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2019 | 46 | 67-89

Article title

Czy więcej znaczy lepiej? Badania ilościowe w geografii społeczno-ekonomicznej ery Big Data

Content

Title variants

EN
Does more mean better? Quantitative research in the socio-economic geography in the age of Big Data

Languages of publication

PL

Abstracts

PL
Wielkie zbiory danych typu Big Data są obecnie nieodłącznym elementem badań w wielu dziedzinach nauki – w tym w geografii społeczno-ekonomicznej. Znajdują one szereg zastosowań, zarówno wnosząc możliwość analizy nowych danych w klasycznych problemach badawczych, jak i same w sobie będąc nowym przedmiotem badań oraz pozwalając na badanie cyfrowych geografii. Jednocześnie Big Data krytykuje się za niejednorodność, brak reprezentatywności, nierówność reprezentacji czy też problemy etyczne. Z tego powodu zwracamy uwagę na szereg dylematów związanych z obecnością Big Data w praktyce badawczej, sugerując istotną rolę krytycznego podejścia do ich zastosowania w praktyce badawczej.
EN
Big Data are inseparable part of the current research methodology in many scientific disciplines – including socio-economic geography. They are being used as a new data in old research problems, as a new research objects and as a means to investigate digital geographies. Big Data are being criticized for lack of representativeness and problematic representation, heterogeneity, and ethical issues. Despite these problems, their presence as a part of the geographical research methodology is increasingly frequent. We propose a set of recommendations that in our view allows a researcher to critically assess the validity of utilizing Big Data in a given research project.

Year

Issue

46

Pages

67-89

Physical description

Dates

published
2019-05-09

Contributors

  • Uniwersytet im. Adama Mickiewicza w Poznaniu, Instytut Geografii Społeczno-Ekonomicznej i Gospodarki Przestrzennej
author
  • Akademia Leona Koźmińskiego, Katedra Zarządzania w Społeczeństwie Sieciowym

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Publication order reference

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YADDA identifier

bwmeta1.element.ojs-doi-10_14746_rrpr_2019_46_05
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