PhilSci Archive

How localized are computational templates? A machine learning approach

Noichl, Maximilian (2023) How localized are computational templates? A machine learning approach. [Preprint]

[img]
Preview
Text
ds2_v3_preprint.pdf

Download (28MB) | Preview

Abstract

A commonly held background assumption about the sciences is that they connect along borders characterized by ontological or explanatory relationships, usually given in the order of mathematics, physics, chemistry, biology, psychology, and the social sciences. Interdisciplinary work, in this picture, arises in the connecting regions of adjacent disciplines. Philosophical research into interdisciplinary model transfer has increasingly complicated this picture by highlighting additional connections orthogonal to it. But most of these works have been done through case studies, which due to their strong focus struggle to provide foundations for claims about large-scale relations between multiple scientific disciplines. As a supplement, in this contribution, we propose to philosophers of science the use of modern science mapping techniques to trace connections between modeling techniques in large literature samples. We explain in detail how these techniques work, and apply them to a large, contemporary, and multidisciplinary data set (n=383.961 articles). Through the comparison of textual to mathematical representations, we suggest formulaic structures that are particularly common among different disciplines and produce first results indicating the general strength and commonality of such relationships.


Export/Citation: EndNote | BibTeX | Dublin Core | ASCII/Text Citation (Chicago) | HTML Citation | OpenURL
Social Networking:
Share |

Item Type: Preprint
Creators:
CreatorsEmailORCID
Noichl, Maximiliannoichlmax@hotmail.co.uk0000-0003-4518-0837
Keywords: model templates, computational templates, dh, computational methods
Subjects: General Issues > Data
Specific Sciences > Biology
Specific Sciences > Computation/Information
General Issues > Models and Idealization
Specific Sciences > Neuroscience
Specific Sciences > Physics
General Issues > Reductionism/Holism
Depositing User: Maximilian Noichl
Date Deposited: 31 Jan 2023 18:30
Last Modified: 31 Jan 2023 18:30
Item ID: 21700
Subjects: General Issues > Data
Specific Sciences > Biology
Specific Sciences > Computation/Information
General Issues > Models and Idealization
Specific Sciences > Neuroscience
Specific Sciences > Physics
General Issues > Reductionism/Holism
Date: 31 January 2023
URI: https://philsci-archive.pitt.edu/id/eprint/21700

Monthly Views for the past 3 years

Monthly Downloads for the past 3 years

Plum Analytics

Actions (login required)

View Item View Item