Using the structure of the residuals to evaluate the goodness of fit : a pedagogical case study with Newton’s law of cooling
(2025) In European Journal of Physics 46(5).- Abstract
Introductions to data analysis in university physics often focus on fitting (typically to linearised functions) and uncertainty propagation, but residuals are less commonly introduced. Structured residuals indicate that the function (theoretical description) used to fit data does not capture all the relevant elements (i.e. the theoretical description is incomplete), and can be present even when the fit line is within the error bars of all data points. Residuals are therefore resilient to strategies such as forcing numerical agreement between data and theory (fit) through increasing uncertainty estimates. In this paper, we argue that introducing residuals alongside fitting could be an effective strategy for encouraging critical... (More)
Introductions to data analysis in university physics often focus on fitting (typically to linearised functions) and uncertainty propagation, but residuals are less commonly introduced. Structured residuals indicate that the function (theoretical description) used to fit data does not capture all the relevant elements (i.e. the theoretical description is incomplete), and can be present even when the fit line is within the error bars of all data points. Residuals are therefore resilient to strategies such as forcing numerical agreement between data and theory (fit) through increasing uncertainty estimates. In this paper, we argue that introducing residuals alongside fitting could be an effective strategy for encouraging critical scientific thinking, particularly about trusting and understanding one’s data, and a useful tool for identifying—and realising—laboratory tasks that students can develop into genuine investigations. We illustrate this with a simple experiment of cooling water where the structured residuals of the fitted temperature data clearly indicate that the theoretical description (Newton’s Law of Cooling) is insufficient. This demonstrates the overlooked potential for residuals to be introduced as one of the earliest elements of data analysis.
(Less)
- author
- Dunnett, K.
LU
; Le, Kim Cuong
LU
and Holmqvist, T.
LU
- organization
-
- National Resource Centre for Physics Education
- Educational Sciences
- Lund Laser Centre, LLC
- LU Profile Area: Light and Materials
- LTH Profile Area: Photon Science and Technology
- LTH Profile Area: The Energy Transition
- LTH Profile Area: Aerosols
- Combustion Physics
- Undergraduate Programme of Studies in Physics within Faculty of Science
- publishing date
- 2025-09
- type
- Contribution to journal
- publication status
- published
- subject
- keywords
- data analysis, Newton’s law of cooling, residuals
- in
- European Journal of Physics
- volume
- 46
- issue
- 5
- article number
- 055104
- publisher
- IOP Publishing
- external identifiers
-
- scopus:105016999565
- ISSN
- 0143-0807
- DOI
- 10.1088/1361-6404/ae0201
- language
- English
- LU publication?
- yes
- id
- 1ac7c3b9-0380-401f-944c-b5f494140ada
- date added to LUP
- 2025-11-26 13:14:57
- date last changed
- 2025-11-26 13:16:04
@article{1ac7c3b9-0380-401f-944c-b5f494140ada,
abstract = {{<p>Introductions to data analysis in university physics often focus on fitting (typically to linearised functions) and uncertainty propagation, but residuals are less commonly introduced. Structured residuals indicate that the function (theoretical description) used to fit data does not capture all the relevant elements (i.e. the theoretical description is incomplete), and can be present even when the fit line is within the error bars of all data points. Residuals are therefore resilient to strategies such as forcing numerical agreement between data and theory (fit) through increasing uncertainty estimates. In this paper, we argue that introducing residuals alongside fitting could be an effective strategy for encouraging critical scientific thinking, particularly about trusting and understanding one’s data, and a useful tool for identifying—and realising—laboratory tasks that students can develop into genuine investigations. We illustrate this with a simple experiment of cooling water where the structured residuals of the fitted temperature data clearly indicate that the theoretical description (Newton’s Law of Cooling) is insufficient. This demonstrates the overlooked potential for residuals to be introduced as one of the earliest elements of data analysis.</p>}},
author = {{Dunnett, K. and Le, Kim Cuong and Holmqvist, T.}},
issn = {{0143-0807}},
keywords = {{data analysis; Newton’s law of cooling; residuals}},
language = {{eng}},
number = {{5}},
publisher = {{IOP Publishing}},
series = {{European Journal of Physics}},
title = {{Using the structure of the residuals to evaluate the goodness of fit : a pedagogical case study with Newton’s law of cooling}},
url = {{http://dx.doi.org/10.1088/1361-6404/ae0201}},
doi = {{10.1088/1361-6404/ae0201}},
volume = {{46}},
year = {{2025}},
}