Classification of Dispersed Patterns of Radiographic Images with COVID-19 by Core-Periphery Network Modeling
10th International Conference on Complex Networks and Their Applications, COMPLEX NETWORKS 2021
; 1015:39-49, 2022.
Article
in English
| Scopus | ID: covidwho-1626567
ABSTRACT
In real world data classification tasks, we always face the situations where the data samples of the normal cases present a well defined pattern and the features of abnormal data samples vary from one to another, i.e., do not show a regular pattern. Up to now, the general data classification hypothesis requires the data features within each class to present a certain level of similarity. Therefore, such real situations violate the classic classification condition and make it a hard task. In this paper, we present a novel solution for this kind of problems through a network approach. Specifically, we construct a core-periphery network from the training data set in such way that core node set is formed by the normal data samples and peripheral node set contains the abnormal samples of the training data set. The classification is made by checking the coreness of the testing data samples. The proposed method is applied to classify radiographic image for COVID-19 diagnosis. Computer simulations show promising results of the method. The main contribution is to introduce a general scheme to characterize pattern formation of the data “without pattern”. © 2022, The Author(s), under exclusive license to Springer Nature Switzerland AG.
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Collection:
Databases of international organizations
Database:
Scopus
Language:
English
Journal:
10th International Conference on Complex Networks and Their Applications, COMPLEX NETWORKS 2021
Year:
2022
Document Type:
Article
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