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ISI Publications ISI & ISI Association Publications ISI & ISI Association Publications International Statistical Review (ISR) is the flagship journal of the Computational Statistics and Data Analysis (CSDA) is the official International Statistical Institute (ISI) and its seven Associations. It journal of the International Association for Statistical Computing publishes papers of wide interest in statistics and probability including (IASC). It is dedicated to the dissemination of methodological research reviews/surveys of significant developments in theory, methodology, and applications in the areas of computational statistics and data statistical computing, statistical education and papers on history of analysis. The topics covered are the impact of computers on statistical statistics. The journal incorporates Short Book Reviews which provides a methodology, the development, evaluation and validation of statistical rapid book review service covering books on statistics and related subjects software, data analysis strategies and comparison of statistical published throughout the world. ISR is issued three times per year. methodologies. The journal is issued twelve times per year. Stat – the ISI’s journal for the rapid dissemination of statistics research is an online only, rapid communication research journal publishing short Applied Stochastic Models in Business and Industry (ASMBI) is articles of the highest quality from all areas of statistics and a journal of the International Society for Business and Industrial interdisciplinary areas. Stat provides a means of rapid sharing of important Statistics (ISBIS). It publishes contributions in the interface between new theoretical, methodological and applied research for the international stochastic modelling, data analysis and their applications in business, community of statisticians, and for researchers and practitioners in other finance, insurance, management and production. The main focus is on disciplines where statistics plays an important role. papers presenting new results which solve real-life problems or have great potential in doing so, as well as papers presenting new methods for solving such problems, i.e. optimization, data base management, Bernoulli is a journal of the Bernoulli Society for Mathematical Statistics knowledge acquisition, expert systems, computer-aided decision and Probability and is disseminated by the Institute of Mathematical supports and neural computing. The journal is issued six times per Statistics on behalf of the Bernoulli Society. The journal provides a year. comprehensive account of important developments in the fields of statistics and probability, offering an international forum for both Environmetrics is the official journal of The International theoretical and applied work. Environmetrics Society (TIES). It is devoted to the dissemination of Bernoulli is issued four times per year. high-quality quantitative research in the environmental sciences, broadly construed. The journal focuses on areas of applied mathematics, engineering and signal processing, statistics, risk Stochastic Processes and their Applications (SPA) is a journal of the analysis, and other quantitative disciplines. It is meant for professional Bernoulli Society for Mathematical Statistics and Probability. It publishes statisticians and researchers concerned with environmental, ecological papers on the theory and applications of stochastic processes. It is and biological sciences. Environmetrics is issued eight times per year. concerned with concepts and techniques and is oriented towards a broad spectrum of mathematical, scientific and engineering interests. Characterization, structural properties, inference and control of stochastic Statistical Theory and Method Abstracts (STMA) is processes are covered. The journal is exacting and scholarly in its available as a combination of the entries of Zentralblatt standards. It is issued twelve times per year. MATH (ZMATH) in the field of statistics and probability with an extension by references in statistics which are not considered as mathematical statistics. The new name of the Statistical Journal of the International Association for Official service is STMA-Z. ZMATH is the most complete and longest Statistics (SJIAOS) publishes papers of wide interest to both users and running abstracting and reviewing services in mathematics and its applications, containing producers of official statistics with a focus on the basic principles of official almost 3 million entries drawn from more than 2,300 serials and journals, covering the statistics. The areas covered are, among others, the importance of period from 1868 to the present. STMA-Z will provide subscribers with specific access to applying the best scientific methods, the need for statistical independence, statistical references and related fields. the balance between the needs of users and the burden on respondents, and the continuing challenges around confidentiality. The journal is issued four times a year. For more info & subscription details, please visit http://isi-web.org/publ For more info & subscription details, please visit http://isi-web.org/publ ISI & ISI Association Publications International Statistical Institute ISI & ISI Association Publications Open access co-sponsored electronic publications Electronic Communications in Probability - publishes short notes, review papers and research announcements in probability theory. Electronic Journal of Probability - publishes full-size research articles in probability theory. Electronic Journal of Statistics - publishes research articles and short notes on theoretical, computational and applied statistics. Probability Surveys - publishes survey articles in theoretical and applied probability. Statistics Surveys - publishes survey articles in theoretical, computational, and applied statistics. Statistics Education Research Journal - focuses on research that can help to improve the teaching, learning, and understanding of statistics or probability at all educational levels and in both formal (classroom-based) and informal (out-of-classroom) contexts. ISI: Statistical Science for a Better World For more info & subscription details, please visit http://isi-web.org/publ http://isi-web.org/publ.
Recommended publications
  • JEROME P. REITER Department of Statistical Science, Duke University Box 90251, Durham, NC 27708 Phone: 919 668 5227
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