapha; Gao, Xin; Zhang, Xiangliang: Large margin classification with indefinite similarities (2016)
  2. Bai, Yan-Qin; Shen, Kai-Ji: Alternating direction method of multipliers for $\ell_1$-$\ell_2$-regularized logistic regression model (2016)
  3. Borzov, Sergey Mikhailovich; Mel’nikov, Pavel V.; Pestunov, Igor Alexeevichr; Potaturkin, Oleg Iosifovich; Fedotov, Anatolii Mikhailovich: Integrated processing of hyperspectral images on the basis of spectral and spatial information (in Russian) (2016)
  4. Byrd, Richard H.; Chin, Gillian M.; Nocedal, Jorge; Oztoprak, Figen: A family of second-order methods for convex $\ell _1$-regularized optimization (2016)
  5. Chen, Jingying; Luo, Nan; Liu, Yuanyuan; Liu, Leyuan; Zhang, Kun; Kolodziej, Joanna: A hybrid intelligence-aided approach to affect-sensitive e-learning (2016)
  6. Doğan, Ürün; Glasmachers, Tobias; Igel, Christian: A unified view on multi-class support vector classification (2016)
  7. Eskandari, S.; Javidi, M.M.: Online streaming feature selection using rough sets (2016)
  8. Fernández, Alberto; Elkano, Mikel; Galar, Mikel; Sanz, José Antonio; Alshomrani, Saleh; Bustince, Humberto; Herrera, Francisco: Enhancing evolutionary fuzzy systems for multi-class problems: distance-based relative competence weighting with truncated confidences (DRCW-TC) (2016)
  9. Fountoulakis, Kimon; Gondzio, Jacek: A second-order method for strongly convex $\ell _1$-regularization problems (2016)
  10. García Nieto, P.J.; García-Gonzalo, E.; Alonso Fernández, J.R.; Díaz Muñiz, C.: A hybrid PSO optimized SVM-based model for predicting a successful growth cycle of the \itSpirulina platensis from raceway experiments data (2016)
  11. Janning, Ruth; Schatten, Carlotta; Schmidt-Thieme, Lars: Perceived task-difficulty recognition from log-file information for the use in adaptive intelligent tutoring systems (2016)
  12. Jiao, Ya-Sen; Du, Pu-Feng: Predicting Golgi-resident protein types using pseudo amino acid compositions: approaches with positional specific physicochemical properties (2016)
  13. Li, Hongqiang; Feng, Xiuli; Cao, Lu; Li, Enbang; Liang, Huan; Chen, Xuelong: A new ECG signal classification based on WPD and ApEn feature extraction (2016)
  14. Li, Hongqiang; Liang, Huan; Miao, Chunjiao; Cao, Lu; Feng, Xiuli; Tang, Chunxiao; Li, Enbang: Novel ECG signal classification based on KICA nonlinear feature extraction (2016)
  15. Li, Luoqing; Yang, Chuanwu; Xie, Qiwei: 1D embedding multi-category classification methods (2016)
  16. Lu, Jing; Hoi, Steven C.H.; Wang, Jialei; Zhao, Peilin; Liu, Zhi-Yong: Large scale online kernel learning (2016)
  17. Peherstorfer, Benjamin; Willcox, Karen; Gunzburger, Max: Optimal model management for multifidelity Monte Carlo estimation (2016)
  18. Pevný, Tomáš: Loda: lightweight on-line detector of anomalies (2016)
  19. Sugiyama, Masashi: Introduction to statistical machine learning (2016)
  20. Taimori, Ali; Razzazi, Farbod; Behrad, Alireza; Ahmadi, Ali; Babaie-Zadeh, Massoud: Quantization-unaware double JPEG compression detection (2016)

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