Data objects for knowing

AI and Society 37 (1):195-204 (2022)
  Copy   BIBTEX

Abstract

Although true in some aspects, the suggested characterization of today’s science as a dichotomy between traditional science and data-driven science misses some of the nuance, complexity, and possibility that exists between the two positions. Part of the problem is the claim that Data Science works without theories. There are many theories behind the data that are used in science. However, for data science, the only theories that matter are those in mathematics, statistics, and computer science. In this conceptual paper, we add two other philosophy of science tenets, experiments and data, to the discussion to create a more nuanced view of how data science uses theories. Following Ihde’s concept of technoscience and the incessant quest for more precision, magnification, and resolution, we argue that technology-driven science created a need for more technology-driven science, culminating in data science. Further, we adapt Hacking and Galison’s views on physics to argue that data science is also an experimental science, which uses data objects in experiments. Drawing from Heelan, we called these objects “data-objects-for-knowing”. Finally, we conclude that data science is a science to study artificially created phenomena—a science to study the data manipulated by the equations and operations of AI. It disregards the connections between data and the real world that were carefully built by the theories from other sciences. In the experiments of data science, data are the world itself. The knowledge created by data science is purposely disconnected from any theory from other sciences; it is a knowledge for the sake of itself.

Links

PhilArchive



    Upload a copy of this work     Papers currently archived: 92,674

External links

Setup an account with your affiliations in order to access resources via your University's proxy server

Through your library

Similar books and articles

Scientists' Responses to Anomalous Data: Evidence from Psychology, History, and Philosophy of Science.William F. Brewer & Clark A. Chinn - 1994 - PSA: Proceedings of the Biennial Meeting of the Philosophy of Science Association 1994:304 - 313.
Saving the Data.Greg Lusk - 2021 - British Journal for the Philosophy of Science 72 (1):277-298.
Data models and the acquisition and manipulation of data.Todd Harris - 2003 - Philosophy of Science 70 (5):1508-1517.
Reimagining the Big Data assemblage.Daniel Carter - 2018 - Big Data and Society 5 (2).
Scientific perspectivism: A philosopher of science's response to the challenge of big data biology.Werner Callebaut - 2012 - Studies in History and Philosophy of Science Part C: Studies in History and Philosophy of Biological and Biomedical Sciences 43 (1):69-80.
Towards a Taxonomy of the Model-Ladenness of Data.Alisa Bokulich - forthcoming - PSA: Proceedings of the Biennial Meeting of the Philosophy of Science Association.
Openness and trust in data-intensive science: the case of biocuration.Ane Møller Gabrielsen - 2020 - Medicine, Health Care and Philosophy 23 (3):497-504.
What Counts as Scientific Data? A Relational Framework.Sabina Leonelli - 2015 - Philosophy of Science 82 (5):810-821.
Data Science as Machinic Neoplatonism.Dan McQuillan - 2018 - Philosophy and Technology 31 (2):253-272.

Analytics

Added to PP
2021-02-06

Downloads
22 (#726,187)

6 months
12 (#240,719)

Historical graph of downloads
How can I increase my downloads?

Citations of this work

No citations found.

Add more citations

References found in this work

The Structure of Scientific Revolutions.Thomas S. Kuhn - 1962 - Chicago, IL: University of Chicago Press. Edited by Ian Hacking.
The Structure of Scientific Revolutions.Thomas Samuel Kuhn - 1962 - Chicago: University of Chicago Press. Edited by Otto Neurath.
Tractatus logico-philosophicus.Ludwig Wittgenstein - 1922 - Filosoficky Casopis 52:336-341.

View all 39 references / Add more references