The UvA-LINKER will give you a range of other options to find the full text of a publication (including a direct link to the full-text if it is located on another database on the internet).
De UvA-LINKER biedt mogelijkheden om een publicatie elders te vinden (inclusief een directe link naar de publicatie online als deze beschikbaar is in een database op het internet).

Zoekresultaten

Record: oai:ARNO:440882

AuteursL. Taylor, R. Schroeder, E. Meyer
TitelEmerging practices and perspectives on Big Data analysis in economics: Bigger and better or more of the same?
TijdschriftBig Data & Society
Jaargang1
Jaar2014
Nummer2
Pagina's1-10
ISSN20539517
FaculteitFaculteit der Maatschappij- en Gedragswetenschappen
Instituut/afd.FMG: Amsterdam Institute for Social Science Research (AISSR)
SamenvattingAlthough the terminology of Big Data has so far gained little traction in economics, the availability of unprecedentedly rich datasets and the need for new approaches – both epistemological and computational – to deal with them is an emerging issue for the discipline. Using interviews conducted with a cross-section of economists, this paper examines perspectives on Big Data across the discipline, the new types of data being used by researchers on economic issues, and the range of responses to this opportunity amongst economists. First, we outline the areas in which it is being used, including the prediction and ‘nowcasting’ of economic trends; mapping and predicting influence in the context of marketing; and acting as a cheaper or more accurate substitute for existing types of data such as censuses or labour market data. We then analyse the broader current and potential contributions of Big Data to economics, such as the ways in which econometric methodology is being used to shed light on questions beyond economics, how Big Data is improving or changing economic models, and the kinds of collaborations arising around Big Data between economists and other disciplines.
TaalEngels
URLgo to publisher's site
Soort documentartikel
Download
Document finderUvA-Linker