PhilSci Archive

Exploration Before Representation: What Do Machine Learning Models Do in Science?

Motesharei, Amir (2026) Exploration Before Representation: What Do Machine Learning Models Do in Science? In: UNSPECIFIED.

[img] Text
Exploratory ML Models.pdf

Download (0B)

Abstract

Philosophy of machine learning frequently frames what machine learning models do in science in target-oriented terms. This paper argues that this framing misses a significant modeling function: across many stages of scientific practice, machine learning models are used primarily for exploration, with target-oriented, representational assessment deferred. I develop a framework for exploratory machine learning models, characterizing them by their functional role in carving and exploring spaces of theoretical/experimental possibilities under target indeterminacy. I then propose robustness, calibration, and downstream investigative yield as primary evaluation criteria. I further argue that such workflows can warrant theoretically constrained modal claims and support how-possible inferences.


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

Item Type: Conference or Workshop Item (UNSPECIFIED)
Creators:
CreatorsEmailORCID
Motesharei, Amir0000-0002-8475-1615
Subjects: Specific Sciences > Artificial Intelligence
Specific Sciences > Artificial Intelligence > Machine Learning
Depositing User: Mr. Amir Motesharei
Date Deposited: 31 May 2026 12:44
Last Modified: 31 May 2026 12:44
Item ID: 29818
Subjects: Specific Sciences > Artificial Intelligence
Specific Sciences > Artificial Intelligence > Machine Learning
Date: 19 November 2026
URI: https://philsci-archive.pitt.edu/id/eprint/29818

Monthly Views for the past 3 years

Monthly Downloads for the past 3 years

Plum Analytics

Actions (login required)

View Item View Item