[Arbués, I., P. Revilla, and D. Salgado. 2013. “An optimization approach to selective editing.” Journal of Official Statistics 29: 489–510. Doi: http://dx.doi.org/10.2478/jos-2013-0037.10.2478/jos-2013-0037]Search in Google Scholar
[Boehm, B. 1988. “A spiral model of software development and enhancement.” IEEE Computer 21(5): 61–72. Doi: http://dx.doi.org/10.1145/12944.12948.10.1145/12944.12948]Search in Google Scholar
[Booch, G., R.A. Maksimchuk, M.W. Eagle, B.J. Young, J. Conallen, and K.A. Houston. 2007. Object-oriented Analysis and Design with Applications. Addison-Wesley.]Search in Google Scholar
[Chambers, J.M. 2008. Software for Data Analysis. Springer.10.1007/978-0-387-75936-4]Search in Google Scholar
[DDI Alliance. 2018. Data Documentation Initiative 2018. Available at https://www.ddialliance.org/ (accessed November 05, 2018).]Search in Google Scholar
[De Waal, T., J. Pannekoek, and S. Scholtus. 2011. Handbook of Statistical Data Editing and Imputation. Wiley.10.1002/9780470904848]Search in Google Scholar
[Dowle, M. and A. Srinivasan. 2016. data.table: Extension of ‘data.frame’. Available at https://CRAN.R-project.org/package=data.table. R package version 1.10.0.]Search in Google Scholar
[Esteban, E., S. Saldaña, and D. Salgado. 2017a. RepoTime: Implementation of a notation for time intervals. Available at https://github.com/david-salgado/RepoTime. R package version 0.2.2.]Search in Google Scholar
[Esteban, E., S. Saldaña, and D. Salgado. 2017b. StQ: Tools to manage metadata-incorporated keyvalue pair datasets. Available at https://github.com/david-salgado/StQ. R package version 0.4.34.]Search in Google Scholar
[Esteban, E., S. Saldaña, and D. Salgado. 2017c. RepoReadWrite: Read and write files from/to the microdata repository. Available at https://github.com/david-salgado/RepoReadWrite. R package version 0.4.5.]Search in Google Scholar
[Esteban, E., S. Saldaña, and D. Salgado. 2017d. RepoUtils: Implementation of tools to map and work with repositories. Available at https://github.com/david-salgado/RepoUtils. R package version 0.1.2.]Search in Google Scholar
[Esteban, E., S. Saldaña, and D. Salgado. 2017e. contObsPredModelParam: Class and methods for the parameters of a continuous observation- prediction model. Available at https://github.com/david-salgado/contObsPredModelParam. R package version 0.0.1.]Search in Google Scholar
[Esteban, E., S. Saldaña, and D. Salgado. 2017f. StQPrediction: Define S4 classes and methods to make predictions. Available at https://github.com/david-salgado/StQPrediction. R package version 0.0.1.]Search in Google Scholar
[Esteban, E., S. Saldaña, and D. Salgado. 2017g. StQImputation: Classes and methods to implement different imputation methods upon StQ objects. Available at https://github.com/david-salgado/StQImputation. R package version 0.0.1.]Search in Google Scholar
[Esteban, E., S. Saldaña, and D. Salgado. 2017h. SelEditErrorMoment: Compute the conditional measurement error moments under the optimization approach to selective editing. Available at https://github.com/david-salgado/SelEditErrorMoment. R package version 0.0.1.]Search in Google Scholar
[Esteban, E., S. Saldaña, and D. Salgado. 2017i. SelEditFunctions: Functions for selective editing. Available at https://github.com/david-salgado/SelEditFunctions. R package version 0.0.1.]Search in Google Scholar
[Esteban, E., S. Saldaña, and D. Salgado. 2017j. SelEditUnitPriorit: Classes and methods to implement unit prioritization. Available at https://github.com/david-salgado/SelEditUnitPriorit. R package version 0.0.1.]Search in Google Scholar
[Esteban, E., S. Saldaña, and D. Salgado. 2017k. TSPred: Point and std prediction of time series. Available at https://github.com/elisa-esteban/TSPred. R package version 0.2.5.]Search in Google Scholar
[Esteban, E., S. Saldaña, and D. Salgado. 2017l. BestTSPred: Construction of objects of class BestTSPredParam. Available at https://github.com/elisa-esteban/BestTSPred. R package version 0.0.1.]Search in Google Scholar
[Esteban, E., S. Saldaña, and D. Salgado. 2017m. Software implementation of optimization-based selective editing techniques at Statistics Spain (INE). UNECE Work Session on Statistical Data Editing. The Hague, 24–26 April 2017. Available at https://www.unece.org/fileadmin/DAM/stats/documents/ece/ces/ge.44/2017/mtg2/Paper_19_StatSpain.pdf (accessed November 05, 2018).]Search in Google Scholar
[Eurostat. 2014a. ESS Vision 2020. Available at http://ec.europa.eu/eurostat/web/ess/about-us/ess-vision-2020.]Search in Google Scholar
[Eurostat. 2014b. Vision 2020 Implementation Portfolio. Available at http://ec.europa.eu/eurostat/web/ess/about-us/ess-vision-2020/implementation-portfolio.]Search in Google Scholar
[HLG-MOS. 2011. “High-Level Group for the Modernisation of Official Statistics. Strategic vision of the High-Level Group for strategic developments in business architecture in Statistics.” Conference of European Statisticians Geneva. 59th Plenary Session. 14–16 June, 2011. Working Paper 1. Available at https://www.unece.org/fileadmin/DAM/stats/documents/ece/ces/2011/1.e.pdf.]Search in Google Scholar
[HLG-MOS. 2017. High-Level Group for the Modernisation of Official Statistics. UN-ECE Statistics Wikis. Available at http://www1.unece.org/stat/platform/display/hlgbas/High-Level+Group+for+the+Modernisation+of+Official+Statistics.]Search in Google Scholar
[Informal Task Force on Metadata Flows. 2013. “Metadata flows in the GSBPM.” Work Session on Statistical Metadata. Geneva, 6–8 May, 2013. Working Paper 22. Available at https://www.unece.org/fileadmin/DAM/stats/documents/ece/ces/ge.40/2013/WP22.pdf (accessed November 05, 2018).]Search in Google Scholar
[Lundell, L.-G. 2013. Framework of metadata requirements and roles in the SDWH. ESSnet on microdata linking and data warehousing in production of business statistics. Deliverable 1.1. Available at https://ec.europa.eu/eurostat/cros/content/dwh-sga2-wp1-11-metadata-framework-statistical-data-warehousing-v112-final_en.]Search in Google Scholar
[Palmquist, M.S., M.A Lapham, S. Miller, T. Chick, and I. Ozkaya. 2013. Parallel worlds: agile and waterfall differences and similarities. Technical Note CMU/SEI-2013-TN-021. Software Engineering Institute. Carnegie Mellon University. Available at http://repository.cmu.edu/cgi/viewcontent.cgi?article=1761&context=sei.]Search in Google Scholar
[Pearson, J.W., S. Olver, and M.A. Porter. 2017. “Numerical methods for the computation of the confluent and Gauss hypergeometric functions.” Numerical Algorithms 74: 821–866. Doi: http://dx.doi.org/10.1007/s11075-016-0173-0.10.1007/s11075-016-0173-0]Search in Google Scholar
[R Core Team. 2012. R: A language and environment for statistical computing. R Foundation for Statistical Computing. Available at http://www.R-project.org.]Search in Google Scholar
[Saltzer, J.H. and M.F. Kaashoek. 2009. “Principles of computer system design: An Introduction. Morgan Kaufmann, 2009. ISBN: 978-0-12-374957-4.]Search in Google Scholar
[Sanguiao, L. 2017. Transformation of Standard Questionnaires. Available at https://github.com/Luis-Sanguiao/StQT. R package version 0.1.0.9000.]Search in Google Scholar
[UNECE. 2013a. Generic Statistical Business Process Model. Version 5.0. Available at http://www1.unece.org/stat/platform/display/metis/The+Generic+Statistical+Business+Process+Model.]Search in Google Scholar
[UNECE. 2013b. Generic Statistical Information Model. Version 1.1. Available at https://statswiki.unece.org/display/gsim/Generic+Statistical+Information+Model.]Search in Google Scholar
[UNECE. 2015. Generic Statistical Data Editing Models. Version 1.0. Available at https://statswiki.unece.org/display/kbase/GSDEMs.]Search in Google Scholar
[UNECE. 2017a. Statistical Data Editing Work Sessions. Available at http://www1.unece.org/stat/platform/display/kbase/UNECE+Work+Sessions+on+Statistical+Data+Editing.]Search in Google Scholar
[UNECE. 2017b. Capabilities and Communication Group. Available at http://www1.unece.org/stat/platform/display/MCOOFE/Capabilities+and+Communication+ Group%3A+Home.]Search in Google Scholar
[Van der Loo, M. 2015. A formal typology of data validation functions. UNECE Work Session on Statistical Data Editing. Budapest, 14–16 September 2015. https://www.unece.org/fileadmin/DAM/stats/documents/ece/ces/ge.44/2015/mtg1/WP_5_Netherlands_A_formal_typology_of_data_validation_functions.pdf (accessed November 05, 2018).]Search in Google Scholar
[Van Roy, P. and S. Haridi. 2004. “Concepts, Techniques, and Models of Computer Programming.” MIT Press.]Search in Google Scholar
[Weinberg, G.M. 2011. “An introduction to General Systems Thinking.” Weinberg and Weinberg. ISBN: 978-0-93-263349-1.]Search in Google Scholar
[Wickham, H. 2014. “Tidy data.” Journal of Statistical Software 29(10): 1–23. Doi: http://dx.doi.org/10.18637/jss.v059.i10.10.18637/jss.v059.i10]Search in Google Scholar