Is romantic desire predictable? Machine learning applied to initial romantic attraction

DOI

We used machine learning to test how well such measures predict people’s overall tendencies to romantically desire others (actor variance) and to be desired by others (partner variance), as well as desire for specific partners above and beyond actor and partner variance (relationship variance). Close relationships theoretical perspectives and matchmaking companies suggest that initial attraction is, to some extent, a product of two people’s self-reported traits and preferences. In two speed-dating studies, romantically unattached individuals completed over one hundred traits and preferences identified by past research as relevant to mate selection. Participants then met one another in a series of four-minute speed-dates. Random forests models predicted 4-18% of actor variance and 7-27% of partner variance, but, crucially, they were unable to predict relationship variance using any combination of traits and preferences reported beforehand. These results suggest that compatibility elements of human mating are challenging to predict before two people meet.

Sample A consisted of 163 undergraduate students who attended one of seven speed-dating events in 2005, and Sample B consisted of 187 undergraduate students who attended one of eight events in 2007. All participants were recruited via on-campus flyers and emails to participate in a speed-dating study, with the goal of meeting and potentially matching with opposite-sex participants. Detailed descriptions of the speed-dating research procedures and characteristics of each sample can be found in two previously-published papers (Finkel, Eastwick, & Matthews, 2007; Tidwell et al., 2013).

Identifier
DOI https://doi.org/10.5255/UKDA-SN-852716
Metadata Access https://datacatalogue.cessda.eu/oai-pmh/v0/oai?verb=GetRecord&metadataPrefix=oai_ddi25&identifier=b58a61991cbe91ae6a00774d557f2322881c8d90b2592624d51a90c2d49fcee9
Provenance
Creator Joel, S, University of Utah
Publisher UK Data Service
Publication Year 2017
Rights Samantha Joel, University of Utah
OpenAccess true
Representation
Language English
Resource Type Numeric
Discipline Psychology; Social and Behavioural Sciences
Spatial Coverage Illinois; United States