Title |
What’s in a Name: A Bayesian Hierarchical Analysis of the Name-Letter Effect
|
---|---|
Published in |
Frontiers in Psychology, January 2012
|
DOI | 10.3389/fpsyg.2012.00334 |
Pubmed ID | |
Authors |
Oliver Dyjas, Raoul P. P. P. Grasman, Ruud Wetzels, Han L. J. van der Maas, Eric-Jan Wagenmakers |
Abstract |
People generally prefer their initials to the other letters of the alphabet, a phenomenon known as the name-letter effect. This effect, researchers have argued, makes people move to certain cities, buy particular brands of consumer products, and choose particular professions (e.g., Angela moves to Los Angeles, Phil buys a Philips TV, and Dennis becomes a dentist). In order to establish such associations between people's initials and their behavior, researchers typically carry out statistical analyses of large databases. Current methods of analysis ignore the hierarchical structure of the data, do not naturally handle order-restrictions, and are fundamentally incapable of confirming the null hypothesis. Here we outline a Bayesian hierarchical analysis that avoids these limitations and allows coherent inference both on the level of the individual and on the level of the group. To illustrate our method, we re-analyze two data sets that address the question of whether people are disproportionately likely to live in cities that resemble their name. |
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