Applied Methods of Statistical Analysis. Nonparametric Approach
14-19 September, 2015
You are in the archives of the conference. To go to current conference, click here
  Registration       Program       Sessions       Location  

.

Our Partners:


  Tomsk State University 
  Siberian State Aerospace University




LiTiS 1.2.0 beta  
  download Life Time Statistics

The Third International Workshop "Applied Methods of Statistical Analysis. Nonparametric Approach - AMSA'2015" will be focused on the following issues:

  • urgent problems in applied mathematical statistics,
  • the role of computational methods and simulation techniques in the development of applied mathematical statistics,
  • prospective research results aimed at the expansion of application area of statistical methods in the case of deviation from standard assumptions,
  • problems of practical application of statistical methods for data analysis.

The AMSA aims to bring together specialists interested in the development of statistical methods of data analysis and correct and efficient practical application of these methods.

In 2015, the workshop will take place in the resort Belokurikha located at the foothills of Altai.


Within the framework of AMSA'2015, the XV International Symposium on Nonparametric Methods in Cybernetics and System Analysis will be held. The main topics of the Symposium:

− nonparametric and robust statistics;

− nonparametric adaptive and trained systems;

− identification, modeling, classification and processing images;

− simulation and organizational systems control;

− applications in design and usage of computer systems of various purposes and automation systems.


The topics of AMSA include, but not limited to, the followings:

  • Monte Carlo method in problems of Applied Statistics, 
  • Statistical methods in clinical trials and quality of life, 
  • Statistical methods in reliability, 
  • Goodness-of-fit tests, 
  • Design of experiments, 
  • Statistical simulation of natural processes,
  • Econometric methods and modeling,
  • Bayesian approach, 
  • Applications of statistical methods.