Mapping data granularity: The case of FADN

Titolo Rivista Economia agro-alimentare
Autori/Curatori Concetta Cardillo, Giuliano Vitali
Anno di pubblicazione 2022 Fascicolo 2021/3 Lingua Inglese
Numero pagine 0 P. 1-16 Dimensione file 0 KB
DOI 10.3280/ecag2021oa12760
Il DOI è il codice a barre della proprietà intellettuale: per saperne di più clicca qui

FrancoAngeli è membro della Publishers International Linking Association, Inc (PILA)associazione indipendente e non profit per facilitare (attraverso i servizi tecnologici implementati da CrossRef.org) l’accesso degli studiosi ai contenuti digitali nelle pubblicazioni professionali e scientifiche

The present analysis looks into the issue of mapping information contained in the fadn database aimed at finding a methodology useful as a preliminary analysis to data extraction.To the purpose the concept of data granularity has been introduced. The method has been used to perform a farm-based analysis, revealing a wide heterogeneity of factors and levels that show the existence of specific data ‘patches’. The work proved to be able to increase awareness regarding effective data availability as a preliminary analysis to queries performed on relational data-bases which are not designed from a systems basis, and that can be considered valid for any survey-supplied data.

Keywords: FADN; Farms; Survey; Granularity; Big data

  1. Csardi, G. & Nepusz, T. (2006). The igraph software package for complex network research. InterJournal - Complex Systems, 1695 pp. -- https://igraph.org.
  2. EU (2015). COMMISSION IMPLEMENTING REGULATION (EU) 2015/220 of 3 February 2015 -- https://eur-lex.europa.eu/legal-content/EN/TXT/PDF/?uri=CELEX:32015R0220&from=EN.
  3. Hand, D.J. (2020). Dark Data: Why What You Don’t Know Matters. Princeton University Press, DOI: 10.2307/j.ctvmd85db.
  4. Harrington, J. (2016). Data Quality. in Relational Database Design and Implementation (Fourth Edition) (pp. 509-520). Morgan Kaufmann, DOI: 10.1016/B978-0-12-804399-8.00025-9.
  5. Karr, A.F., Ashish, P.S. & Banks, D.L. (2006). Data quality: A statistical perspective. Statistical Methodology, 3(2), 137-173.
  6. Micic, N., Neagu, D., Campean, F. & Habib Zadeh, E. (2017). Towards a Data Quality Framework for Heterogeneous Data, DOI: 10.1109/iThings-GreenCom-CPSCom-SmartData.2017.28.
  7. Pedersen, T.L. (2021). An Implementation of Grammar of Graphics for Graphs and Networks, 143 pp. -- https://cran.r-project.org/web/packages/ggraph/ggraph.pdf.
  8. RICA (2021). -- https://rica.crea.gov.it.

Concetta Cardillo, Giuliano Vitali, Mapping data granularity: The case of FADN in "Economia agro-alimentare" 3/2021, pp 1-16, DOI: 10.3280/ecag2021oa12760