Joshua D. Naranjo
Affiliations: | Western Michigan University, Kalamazoo, MI, United States |
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StatisticsGoogle:
"Joshua Naranjo"Children
Sign in to add traineeJason C. Parcon | grad student | 2003 | Western Michigan University |
Ruvie L. Martinez | grad student | 2007 | Western Michigan University |
Annie A. Tordilla | grad student | 2009 | Western Michigan University |
Karen G. Rosales | grad student | 2010 | Western Michigan University |
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Publications
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Darilay AT, Naranjo JD. (2011) A pretest for using logrank or Wilcoxon in the two-sample problem Computational Statistics and Data Analysis. 55: 2400-2409 |
Martinez RLMC, Naranjo JD. (2010) A pretest for choosing between logrank and wilcoxon tests in the two-sample problem Metron. 68: 111-125 |
McKean JW, Naranjo JD, Huitema BE. (2001) A robust method for the analysis of experiments with ordered treatment levels Psychological Reports. 89: 267-273 |
Naranjo JD, McKean JW. (2001) Adjusting for regression effect in uncontrolled studies Biometrics. 57: 178-181 |
Terpstra JT, McKean JW, Naranjo JD. (2001) Theory & Methods: Weighted Wilcoxon Estimates for Autoregression Australian & New Zealand Journal of Statistics. 43: 399-419 |
Terpstra JT, McKean JW, Naranjo JD. (2001) GR-estimates for an autoregressive time series Statistics and Probability Letters. 51: 165-172 |
Terpstra JT, Mckean JW, Naranjo JD. (2001) Weighted Wilcoxon estimates for autoregression Australian and New Zealand Journal of Statistics. 43: 399-419 |
Terpstra JT, McKean JW, Naranjo JD. (2000) Highly efficient weighted for autoregression wilcoxon estimes for autoregression Statistics. 35: 45-80 |
Terpstra JT, McKean JW, Naranjo JD. (2000) Highly efficient weighted Wilcoxon estimates for autoregression Statistics. 35: 45-80 |
McKean JW, Naranjo JD, Sheather SJ. (1999) Diagnostics for comparing robust and least squares fits Journal of Nonparametric Statistics. 11: 161-188 |