Inicio  /  Future Internet  /  Vol: 14 Par: 3 (2022)  /  Artículo
ARTÍCULO
TITULO

Deep Anomaly Detection Based on Variational Deviation Network

Junwen Lu    
Jinhui Wang    
Xiaojun Wei    
Keshou Wu and Guanfeng Liu    

Resumen

There is relatively little research on deep learning for anomaly detection within the field of deep learning. Existing deep anomaly detection methods focus on the learning of feature reconstruction, but such methods mainly learn new feature representations, and the new features do not fully reflect the original features, leading to inaccurate anomaly scores; in addition, there is an end-to-end deep anomaly detection algorithm, but the method cannot accurately obtain a reference score that matches the data themselves. In addition, in most practical scenarios, the data are unlabeled, and there exist some datasets with labels, but the confidence and accuracy of the labels are very low, resulting in inaccurate results when put into the model, which makes them often designed for unsupervised learning, and thus in such algorithms, the prior knowledge of known anomalous data is often not used to optimize the anomaly scores. To address the two problems raised above, this paper proposes a new anomaly detection model that learns anomaly scores mainly through a variational deviation network (i.e., not by learning the reconstruction error of new features, distance metrics, or random generation, but by learning the normal distribution of normal data). In this model, we force the anomaly scores to deviate significantly from the normal data by a small amount of anomalous data and a reference score generated by variational self-encoding. The experimental results in multiple classes of data show that the new variational deviation network proposed in this paper has higher accuracy among the mainstream anomaly detection algorithms.

 Artículos similares

       
 
Roberto Boccagna, Maurizio Bottini, Massimo Petracca, Alessia Amelio and Guido Camata    
In the last few decades, structural health monitoring has gained relevance in the context of civil engineering, and much effort has been made to automate the process of data acquisition and analysis through the use of data-driven methods. Currently, the ... ver más

 
Ons Aouedi, Kandaraj Piamrat and Benoît Parrein    
The recent development of smart devices has lead to an explosion in data generation and heterogeneity. Hence, current networks should evolve to become more intelligent, efficient, and most importantly, scalable in order to deal with the evolution of netw... ver más
Revista: Future Internet

 
Imtiaz Ullah, Ayaz Ullah and Mazhar Sajjad    
The tremendous number of Internet of Things (IoT) applications, with their ubiquity, has provided us with unprecedented productivity and simplified our daily life. At the same time, the insecurity of these technologies ensures that our daily lives are su... ver más
Revista: IoT

 
Abdelrahman Khalifa, Bashar Bashir, Abdullah Alsalman and Nazik Ögretmen    
The Abu-Dabbab area, located in the central part of the Egyptian Eastern Desert, is an active seismic region where micro-earthquakes (?ML < 2.0) are recorded regularly. Earthquake epicenters are concentrated along an ENE?WSW trending pattern. In this stu... ver más

 
Niraj Thapa, Zhipeng Liu, Dukka B. KC, Balakrishna Gokaraju and Kaushik Roy    
The development of robust anomaly-based network detection systems, which are preferred over static signal-based network intrusion, is vital for cybersecurity. The development of a flexible and dynamic security system is required to tackle the new attacks... ver más
Revista: Future Internet