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Autori principali: Signorelli, Serena, Fontana, Matteo, Gabrielli, Lorenzo, Vespe, Michele
Natura: Preprint
Pubblicazione: 2022
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Accesso online:https://arxiv.org/abs/2207.13508
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author Signorelli, Serena
Fontana, Matteo
Gabrielli, Lorenzo
Vespe, Michele
author_facet Signorelli, Serena
Fontana, Matteo
Gabrielli, Lorenzo
Vespe, Michele
contents The vast amount of data produced everyday (so-called 'digital traces') and available nowadays represent a gold mine for the social sciences, especially in a computational context, that allows to fully extract their informational and knowledge value. In the latest years, statistical offices have made efforts to profit from harnessing the potential offered by these new sources of data, with promising results. But how difficult is this integration process? What are the challenges that statistical offices would likely face to profit from new data sources and analytical methods? This chapter will start by setting the scene of the current official statistics system, with a focus on its fundamental principles and dimensions relevant to the use of non-traditional data. It will then present some experiments and proofs of concept in the context of data innovation for official statistics, followed by a discussion on prospective challenges related to sustainable data access, new technical and methodological approaches and effective use of new sources of data.
format Preprint
id arxiv_https___arxiv_org_abs_2207_13508
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Challenges and Opportunities of Computational Social Science for Official Statistics
Signorelli, Serena
Fontana, Matteo
Gabrielli, Lorenzo
Vespe, Michele
Methodology
The vast amount of data produced everyday (so-called 'digital traces') and available nowadays represent a gold mine for the social sciences, especially in a computational context, that allows to fully extract their informational and knowledge value. In the latest years, statistical offices have made efforts to profit from harnessing the potential offered by these new sources of data, with promising results. But how difficult is this integration process? What are the challenges that statistical offices would likely face to profit from new data sources and analytical methods? This chapter will start by setting the scene of the current official statistics system, with a focus on its fundamental principles and dimensions relevant to the use of non-traditional data. It will then present some experiments and proofs of concept in the context of data innovation for official statistics, followed by a discussion on prospective challenges related to sustainable data access, new technical and methodological approaches and effective use of new sources of data.
title Challenges and Opportunities of Computational Social Science for Official Statistics
topic Methodology
url https://arxiv.org/abs/2207.13508