An Effective Bridge Cracks Classification Method Based on Machine Learning

Author(s):  
Xiaoyan Zhang ◽  
Xiaodong Wang
2021 ◽  
Vol 184 ◽  
pp. 108333
Author(s):  
Guoli Song ◽  
Xinyi Guo ◽  
Wenbo Wang ◽  
Qunyan Ren ◽  
Jun Li ◽  
...  

2020 ◽  
Vol 46 (6) ◽  
pp. 8104-8110 ◽  
Author(s):  
Heyang Sun ◽  
Miao Liu ◽  
Li Li ◽  
LingTong Yan ◽  
Yue Zhou ◽  
...  

Electronics ◽  
2020 ◽  
Vol 9 (6) ◽  
pp. 947
Author(s):  
Rongqun Peng ◽  
Yingxi Lou ◽  
Michel Kadoch ◽  
Mohamed Cheriet

With the continuous development of tourism, the integration of the Internet of Things (IoT) into tourism projects is considered a very promising technology. Smart tourism aims to use the IoT to maximize information communication; that is, the IoT technology will become an important element to meet the needs of a new generation of tourists. Therefore, in this study, we propose a human-guided machine learning classification method based on tourist selection behavior. This classification method can effectively help tourists make a decision in choosing a certain tourist destination. The results obtained from the cross-validation experiments and performance evaluation prove the effectiveness of this method.


2021 ◽  
Vol 15 ◽  
Author(s):  
Giulia Varotto ◽  
Gianluca Susi ◽  
Laura Tassi ◽  
Francesca Gozzo ◽  
Silvana Franceschetti ◽  
...  

Aim: In neuroscience research, data are quite often characterized by an imbalanced distribution between the majority and minority classes, an issue that can limit or even worsen the prediction performance of machine learning methods. Different resampling procedures have been developed to face this problem and a lot of work has been done in comparing their effectiveness in different scenarios. Notably, the robustness of such techniques has been tested among a wide variety of different datasets, without considering the performance of each specific dataset. In this study, we compare the performances of different resampling procedures for the imbalanced domain in stereo-electroencephalography (SEEG) recordings of the patients with focal epilepsies who underwent surgery.Methods: We considered data obtained by network analysis of interictal SEEG recorded from 10 patients with drug-resistant focal epilepsies, for a supervised classification problem aimed at distinguishing between the epileptogenic and non-epileptogenic brain regions in interictal conditions. We investigated the effectiveness of five oversampling and five undersampling procedures, using 10 different machine learning classifiers. Moreover, six specific ensemble methods for the imbalanced domain were also tested. To compare the performances, Area under the ROC curve (AUC), F-measure, Geometric Mean, and Balanced Accuracy were considered.Results: Both the resampling procedures showed improved performances with respect to the original dataset. The oversampling procedure was found to be more sensitive to the type of classification method employed, with Adaptive Synthetic Sampling (ADASYN) exhibiting the best performances. All the undersampling approaches were more robust than the oversampling among the different classifiers, with Random Undersampling (RUS) exhibiting the best performance despite being the simplest and most basic classification method.Conclusions: The application of machine learning techniques that take into consideration the balance of features by resampling is beneficial and leads to more accurate localization of the epileptogenic zone from interictal periods. In addition, our results highlight the importance of the type of classification method that must be used together with the resampling to maximize the benefit to the outcome.


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