Polynomial Regression and Measurement Error : Implications for Information Systems Research
Aguirre-Urreta, M. I., Rönkkö, M., & Hu, J. (2020). Polynomial Regression and Measurement Error : Implications for Information Systems Research. Data Base for Advances in Information Systems, 51(3), 55-80. https://doi.org/10.1145/3410977.3410981
Published in
Data Base for Advances in Information SystemsDate
2020Discipline
Strategia ja yrittäjyysBasic or discovery scholarshipStrategy and EntrepreneurshipBasic or discovery scholarshipCopyright
© Association for Computing Machinery (ACM), 2020
Many of the phenomena of interest in information systems (IS) research are nonlinear, and it has consequently been recognized that by applying linear statistical models (e.g., linear regression), we may ignore important aspects of these phenomena. To address this issue, IS researchers are increasingly applying nonlinear models to their datasets. One popular analytical technique for the modeling and analysis of nonlinear relationships is polynomial regression, which in its simplest form fits a "U-shaped" curve to the data. However, the use of polynomial regression can be problematic when the independent variables are contaminated with measurement error, and the implications of error can be more severe than in linear models. In this research, we discuss a number of techniques that can be used for modeling polynomial relationships while simultaneously taking measurement error into account and examine their performance by using a simulation study. In addition, we discuss the use of marginal and response surface plots as interpretational aides when evaluating the results of polynomial models and showcase their use through a practical example using a well-known dataset. Our results clearly indicate that the use of a linear regression analysis for this kind of model is problematic, and we provide a set of recommendations for future IS research practice.
...
Publisher
Association for Computing Machinery (ACM)ISSN Search the Publication Forum
1532-0936Keywords
Publication in research information system
https://converis.jyu.fi/converis/portal/detail/Publication/41625638
Metadata
Show full item recordCollections
- Kauppakorkeakoulu [1381]
Related funder(s)
Research Council of FinlandFunding program(s)
Postdoctoral Researcher, AoFAdditional information about funding
The work by Mikko Rönkkö was supported by a grant from the Academy of Finland (grant 311309).License
Related items
Showing items with similar title or keywords.
-
Measuring the gender wage gap : a methodological note
Maczulskij, Terhi; Nyblom, Jukka (Routledge, 2020)We propose to estimate the Blinder-Oaxaca decomposition by a single-equation model augmented with interactions between the group membership and other predictors. The relative importance of predictors on the discriminatory ... -
The choice of control variables in empirical management research : How causal diagrams can inform the decision
Hünermund, Paul; Louw, Beyers; Rönkkö, Mikko (Elsevier, 2024)The Leadership Quarterly and the management community more broadly prioritize identifying causal relationships to inform effective leadership practices. Despite the availability of more refined causal identification ... -
Effect of variable selection strategy on the predictive models for adverse pregnancy outcomes of pre-eclampsia : A retrospective study
Zheng, Dongying; Hao, Xinyu; Khan, Muhanmmad; Kang, Fuli; Li, Fan; Hämäläinen, Timo; Wang, Lixia (Scholar Media Publishing Company, 2024)Objectives: The improvement of prediction for adverse pregnancy outcomes is quite essential to the women suffering from pre-eclampsia, while the collection of predictive indicators is the prerequisite. The traditional ... -
Eight Simple Guidelines for Improved Understanding of Transformations and Nonlinear Effects
Rönkkö, Mikko; Aalto, Eero; Tenhunen, Henni; Aguirre-Urreta, Miguel I. (SAGE Publications, 2022)Transforming variables before analysis or applying a transformation as a part of a generalized linear model are common practices in organizational research. Several methodological articles addressing the topic, either ... -
Reconsidering the implications of formative versus reflective measurement model misspecification
Aguirre‐Urreta, Miguel I.; Rönkkö, Mikko; Marakas, George M. (Wiley-Blackwell, 2024)The literature on formative modelling (“formative measurement”) in the information systems discipline claims that measurement model misspecification, where a reflective model is used instead of a more appropriate formative ...