Japanese Journal of Statistics and Data Science View Homepage


Ontology type: schema:Periodical     


Journal Info

START YEAR

N/A

PUBLISHER

Springer Singapore

LANGUAGE

en

HOMEPAGE

https://link.springer.com/journal/42081

Recent publications latest 20 shown

  • 2019-03-26 Simultaneous estimation of parameters of Poisson distributions with unbalanced sample sizes
  • 2019-03-06 Bivariate beta-binomial model using Gaussian copula for bivariate meta-analysis of two binary outcomes with low incidence
  • 2019-03-04 Empirical Bayes methods in nested error regression models with skew-normal errors
  • 2019-03-01 Confidence interval for correlation estimator between latent processes
  • 2019-02-22 Jackknife variance estimation for general two-sample statistics and applications to common mean estimators under ordered variances
  • 2019-02-19 Estimation strategy of multilevel model for ordinal longitudinal data
  • 2019-02-16 Numerical study of reciprocal recommendation with domain matching
  • 2019-02-08 Consistency of test-based method for selection of variables in high-dimensional two-group discriminant analysis
  • 2019-02-07 A cylindrical distribution with heavy-tailed linear part
  • 2019-01-23 Evaluation of hotspot cluster detection using spatial scan statistic based on exact counting
  • 2019-01-03 Some inequalities contrasting principal component and factor analyses solutions
  • 2018-12-13 Inference on high-dimensional mean vectors under the strongly spiked eigenvalue model
  • 2018-12-05 Second-order asymptotics in a class of purely sequential minimum risk point estimation (MRPE) methodologies
  • 2018-12-05 On the product of the bivariate beta components
  • 2018-12 Asymptotic properties of rank estimators in a simple spatial linear regression model under spatial sampling designs
  • 2018-12 On confidence interval estimation of normal percentiles
  • 2018-12 A new four-parameter extension of Burr-XII distribution: its properties and applications
  • 2018-12 Usefulness of Akaike information criterion for making decision in two-sample problems when sample sizes are too small
  • 2018-12 Correction to: A new era of statistics and data science education in Japanese universities
  • 2018-12 Visualization and statistical modeling of financial big data: double-log modeling with skew-symmetric error distributions
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