| 查看: 788 | 回复: 7 | |||
| 【有奖交流】积极回复本帖子,参与交流,就有机会分得作者 liyangnpu 的 13 个金币 ,回帖就立即获得 1 个金币,每人有 1 次机会 | |||
[交流]
【征稿】Future-Generation Attack and Defense in Neural Networks (FGADNN)
|
|||
|
Special Issue -- Future-Generation Attack and Defense in Neural Networks (FGADNN) Aims & Scopes Neural Networks have demonstrated great success in many fields, e.g., natural language processing, image analysis, speech recognition, recommender system, physiological computing, etc. However, recent studies revealed that neural networks are vulnerable to adversarial attacks. The vulnerability of neural networks, which may hinder their adoption in high-stake scenarios. Thus, understanding their vulnerability and developing robust neural networks have attracted increasing attention. To understand and accommodate the vulnerability of neural networks, various attack and defense techniques have been proposed. According to the stage that the adversarial attack is performed, there are two types of attacks: poisoning attacks and evasion attacks. The former happens at the training stage, to create backdoors in the machine learning model by adding contaminated examples to the training set. The latter happens at the test stage, by adding deliberately designed tiny perturbations to benign test samples to mislead the neural network. According to how much the attacker knows about the target model, there are white-box, gray-box, and black-box attacks. According to the outcome, there are targeted attacks and non-targeted (indiscriminate) attacks. There are also many different attack scenarios, resulted from different combinations of these attack types. Several different adversarial defense strategies have also been proposed, e.g., data modification, which modifies the training set in the training stage or the input data in the test stage, through adversarial training, gradient hiding, transferability blocking, data compression, data randomization, etc.; model modification, which modifies the target model directly to increase its robustness, by regularization, defensive distillation, feature squeezing, using a deep contractive network or a mask layer, etc.; and, auxiliary tools, which may be additional auxiliary machine learning models to robustify the primary model, e.g., adversarial detection models, or defense generative adversarial nets (defense-GAN), high-level representation guided denoiser, etc. Because of the popularity, complexity, and lack of interpretability of neural networks, it is expected that more attacks will immerge, in various different scenarios and applications. It is critically important to develop strategies to defend against them. This special issue focuses on adversarial attacks and defenses in various future-generation neural networks, e.g., CNNs, LSTMs, ResNet, Transformers, BERT, spiking neural networks, and graph neural networks. We invite both reviews and original contributions, on the theory (design, understanding, visualization, and interpretation) and applications of adversarial attacks and defenses, in future-generation natural language processing, computer vision systems, speech recognition, recommender system, etc. Topics of interest include, but are not limited to: • Novel adversarial attack approaches • Novel adversarial defense approaches • Model vulnerability discovery and explanation • Trust and interpretability of neural network • Attacks and/or defenses in NLP • Attacks and/or defenses in recommender systems • Attacks and/or defenses in computer vision • Attacks and/or defenses in speech recognition • Attacks and/or defenses in physiological computing • Adversarial attack and defense various future-generation applications Evaluation Criterion • Novelty of the approach (how is it different from existing ones?) • Technical soundness (e.g., rigorous model evaluation) • Impact (how does it change the state-of-the-arts) • Readability (is it clear what has been done) • Reproducibility and open source: pre-registration if confirmatory claims are being made (e.g., via osf.io), open data, materials, code as much as ethically possible. Submission Instructions All submissions deemed suitable to be sent for peer review will be reviewed by at least two independent reviewers. Authors should prepare their manuscript according to the Guide for Authors available from the online submission page of the Future Generation Computer Systems at https://ees.elsevier.com/fgcs/. Authors should select “VSI: NNVul” when they reach the “Article Type” step in the submission process. Inquiries, including questions about appropriate topics, may be sent electronically to liyangnpu@nwpu.edu.cn. Please make sure to read the Guide for Authors before writing your manuscript. The Guide for Authors and link to submit your manuscript is available on the Journal’s homepage at: https://www.journals.elsevier.co ... n-computer-systems. Important Dates ● Manuscript Submission Deadline: 20th June 2022 ● Peer Review Due: 30th July 2022 ● Revision Due: 15th September 2022 ● Final Decision: 20th October 2022 |
» 猜你喜欢
东华理工大学化材专业26届硕士博士申请
已经有5人回复
本人考085602 化学工程 专硕
已经有5人回复
伙伴们,祝我生日快乐吧
已经有22人回复
调剂
已经有7人回复
289求调剂
已经有5人回复
一志愿武理314求调剂
已经有6人回复
欢迎申博同学联系
已经有5人回复
288求调剂
已经有4人回复
国自科面上基金字体
已经有4人回复
梁成伟老师课题组欢迎你的加入
已经有6人回复
» 抢金币啦!回帖就可以得到:
测试█TEM/ EPR/ XPS/PY-GCMS/TG-IR/XRF/BET/MIP/核磁/EA/ICP,VX: 761711562。
+1/91
专业技术开发及第三方检测
+1/89
物理学 调剂
+1/86
太原理工大学博士招生 电池负极材料 固态电解质方向 有工作经验者优先
+1/80
本安ia MFC用于危险石化环境下的乙炔脱除工艺的精准取样-艾里卡特 (Alicat)
+2/72
加拿大阿尔伯塔大学招收电磁、无线通信、机器学习方向全奖硕士/博士/博士后/访问学者
+1/62
山东师范大学有机化学专业胡忠燕老师课题组招收2026届硕士研究生以及调剂生
+1/46
找工作经验求助
+1/38
深圳理工大学梁国进课题组(成会明院士团队)诚聘科研助理教授、博士后
+1/32
西安建筑科技大学,樊重庆课题组招收调剂研究生1名。
+2/30
福建师范大学化学与材料学院杜克钊团队博士/硕士招生
+1/17
青岛科技大学可持续高分子团队 考研招生
+1/9
澳洲维多利亚大学计算机类全额奖学金博士招生 (邮箱+微信可联系)
+1/8
重庆大学药学院闫海龙课题组拟招收2026年申请考核制博士研究生数名
+1/7
连发两篇 Nature!大样本单细胞测序解析认知、衰老与灵长类进化
+1/4
招收环工、环科、化工、应化、化学、生工、生物、材化等相关专业研究生,要求过国家线
+1/4
海南大学徐月山老师招生第二批博士名额2~3个,2026年9月份入学(高端设备开发方向)
+1/2
东北农业大学(211)水利工程招生
+1/1
招材料,化学,高分子等相关专业研究生
+1/1
北京高校副校长团队招收机械类,环境类学硕和专硕
+1/1
7楼2022-04-20 21:53:39
简单回复
tzynew2楼
2022-04-20 20:45
回复
liyangnpu(金币+1): 谢谢参与
i 发自小木虫Android客户端
nono20093楼
2022-04-20 20:46
回复
liyangnpu(金币+1): 谢谢参与
`
JeromeXu4楼
2022-04-20 21:04
回复
雨月清音5楼
2022-04-20 21:47
回复
liyangnpu(金币+1): 谢谢参与
, 发自小木虫Android客户端
2022-04-20 21:48
回复
liyangnpu(金币+1): 谢谢参与
, 发自小木虫Android客户端
MTXSCI18楼
2022-04-20 22:44
回复
liyangnpu(金币+1): 谢谢参与
, 发自小木虫Android客户端













回复此楼