Prototype Selection Method Based on the Rivality and Reliability Indexes for the Improvement of the Classification Models and External Predictions

2020 ◽  
Vol 60 (6) ◽  
pp. 3009-3021 ◽  
Author(s):  
Irene Luque Ruiz ◽  
Miguel Ángel Gómez-Nieto
Author(s):  
S P Shayesteh ◽  
I Shiri ◽  
A H Karami ◽  
R Hashemian ◽  
S Kooranifar ◽  
...  

Objectives: The aim of this study was to predict the survival time of lung cancer patients using the advantages of both radiomics and logistic regression-based classification models.Material and Methods: Fifty-nine patients with primary lung adenocarcinoma were included in this retrospective study and pre-treatment contrast-enhanced CT images were acquired. The patients lived more than 2 years were classified as the ‘Alive’ class and otherwise as the ‘Dead’ class. In our proposed quantitative radiomic framework, we first extracted the associated regions of each lung lesion from pre-treatment CT images for each patient via grow cut segmentation algorithm. Then, 40 radiomic features were extracted from the segmented lung lesions. In order to enhance the generalizability of the classification models, the mutual information-based feature selection method was applied to each feature vector. We investigated the performance of six logistic regression-based classification models with consider to acceptable evaluation measures such as F1 score and accuracy.Results: It was observed that the mutual information feature selection method can help the classifier to achieve better predictive results. In our study, the Logistic regression (LR) and Dual Coordinate Descent method for Logistic Regression (DCD-LR) models achieved the best results indicating that these classification models have strong potential for classifying the more important class (i.e., the ‘Alive’ class).Conclusion: The proposed quantitative radiomic framework yielded promising results, which can guide physicians to make better and more precise decisions and increase the chance of treatment success.


2019 ◽  
Vol 2019 ◽  
pp. 1-9
Author(s):  
Yanping Shen ◽  
Kangfeng Zheng ◽  
Chunhua Wu ◽  
Yixian Yang

Nearest neighbor (NN) models play an important role in the intrusion detection system (IDS). However, with the advent of the era of big data, the NN model has the disadvantages of low efficiency, noise sensitivity, and high storage requirement. This paper presents a neighbor prototype selection method based on CCHPSO for intrusion detection. In the model, the prototype selection and feature weight adjustment are performed simultaneously and k-nearest neighbor (KNN) is used as the basic classifier. To deal with large-scale optimization problems, a cooperative coevolving algorithm based on hybrid standard particle swarm and binary particle swarm optimization, which employs the divide-and-conquer strategy, is proposed in this paper. Meanwhile, a fitness function based on the accuracy and data reduction rate is defined in the CCHPSO to obtain a set of appropriate prototypes and feature weights. The KDD99 and NSL datasets are used to assess the effectiveness of the method. The empirical results indicate that the data reduction rate of the proposed method is very high, ranging from 82.32% to 92.01%. Compared with all the data used, the proposed method can not only achieve comparable accuracy performance but also save a lot of storage and computing resources.


2009 ◽  
Vol 13 (2) ◽  
pp. 131-141 ◽  
Author(s):  
J. Arturo Olvera-López ◽  
J. Ariel Carrasco-Ochoa ◽  
J. Francisco Martínez-Trinidad

2015 ◽  
Vol 713-715 ◽  
pp. 2063-2068
Author(s):  
Wei Zhang ◽  
Xiao Jie Wang

At present, many popular methods for object recognition are based on regional visual feature vectors which ignore the global structure of the object, leading to the “semantic gap” between image content and its tag. Graph-based structural representation of an object can record regional visual features and global relationships between regions that compose the object. However, the computation complexity of graph comparing limits the application of graph model in object recognition. One method for improving the recognizing speed is to reduce the prototypes in concept space of specific object category. We presented a prototype selection method for sythetic object recognition based on structural graph model using greedy clustering and representative sample selection. Experiments are conducted on a 2-D CAD synthetic object database. And the results show that the prototype selection method reduces the time cost of object recognition greatly with an acceptable loss in accuracy.


2013 ◽  
Vol 46 (10) ◽  
pp. 2770-2782 ◽  
Author(s):  
Nele Verbiest ◽  
Chris Cornelis ◽  
Francisco Herrera

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