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Erratum to: Soft-HGRNs: soft hierarchical graph recurrent networks for multi-agent partially observable

Yixiang REN, Zhenhui YE, Yining CHEN, Xiaohong JIANG, Guanghua SONG

Frontiers of Information Technology & Electronic Engineering 2023, Volume 24, Issue 3,   Pages 480-480 doi: 10.1631/FITEE.22e0073

The stem cell and tissue engineering research in Chinese ophthalmology

GE Jian, LIU Jingbo

Frontiers of Medicine 2007, Volume 1, Issue 1,   Pages 6-10 doi: 10.1007/s11684-007-0002-x

Abstract: They have become closer to the clinical practice, standardized and observable.

Keywords: available     observable     neuroregeneration     protection     function reconstruction    

NIG-AP: a newmethod for automated penetration testing Regular Papers-Research Articles

Tian-yang ZHOU, Yi-chao ZANG, Jun-hu ZHU, Qing-xian WANG

Frontiers of Information Technology & Electronic Engineering 2019, Volume 20, Issue 9,   Pages 1277-1298 doi: 10.1631/FITEE.1800532

Abstract: Penetration testing offers strong advantages in the discovery of hidden vulnerabilities in a network and assessing network security. However, it can be carried out by only security analysts, which costs considerable time and money. The natural way to deal with the above problem is automated penetration testing, the essential part of which is automated attack planning. Although previous studies have explored various ways to discover attack paths, all of them require perfect network information beforehand, which is contradictory to realistic penetration testing scenarios. To vividly mimic intruders to find all possible attack paths hidden in a network from the perspective of hackers, we propose a network information gain based automated attack planning (NIG-AP) algorithm to achieve autonomous attack path discovery. The algorithm formalizes penetration testing as a Markov decision process and uses network information to obtain the reward, which guides an agent to choose the best response actions to discover hidden attack paths from the intruder’s perspective. Experimental results reveal that the proposed algorithm demonstrates substantial improvement in training time and effectiveness when mining attack paths.

Keywords: Penetration testing     Reinforcement learning     Classical planning     Partially observable Markov decision process    

Controller area network node reliability assessment based on observable node information Article

Lei-ming ZHANG, Long-hao TANG, Yong LEI

Frontiers of Information Technology & Electronic Engineering 2017, Volume 18, Issue 5,   Pages 615-626 doi: 10.1631/FITEE.1601029

Abstract: (TEC) of any node in the network based on the network error log and the information provided by the observableSecond, by learning the differences between the model estimates and the actual values from the observablenode, a Bayesian network is developed for the estimation updating mechanism of the observable nodes.

Keywords: Controller area network (CAN)     Transmit error counter (TEC)     TEC value estimation     Bayesian network     Bus-off hitting time    

Soft-HGRNs: soft hierarchical graph recurrent networks for multi-agent partially observable environments Research Article

Yixiang REN, Zhenhui YE, Yining CHEN, Xiaohong JIANG, Guanghua SONG,yixiangren@zju.edu.cn,zhenhuiye@zju.edu.cn,ch19930611@zju.edu.cn,ghsong@zju.edu.cn

Frontiers of Information Technology & Electronic Engineering 2023, Volume 24, Issue 1,   Pages 117-130 doi: 10.1631/FITEE.2200073

Abstract: makes it more practical in real-world tasks, but its relatively poor scalability and the partially observableBased on our intuitive observation that human society could be regarded as a large-scale partially observable

Keywords: Deep reinforcement learning     Graph-based communication     Maximum-entropy learning     Partial observability     Heterogeneous settings    

Title Author Date Type Operation

Erratum to: Soft-HGRNs: soft hierarchical graph recurrent networks for multi-agent partially observable

Yixiang REN, Zhenhui YE, Yining CHEN, Xiaohong JIANG, Guanghua SONG

Journal Article

The stem cell and tissue engineering research in Chinese ophthalmology

GE Jian, LIU Jingbo

Journal Article

NIG-AP: a newmethod for automated penetration testing

Tian-yang ZHOU, Yi-chao ZANG, Jun-hu ZHU, Qing-xian WANG

Journal Article

Controller area network node reliability assessment based on observable node information

Lei-ming ZHANG, Long-hao TANG, Yong LEI

Journal Article

Soft-HGRNs: soft hierarchical graph recurrent networks for multi-agent partially observable environments

Yixiang REN, Zhenhui YE, Yining CHEN, Xiaohong JIANG, Guanghua SONG,yixiangren@zju.edu.cn,zhenhuiye@zju.edu.cn,ch19930611@zju.edu.cn,ghsong@zju.edu.cn

Journal Article