نتایج جستجو برای: support vector machine svm

تعداد نتایج: 1034216  

Journal: Pollution 2020

Air quality prediction is highly important in view of the health impacts caused by exposure to air pollutants in urban air. This work has presented a model based on support vector machine (SVM) technique to predict daily average carbon monoxide (CO) concentrations in the atmosphere of Tehran. Two types of SVM regression models, i.e. -SVM and -SVM techniques, were used to predict average daily C...

Journal: :iranian journal of chemistry and chemical engineering (ijcce) 2010
hesam torabi dashti ali masoudi-nejad

structural repetitive subsequences are most important portion of biological sequences, which play crucial roles on corresponding sequence’s fold and functionality. biggest class of the repetitive subsequences is “transposable elements” which has its own sub-classes upon contexts’ structures. many researches have been performed to criticality determine the structure and function of repetitive su...

Journal: :journal of advances in computer research 2014
behnaz hadi alireza khosravi abolfazl ranjbar n. pouria sarhadi

in this paper, a robust integral of the sign error (rise) feedback controller is designed for a rigid-link electrically driven (rled) robot manipulator actuated by direct current dc motor in presence of parametric uncertainties and additive disturbances. rise feedback with implicitly learning capability is a continuous control method based on the lyapunov stability analysis to compensate an add...

Journal: :caspian journal of environmental sciences 2012
r. zarkami al. et

support vector machine (svm) was used to analyze the occurrence of roach in flemish stream basins (belgium). several habitat and physico?chemical variables were used as inputs for the model development. the biotic variable merely consisted of abundance data which was used for predicting presence/absence of roach. genetic algorithm (ga) was combined with svm in order to select the most important...

Journal: :iranian journal of public health 0
payam amini hasan ahmadinia jalal poorolajal mohammad moqaddasi amiri

background: we aimed to assess the high-risk group for suicide using different classification methods includinglogistic regression (lr), decision tree (dt), artificial neural network (ann), and support vector machine (svm). methods: we used the dataset of a study conducted to predict risk factors of completed suicide in hamadan province, the west of iran, in 2010. to evaluate the high-risk grou...

2015
Wei Gu Meng Zhang Li Guo Zhengshuai Wang

Multiresolution analyses based on wavelets and support vector machine were combined to establish a wavelet transform-based support vector machine (WT-SVM) model for the prediction of residual settlement in an old goaf. The stochastic volatility of the residual settlement in an old goaf is considered, and the test data of 3 monitoring point in an old goaf in Yanzhou are used. The results are com...

Journal: :CoRR 2017
Zhong Wang Tinyi Chu Lauren A. Choate Charles G. Danko

Rgtsvm provides a fast and flexible support vector machine (SVM) implementation for the R language. The distinguishing feature of Rgtsvm is that support vector classification and support vector regression tasks are implemented on a graphical processing unit (GPU), allowing the libraries to scale to millions of examples with >100-fold improvement in performance over existing implementations. Nev...

2013
Hiba Basim Alwan

Support Vector Machines are considered to be excellent patterns classification techniques. The process of classifying a pattern with high classification accuracy counts mainly on tuning Support Vector Machine parameters which are the generalization error parameter and the kernel function parameter. Tuning these parameters is a complex process and Ant Colony Optimization can be used to overcome ...

2014
Mujahed Aldhaifallah K. S. Nisar

Abstract: In this paper a new algorithm to identify Auto-Regressive Exogenous Models (ARX) based on Twin Support Vector Machine Regression (TSVR) has been developed. The model is determined by minimizing two ε insensitive loss functions. One of them determines the ε1-insensitive down bound regressor while the other determines the ε2-insensitive up-bound regressor. The algorithm is compared to S...

2011
R. Sangeetha

Support vector machine (SVM) is a kernel based novel pattern classification method that is significant in many areas like data mining and machine learning. A unique strength is the use of kernel function to map the data into a higher dimensional feature space. In training SVM, kernels and its parameters have very vital role for classification accuracy. Therefore, a suitable kernel design and it...

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