| Literature DB >> 24675712 |
Hideyuki Doi1, Alexandre Heeren2, Pierre Maurage2.
Abstract
Several recent studies have described a strong correlation between nutritional or economic data and the number of Nobel awards obtained across a large range of countries. This sheds new light on the intriguing question of the key predictors of Nobel awards chances. However, all these studies have been focused on a single predictor and were only based on simple correlation and/or linear model analysis. The main aim of the present study was thus to clarify this debate by simultaneously exploring the influence of food consumption (cacao, milk, and wine), economic variables (gross domestic product) and scientific activity (number of publications and research expenditure) on Nobel awards. An innovative statistical analysis, hierarchical partitioning, has been used because it enables us to reduce collinearity problems by determining and comparing the independent contribution of each factor. Our results clearly indicate that a country's number of Nobel awards can be mainly predicted by its scientific achievements such as number of publications and research expenditure. Conversely, dietary habits and the global economy variable are only minor predictors; this finding contradicts the conclusions of previous studies. Dedicating a large proportion of the GDP to research and to the publication of a high number of scientific papers would thus create fertile ground for obtaining Nobel awards.Entities:
Mesh:
Year: 2014 PMID: 24675712 PMCID: PMC3968020 DOI: 10.1371/journal.pone.0092612
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Figure 1Relations between the numbers of Nobel laureates per 10 million people and the explanatory factors.
The relations are given for all Nobel categories (“Nobel.All”) and for natural sciences' Nobel laureates (Nobel.NatSci). The factors are Research Expenditure (% of GDP), Publication (number of scientific articles), GDP, Cacao (cacao bean consumption per capita), Wine (wine consumption per capita), and Milk (milk consumption per capita). The numbers in the lower boxes indicate the Pearson's correlation coefficients; all the coefficients are significant (p<0.001).
Figure 2The independent effect (R2) of each factor on the number of Nobel laureates for all Nobel categories.
The independent effects are analyzed by hierarchical partitioning.
Figure 3The independent effect (R2) of each factor on the number of Nobel laureates for natural sciences.
The independent effects are analyzed by hierarchical partitioning.