Cite

Carpenter, J. & Kenward, M. 2012. Multiple imputation and its application. – John Wiley & Sons10.1002/9781119942283Search in Google Scholar

Csörgő, T., Harnos, A., Rózsa, L., Karcza, Zs. & Fehérvári, P. 2016. Detailed description of the Ócsa Bird Ringing Station, Hungary. – Ornis Hungarica 24(2): 91–108. DOI: 10.1515/orhu-2016-001810.1515/orhu-2016-0018Open DOISearch in Google Scholar

Dahl, D. B. 2016. xtable: Export tables to LaTeX or HTML. – URL: https://CRAN.R-project.org/package=xtable, R package version 1.8-2Search in Google Scholar

Enders, C. K. 2010. Applied missing data analysis. – Guilford PressSearch in Google Scholar

Fox, J. 2017. RcmdrMisc: R Commander Miscellaneous Functions. – URL: https://CRAN.R-project.org/package=RcmdrMisc, R package version 1.0-6Search in Google Scholar

Harnos, A., Csörgő, T. & Fehérvári, P. 2016a Hitchhikers’ guide to analysing bird ringing data. Part 2. – Ornis Hungarica 24(1): 172–181. DOI: 10.1515/orhu-2016-001010.1515/orhu-2016-0010Open DOISearch in Google Scholar

Harnos, A., Fehérvári, P. & Csörgő, T. 2015a Hitchhikers’ guide to analysing bird ringing data. Part 1. – Ornis Hungarica 23(2): 163–188. DOI: 10.1515/orhu-2015-001810.1515/orhu-2015-0018Open DOISearch in Google Scholar

Harnos, A., Fehérvári, P., Piross, I. S., Karcza, Zs., Ágh, N., Kovács, Sz. & Csörgő, T. 2016b Exploratory analyses of migration timing and morphometrics of the Pied Flycatcher (Ficedula hypoleuca). – Ornis Hungarica 24(2): 109–126. DOI: 10.1515/orhu-2016-001910.1515/orhu-2016-0019Open DOISearch in Google Scholar

Harnos, A., Lang, Zs., Fehérvári, P. & Csörgő, T. 2015b Sex and age dependent migration phenology of the Pied Flycatcher in a stopover site in the Carpathian Basin. – Ornis Hungarica 23(2): 10–19. DOI: 10.1515/orhu-2015-001010.1515/orhu-2015-0010Open DOISearch in Google Scholar

Kowarik, A. & Templ, M. 2016. Imputation with the R package VIM. – Journal of Statistical Software 74(7): 1–16. DOI: 10.18637/jss.v074.i0710.18637/jss.v074.i07Open DOISearch in Google Scholar

Little, R. J. 2016. Missing Data/Imputation. – The Encyclopedia of Adulthood and Aging 1–5 DOI: 10.1002/9781118528921.wbeaa14710.1002/9781118528921.wbeaa147Open DOISearch in Google Scholar

R Core Team 2017. R: A Language and Environment for Statistical Computing. – R Foundation for Statistical Computing, Vienna, Austria – URL: https://www.R-project.org/Search in Google Scholar

Schafer, J. L. & Graham, J. W. 2002. Missing data: our view of the state of the art. – Psychological Methods 7(2): 147–177.10.1037/1082-989X.7.2.147Open DOISearch in Google Scholar

Templ, M., Alfons, A. & Filzmoser, P. 2012. Exploring incomplete data using visualization techniques. – Advances in Data Analysis and Classification 6(1): 29–47. DOI: 10.1007/s11634-011-0102-y10.1007/s11634-011-0102-yOpen DOISearch in Google Scholar

Templ, M., Alfons, A., Kowarik, A. & Prantner, B. 2015. VIM: Visualization and imputation of missing values. – CRANSearch in Google Scholar

Xie, Y. 2014. knitr: A comprehensive tool for reproducible research in R. – In: Stodden, V., Leisch, F. & Peng, R. D. (eds.) Implementing reproducible computational research. – Chapman and Hall/CRCSearch in Google Scholar

Xie, Y. 2015. Dynamic documents with R and knitr. – Chapman and Hall/CRC, Boca Raton 2nd ed.10.1201/b15166Search in Google Scholar

Xie, Y. 2016. knitr: A general-purpose package for dynamic report generation in R. – URL: http://yihui.name/knitr/, R package version 1.15.1Search in Google Scholar

eISSN:
2061-9588
Language:
English
Publication timeframe:
2 times per year
Journal Subjects:
Life Sciences, other