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Support vector machine

About: Support vector machine is a research topic. Over the lifetime, 73677 publications have been published within this topic receiving 1723143 citations.


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TL;DR: This paper establishes SMO algorithms for pin-SVM and its sparse version, a quadratic programming problem with box constraints, for which the sequential minimal optimization (SMO) technique is applicable.

37 citations

Journal ArticleDOI
TL;DR: The performance of traditional machine learning is satisfactory for the small dataset of melanoma dermoscopic images and the potential for deep learning in the future big data era is enormous.
Abstract: Background Artificial intelligence methods for the classification of melanoma have been studied extensively. However, few studies compare these methods under the same standards. Objective To seek the best artificial intelligence method for diagnosis of melanoma. Methods The contrast test used 2200 dermoscopic images. Image segmentations, feature extractions, and classifications were performed in sequence for evaluation of traditional machine learning algorithms. The recent popular convolutional neural network frameworks were used for transfer learning training classification. Results The region growing algorithm has the best segmentation performance, with an intersection over union of 70.06% and a false-positive rate of 17.67%. Classification performance was better with logistic regression, with a sensitivity of 76.36% and a specificity of 87.04%. The Inception V3 model (Google, Mountain View, CA) worked best in deep learning algorithms: the accuracy was 93.74%, the sensitivity was 94.36%, and the specificity was 85.64%. Limitations There was no division in the severity of melanoma samples used in this experiment. The data set was relatively small for deep learning. Conclusion The performance of traditional machine learning is satisfactory for the small data set of melanoma dermoscopic images, and the potential for deep learning in the future big data era is enormous.

37 citations

Journal ArticleDOI
TL;DR: The proposed hybrid model based on Gaussian mixture model (GMM) and random forest for detecting rockfall source areas using airborne laser scanning data is an efficient model for identifying rock fall source areas in the presence of other types of landslides with an accepted generalization performance.
Abstract: The main objectives of this paper are to design and evaluate a hybrid approach based on Gaussian mixture model (GMM) and random forest (RF) for detecting rockfall source areas using airborne laser scanning data. The former model was used to calculate automatically slope angle thresholds for different type of landslides such as shallow, translational, rotational, rotational-translational, complex, debris flow, and rockfalls. After calculating the slope angle thresholds, a homogenous morphometric land use area (HMLA) was constructed to improve the performance of the model computations and reduce the sensitivity of the model to the variations in different conditioning factors. After that, the support vector machine (SVM) was applied in addition to backward elimination (BE) to select and rank the conditioning factors considering the type of landslides. Then, different machine learning methods [artificial neural network (ANN), logistic regression (LR), and random forest (RF) were trained with the selected best factors and previously prepared inventory datasets. The best fit method (RF) was then used to generate the probability maps and then the source areas were detected by combining the slope raster (reclassified according to the thresholds found by the GMM model) and the probability maps. The accuracy assessment shows that the proposed hybrid model could detect the potential rockfalls with an accuracy of 0.92 based on training data and 0.96 on validation data. Overall, the proposed model is an efficient model for identifying rockfall source areas in the presence of other types of landslides with an accepted generalization performance.

37 citations

Journal ArticleDOI
TL;DR: The implementation of the PCA and SVM algorithms on an embedded system based on a Digital Signal Processor (DSP) and a dataset of eighty-one hue, saturation, and intensity beef meat images was used.

37 citations

Journal ArticleDOI
Chih-Chiang Wei1
TL;DR: In this paper, two support vector machine (SVM) based models for forecasting hourly precipitation during tropical cyclone (typhoon) events were presented, which are the traditional Gaussian kernel SVMs (GSVMs) and the advanced wavelet kernel SVM (WSVMs).
Abstract: This study presents two support vector machine (SVM) based models for forecasting hourly precipitation during tropical cyclone (typhoon) events. The two SVM-based models are the traditional Gaussian kernel SVMs (GSVMs) and the advanced wavelet kernel SVMs (WSVMs). A comparison between the fifth-generation Pennsylvania State University–National Center for Atmospheric Research (PSU–NCAR) Mesoscale Model (MM5) and statistical models, including SVM-based models and linear regressions (regression), was made in terms of performance of rainfall prediction at the Shihmen Reservoir watershed in Taiwan. Data from 73 typhoons affecting the Shihmen Reservoir watershed were included in the analysis. This study designed six attribute combinations with different lag times for the forecast target. The modified RMSE, bias, and estimated threat score (ETS) results were employed to assess the predicted outcomes. Results show that better attribute combinations for typhoon climatologic characteristics and typhoon prec...

37 citations


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Performance
Metrics
No. of papers in the topic in previous years
YearPapers
20242
20237,225
202215,778
20215,221
20205,630
20195,840