Emerging categories in scientific explanations
Abstract
Clear and effective explanations are essential for human understanding and knowledge dissemination. The scope of scientific research aiming to understand the essence of explanations has recently expanded from the social sciences to machine learning and artificial intelligence. Explanations for machine learning decisions must be impactful and human-like, and there is a lack of large-scale datasets focusing on human-like and human-generated explanations. This work aims to provide such a dataset by: extracting sentences that indicate explanations from scientific literature among various sources in the biotechnology and biophysics topic domains (e.g. PubMed's PMC Open Access subset); providing a multi-class notation derived inductively from the data; evaluating annotator consensus on the emerging categories. The sentences are organized in an openly-available dataset, with two different classifications (6-class and 3-class category annotation), and the 3-class notation achieves a 0.667 Krippendorf Alpha value.
Cite
@article{arxiv.2505.17832,
title = {Emerging categories in scientific explanations},
author = {Giacomo Magnifico and Eduard Barbu},
journal= {arXiv preprint arXiv:2505.17832},
year = {2025}
}
Comments
Accepted at the 3rd TRR 318 Conference: Contextualizing Explanations (ContEx25), as a two-pager abstract. Will be published at BiUP (Bielefeld University Press) at a later date