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IEEE 2026 9th International Symposium on Big Data and Applied Statistics (ISBDAS 2026)
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IEEE 2026 9th International Symposium on Big Data and Applied Statistics (ISBDAS 2026)

Mar 06, 2026 - Mar 08, 2026
Guangzhou, China
CONFERENCE
Registration
To join or learn more about the event, please visit the organizer's website.
Event Details

Date: March 6–8, 2026
Location: Guangzhou, China

Conference Website: https://ais.cn/u/viA7Nr

Call for Papers

The topics of interest for submission include, but are not limited to:

1. Big Data Algorithms

  • Intelligent computing applications
  • Models and calculations
  • Intelligent computing algorithms
  • Evolutionary computation
  • Data mining
  • Ternary decision making and machine learning
  • Combinatorial algorithms
  • Data and text mining
  • Knowledge reasoning
  • Deep learning

2. Applied Mathematics Theory

  • Game theory
  • Cognitive modeling and computation
  • Probability and statistics
  • Differential equations and their applications
  • Discrete mathematics and control
  • Linear algebra and its applications
  • Numerical analysis
  • Operations research and optimization
  • Approximation theory
  • Combinatorial mathematics
  • The theory of computability
  • Discrete geometry
  • Matrix calculations

Publication

All papers will be reviewed by two or three expert reviewers from the conference committees. After a careful reviewing process, all accepted papers will be published by IEEE (ISBN: 979-8-3315-7218-1) and submitted to EI Compendex and Scopus for indexing.

Important Dates

  • Full Paper Submission Deadline: January 31, 2026
  • Final Paper Submission Deadline: February 4, 2026
  • Registration Deadline: February 17, 2026
  • Conference Dates: March 6–8, 2026

Paper Submission

Please send the full paper (Word + PDF) to the submission system:
https://ais.cn/u/viA7Nr

Location

Guangzhou

Guangzhou, China

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