Unistat
PengembangUnistat Ltd
Templat:Kotak info perangkat lunak/simple
Sistem operasiWindows
Jenisstatistika
Lisensiproprietary
Situs webUnistat

Unistat adalah program komputer untuk analisis data statistika yang mempunyai dua macam moda aplikasi: antar muka pengguna stand-alone, dan perkakas tambahan untuk perangkat lunak Microsoft-Excel. Sejak dikembangkan pertama kali pada tahun 1984, Unistat banyak dipakai untuk aplikasi biomedis, ilmu sosial dan lain sebagainya. Program ini mempunyai kemampuan proses meliputi:

  • statistika parametrik
  • statistika non-parametrik: binomial test, chi-square test, Cohen's kappa, Fisher's exact test, Friedman two-way analysis of variance, Kendall's tau, Kendall's W, Kolmogorov–Smirnov test, Kruskal–Wallis one-way analysis of variance, Mann–Whitney U, McNemar's test, median test, Spearman's rank correlation coefficient, Duncan's new multiple range test, Wald–Wolfowitz runs test, Wilcoxon signed-rank test
  • Regresi: Linear regression, Stepwise regression, Nonlinear regression, logit/probit/Weibull, logistic regression, multinomial logit, Poisson regression, dan Cox regressions
  • Analysis of variance (ANOVA)
  • model linear umum
  • Analisis multivariat: Principal components analysis, Linear discriminant analysis, canonical analysis, Multidimensional scaling, * Canonical correlation analysis
  • Time series
  • reliability
  • Survival analysis
  • Kendali mutu (Quality control)
  • Bioassay Analysis: Fieller confidence intervals, tes validitas, dll.

Referensi

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Lihat pula

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Daftar perangkat lunak statistika

📚 Artikel Terkait di Wikipedia

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Efek pengacau

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