Networks*
CSoNet 2022 provides a premier interdisciplinary forum to bring together
researchers and practitioners from all fields of big data and social
networks, such as billion-scale network computing, social network/media
analysis, mining, security and privacy, and deep learning. CSoNet 2022
seeks to address emerging yet important computational problems, with a
focus on the fundamental background, theoretical technology development,
and real-world applications associated with big data network analysis,
modelling, and deep learning. The conference solicits theoretical,
methodological, empirical, and experimental research reporting original and
unpublished results on computational big data and social networks. Topics
of interest include, but are not limited to:
● Real-world Complex Networks Analysis
● Trends and Pattern Analysis in Social Networks
● Representation Learning on Networks
● Big Data Analysis
● Mathematical Modeling and Analysis of Real-world Social Platforms
● Network Structure Analysis and Dynamics Optimization
● Data Network Design and Architecture
● Information Diffusion Models and Techniques
● Security and Privacy in Data Networks
● Efficient Algorithms for Large-scale Data Networks Computing
● Reputation and Trust in Social Media
● Social Influence, Recommendation, and Media
● Applications of Complex Data Network Analysis
● Energy Efficiency in Mobile Data Networks
● Natural Language Understanding for Social Media
● E-commerce and Social Media Marketing
● Deep Learning on Graphs and its Application
● Stock Market Prediction and Stock Recommendation with Social Media
Data
● Anomaly Detection, Security, and Privacy in Big Data Networks
● Analysis of signed and attributed real-world networks
● Multidimensional graph analysis
● Algorithmic fairness in social network analysis and graph mining.
Accepted papers will be published in Springer's Lecture Notes in Computer
Science, and indexed by ISI (CPCI-S, included in ISI Web of Science), EI
Engineering Index (Compendex and Inspec databases), ACM Digital Library,
DBLP, Google Scholar, MathSciNet, etc. Also, extended versions of selected
best papers will be invited for publication in Journal of Combinatorial
Optimization, IEEE Transactions on Network Science and Engineering, and
Computational Social Networks.
Authors who are interested in the above topics can submit their unpublished
work to CSoNet 2022. A clear indication of the motivation and comparison
with prior related work should be presented. Simultaneous submission to a
journal or another conference with refereed proceedings is not allowed.
Submissions must adhere to the following guidelines:
● Papers must be formatted using the LNCS format (
ftp://ftp.springernature.com/cs-proceeding/llncs/llncs2e.zip
<https://urldefense.proofpoint.com/v2/url?u=ftp-3A__ftp.springernature.com_cs-2Dproceeding_llncs_llncs2e.zip&d=DwMFAg&c=sJ6xIWYx-zLMB3EPkvcnVg&r=LVo7xS1G7u7BdDZ7Nudt9Lwe5BtAY5Be7rUMwkulruA&m=hRpk3hs9DXpGtHXXwnSirLB3YvH0tb_fDQFAdNzVCQA&s=gdCAwJUC51te7OlWOAP_bjdQEa2KDNLLocHB2R__eKc&e=>)
without altering margins or the font point.
● The maximum length of a regular paper (including references) is 12
pages; 2 pages for an extended abstract.
● Proofs omitted due to space constraints must be placed in an
appendix to be read by the program committee members at their discretion.
Submission link: https://easychair.org/conferences/?conf=csonet2022
*IMPORTANT DATES:
Submission Date: 14 August 2022
Notification to Authors: 24 September 2022
Camera Ready and Registration: 8 October 2022
Conference Dates: 5-7 December, 2022
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