Data: (with Big Data and Database Semantics)

Research output: Contribution to journalJournal articleResearchpeer-review

Standard

Data : (with Big Data and Database Semantics). / Hjørland, Birger.

In: Knowledge Organization, Vol. 45, No. 8, 12.2018, p. 685-708.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Hjørland, B 2018, 'Data: (with Big Data and Database Semantics)', Knowledge Organization, vol. 45, no. 8, pp. 685-708. https://doi.org/10.5771/0943-7444-2018-8-685

APA

Hjørland, B. (2018). Data: (with Big Data and Database Semantics). Knowledge Organization, 45(8), 685-708. https://doi.org/10.5771/0943-7444-2018-8-685

Vancouver

Hjørland B. Data: (with Big Data and Database Semantics). Knowledge Organization. 2018 Dec;45(8):685-708. https://doi.org/10.5771/0943-7444-2018-8-685

Author

Hjørland, Birger. / Data : (with Big Data and Database Semantics). In: Knowledge Organization. 2018 ; Vol. 45, No. 8. pp. 685-708.

Bibtex

@article{29a122e0db9140079dab478eb4c9e60b,
title = "Data: (with Big Data and Database Semantics)",
abstract = "It is argued that data should be defined as information on properties of units of analysis. Epistemologically it is important to establish that what is considered data by somebody need not be data for somebody else. This article considers the nature of data and “big data” and the relation between data, information, knowledge and documents. It is common for all these concepts that they are about phenomena produced in specific contexts for specific purposes and may be represented in documents, including as representations in databases. In that process, they are taken out of their original contexts and put into new ones and thereby data loses some of or all their meaning due to the principle of semantic holism. Some of this lost meaning should be reestablished in the databases and the representations of data/documents cannot be understood as a neutral activity, but as an activity supporting the overall goal implicit in establishing the database. Utilizing (big) data (as it is the case with utilizing information, knowledge and documents) demands first of all the identification of the potentials of these data for relevant purposes. The most fruitful theoretical frame for knowledge organization and data science is the social epistemology suggested by Shera (1951). One important aspect about big data is that they are often unintentional traces we leave during all kinds of activities. Their potential to inform somebody about something is therefore less direct as compared to data that have been produced intentionally as, for example, scientific databases.",
author = "Birger Hj{\o}rland",
note = "Publikationen er ogs{\aa} publiceret online: http://www.isko.org/cyclo/data",
year = "2018",
month = dec,
doi = "10.5771/0943-7444-2018-8-685",
language = "English",
volume = "45",
pages = "685--708",
journal = "Knowledge Organization",
issn = "0943-7444",
publisher = "Ergon-Verlag",
number = "8",

}

RIS

TY - JOUR

T1 - Data

T2 - (with Big Data and Database Semantics)

AU - Hjørland, Birger

N1 - Publikationen er også publiceret online: http://www.isko.org/cyclo/data

PY - 2018/12

Y1 - 2018/12

N2 - It is argued that data should be defined as information on properties of units of analysis. Epistemologically it is important to establish that what is considered data by somebody need not be data for somebody else. This article considers the nature of data and “big data” and the relation between data, information, knowledge and documents. It is common for all these concepts that they are about phenomena produced in specific contexts for specific purposes and may be represented in documents, including as representations in databases. In that process, they are taken out of their original contexts and put into new ones and thereby data loses some of or all their meaning due to the principle of semantic holism. Some of this lost meaning should be reestablished in the databases and the representations of data/documents cannot be understood as a neutral activity, but as an activity supporting the overall goal implicit in establishing the database. Utilizing (big) data (as it is the case with utilizing information, knowledge and documents) demands first of all the identification of the potentials of these data for relevant purposes. The most fruitful theoretical frame for knowledge organization and data science is the social epistemology suggested by Shera (1951). One important aspect about big data is that they are often unintentional traces we leave during all kinds of activities. Their potential to inform somebody about something is therefore less direct as compared to data that have been produced intentionally as, for example, scientific databases.

AB - It is argued that data should be defined as information on properties of units of analysis. Epistemologically it is important to establish that what is considered data by somebody need not be data for somebody else. This article considers the nature of data and “big data” and the relation between data, information, knowledge and documents. It is common for all these concepts that they are about phenomena produced in specific contexts for specific purposes and may be represented in documents, including as representations in databases. In that process, they are taken out of their original contexts and put into new ones and thereby data loses some of or all their meaning due to the principle of semantic holism. Some of this lost meaning should be reestablished in the databases and the representations of data/documents cannot be understood as a neutral activity, but as an activity supporting the overall goal implicit in establishing the database. Utilizing (big) data (as it is the case with utilizing information, knowledge and documents) demands first of all the identification of the potentials of these data for relevant purposes. The most fruitful theoretical frame for knowledge organization and data science is the social epistemology suggested by Shera (1951). One important aspect about big data is that they are often unintentional traces we leave during all kinds of activities. Their potential to inform somebody about something is therefore less direct as compared to data that have been produced intentionally as, for example, scientific databases.

U2 - 10.5771/0943-7444-2018-8-685

DO - 10.5771/0943-7444-2018-8-685

M3 - Journal article

VL - 45

SP - 685

EP - 708

JO - Knowledge Organization

JF - Knowledge Organization

SN - 0943-7444

IS - 8

ER -

ID: 209653225