Classifying Online Dating Profiles on Tinder using FaceNet Facial Embeddings

Jekel, Charles F, Haftka, Raphael T.

arXiv.org Machine Learning 

ABSTRACT A method to produce personalized classification models to automatically review online dating profiles on Tinder, based on the user's historical preference, is proposed. The method takes advantage of a FaceNet facial classification model to extract features which may be related to facial attractiveness. The embeddings from a FaceNet model were used as the features to describe an individual's face. A user reviewed 8,545 online dating profiles. For each reviewed online dating profile, a feature set was constructed from the profile images which contained just one face. Two approaches are presented to go from the set of features for each face to a set of profile features. A simple logistic regression trained on the em-beddings from just 20 profiles could obtain a 65% validation accuracy. A point of diminishing marginal returns was identified to occur around 80 profiles, at which the model accuracy of 73% would only improve marginally after reviewing a significant number of additional profiles. Index Terms-- facial classification, facial attractiveness, online dating, classifying dating profiles 1. INTRODUCTION Online dating has become a commonplace in today's society.

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