| 查看: 1742 | 回复: 21 | |||
| 【有奖交流】积极回复本帖子,参与交流,就有机会分得作者 giannilin 的 8 个金币 ,回帖就立即获得 2 个金币,每人有 1 次机会 | |||
| 当前只显示满足指定条件的回帖,点击这里查看本话题的所有回帖 | |||
[交流]
【2022-10-24】【Scopus WoS】第三十八届 ACM Symposium on Applied Computing - GMLR
|
|||
|
截稿日期延长 会议城市 爱沙尼亚,塔林 收录 scopus,acm,wos 收录 截稿日期 已延长至2022年10月24日 https://phuselab.di.unimi.it/gmlr2023 2023年第三十八届 acm symposium on applied computing (sac 2023) graph models for learning and recognition (gmlr) track 将于2023年3月27日至4月2日在爱沙尼亚共和国塔林市召开。 会议主题 the acm symposium on applied computing (sac 2023) has been a primary gathering forum for applied computer scientists, computer engineers, software engineers, and application developers from around the world. sac 2023 is sponsored by the acm special interest group on applied computing (sigapp), and will be held in tallinn, estonia. the technical track on graph models for learning and recognition (gmlr) is the second edition and is organized within sac 2023. graphs have gained a lot of attention in the pattern recognition community thanks to their ability to encode both topological and semantic information. despite their invaluable descriptive power, their arbitrarily complex structured nature poses serious challenges when they are involved in learning systems. some (but not all) of challenging concerns are: a non-unique representation of data, heterogeneous attributes (symbolic, numeric, etc.), and so on. in recent years, due to their widespread applications, graph-based learning algorithms have gained much research interest. encouraged by the success of cnns, a wide variety of methods have redefined the notion of convolution and related operations on graphs. these new approaches have in general enabled effective training and achieved in many cases better performances than competitors, though at the detriment of computational costs. typical examples of applications dealing with graph-based representation are: scene graph generation, point clouds classification, and action recognition in computer vision; text classification, inter-relations of documents or words to infer document labels in natural language processing; forecasting traffic speed, volume or the density of roads in traffic networks, whereas in chemistry researchers apply graph-based algorithms to study the graph structure of molecules/compounds. this track intends to focus on all aspects of graph-based representations and models for learning and recognition tasks. gmlr spans, but is not limited to, the following topics: ● graph neural networks: theory and applications ● deep learning on graphs ● graph or knowledge representational learning ● graphs in pattern recognition ● graph databases and linked data in ai ● benchmarks for gnn ● dynamic, spatial and temporal graphs ● graph methods in computer vision ● human behavior and scene understanding ● social networks analysis ● data fusion methods in gnn ● efficient and parallel computation for graph learning algorithms ● reasoning over knowledge-graphs ● interactivity, explainability and trust in graph-based learning ● probabilistic graphical models ● biomedical data analytics on graphs the track committee is working to organize a journal special issue, to which the authors of selected top papers of this track will be invited for an extended version. 程序委员会主席 donatello conte (university of tours) alessandro d'amelio (university of milan) giuliano grossi (university of milan) raffaella lanzarotti (university of milan) jianyi lin (università cattolica del sacro cuore) 程序委员 ● annalisa barla (university of genoa) ● davide boscaini (bruno kessler foundation) ● antonella carbonaro (university of bologna) ● vittorio cuculo (university of milan) ● samuel feng (sorbonne university abu dhabi) ● gabriele gianini (university of milan) ● andreas henschel (khalifa university) ● francesco isgrò (university of naples) ● giosuè lo bosco (university of palermo) ● alessio micheli (university of pisa) ● carlos oliver (eth zürich) ● maurice pagnucco (university of new south wales) ● jean-yves ramel (university of tours) ● ryan a. rossi (adobe research) (others to be confirmed) 征文要求 邀请作者提交未发表的原创研究论文和应用论文。论文正文不能包含作者姓名或地址,以便于双盲审查。投稿撰写论文必需是英语。 需要了解提交程序的更多信息,请查询会议网站。 sac报告缺席政策:录用并完成注册的全文和张贴将收录到会议论文集。如果本人无法参加,需请其他同事代做报告,否则全文不能被收入acm数字图书馆。 主要日期 论文全文截稿期已延长至 :2022年10月24日 录用通知期 :2022年12月5日 录用论文camera-ready (终稿版)提交日期: 2022年12月13日 sac大会日期: 2023年3月27日至4月2日 论文投稿网站: https://www.sigapp.org/sac/sac2023/submission.html 征文启事pdf英文版: https://tiny.cc/gmlr2023-cfp [ last edited by giannilin on 2022-10-13 at 20:05 ] 截稿日期延长至2022年10月24日 [ last edited by giannilin on 2022-10-24 at 06:18 ] <color=red>截稿日期延长至2022年10月31日</color> [ Last edited by giannilin on 2022-10-25 at 00:43 ] |
» 猜你喜欢
085600材料与化工 求调剂
已经有11人回复
080500,材料学硕302分求调剂学校
已经有5人回复
304求调剂
已经有5人回复
复试调剂
已经有11人回复
材料工程327求调剂
已经有3人回复
中科大材料与化工319求调剂
已经有3人回复
本科南京大学一志愿川大药学327
已经有3人回复
材料与化工 323 英一+数二+物化,一志愿:哈工大 本人本科双一流
已经有5人回复
化学调剂0703
已经有5人回复
调剂
已经有6人回复
» 抢金币啦!回帖就可以得到:
鲍红丽课题组 研究生招生启事
+1/478
物理学 调剂
+1/86
东营诚征结婚对象
+1/71
何时使用 CODA™ 科里奥利质量流量仪表- 艾里卡特(Alicat)
+2/58
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
福建师范大学化学与材料学院杜克钊团队招生
+1/40
教研论文SCI期刊投稿选刊
+1/36
中科院化学所 宋延林 课题组招聘合成化学方向博士后(开展打印合成化学方向研究)
+1/33
新疆大学招收学硕调剂
+1/28
青岛科技大学可持续高分子团队 考研招生
+1/13
西京学院土木水利 2026 级研究生招生相关说明
+1/8
食品科学与工程083200-297分
+1/8
重庆大学诚招2026年生物材料方向博士生
+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
26年博士招生
+1/6
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)
+1/4
总分291英一、数二-中核论文(导师一作、本人二作)-一志愿211学硕-自我介绍详细
+1/3
药学专硕一志愿苏大本科苏大寻求B区高校调剂名额
+1/3
湖南大学2026博士招生-人工智能安全方向
+1/3
徐工-环境工程学院-招收调剂硕士
+1/1
14楼2022-10-21 09:44:17
6楼2022-08-23 22:57:20
chenhuanlong
禁虫 (文学泰斗)
★
giannilin(金币+2): 谢谢参与
giannilin(金币+2): 谢谢参与
|
本帖内容被屏蔽 |
9楼2022-10-03 20:31:03
简单回复
XG-WUST10楼
2022-10-03 20:34
回复
up 发自小木虫IOS客户端
XG-WUST11楼
2022-10-05 22:04
回复
giannilin(金币+2): 谢谢参与
up 发自小木虫IOS客户端
一品哥哥4楼
2022-08-23 22:36
回复
giannilin(金币+1): 谢谢参与
, 发自小木虫Android客户端
ericamy5楼
2022-08-23 22:55
回复
LCL499812楼
2022-10-05 22:41
回复
bjdxyxy3楼
2022-08-23 22:32
回复
giannilin(金币+1): 谢谢参与
。 发自小木虫Android客户端
2022-09-23 12:17
回复
2022-10-03 19:12
回复













回复此楼