Reverse Correlating Social Face Perception

Reverse correlation (RC) techniques provide a data-driven approach to model internal representations in an unconstrained way. Here, we used this approach to model social perception of faces. In the RC task, participants repeatedly selected from two face images—created by superimposing randomly generated noise masks on the same face—the face that looked most trustworthy (or, in other conditions: untrustworthy, dominant, or submissive). We calculated classification images (CIs) by averaging all selected images. Trait judgments of independent participants, as well as objective metrics, showed that the CIs visualized the intended traits well. Furthermore, tests of pixel clusters showed that diagnostic information resided mostly in mouth, eye, eyebrow, and hair regions. The current work shows that RC provides an excellent tool to extract psychologically meaningful images that map onto social perception.

[1]  Ron Dotsch,et al.  Ethnic Out-Group Faces Are Biased in the Prejudiced Mind , 2008, Psychological science.

[2]  Joshua A Solomon,et al.  Noise reveals visual mechanisms of detection and discrimination. , 2002, Journal of vision.

[3]  Albert J. Ahumada,et al.  Technique to extract relevant image features for visual tasks , 1998, Electronic Imaging.

[4]  Frédéric Gosselin,et al.  Bubbles: a technique to reveal the use of information in recognition tasks , 2001, Vision Research.

[5]  Bogdan Wojciszke,et al.  Morality and competence in person- and self-perception , 2005 .

[6]  A. Ahumada,et al.  Stimulus Features in Signal Detection , 1971 .

[7]  C. Tyler,et al.  What makes Mona Lisa smile? , 2004, Vision Research.

[8]  P. Schyns,et al.  Superstitious Perceptions Reveal Properties of Internal Representations , 2003, Psychological science.

[9]  C. Macrae,et al.  A boy primed Sue: feature‐based processing and person construal , 2007 .

[10]  Rachael E. Jack,et al.  Internal representations reveal cultural diversity in expectations of facial expressions of emotion. , 2012, Journal of experimental psychology. General.

[11]  Olivier Corneille,et al.  Romantic relationship status biases memory of faces of attractive opposite-sex others: Evidence from a reverse-correlation paradigm , 2011, Cognition.

[12]  Alexander Todorov,et al.  Modeling Social Perception of Faces [Social Sciences] , 2011, IEEE Signal Processing Magazine.

[13]  A. Ahumada Classification image weights and internal noise level estimation. , 2002, Journal of vision.

[14]  Alexander Todorov,et al.  Modeling Social Perception of Faces , 2011 .

[15]  R. Banse,et al.  Facing Europe , 2011, Psychological science.

[16]  M. Bar,et al.  Very first impressions. , 2006, Emotion.

[17]  J. Victor Analyzing receptive fields, classification images and functional images: challenges with opportunities for synergy , 2005, Nature Neuroscience.

[18]  Michael C. Mangini,et al.  Making the ineffable explicit: estimating the information employed for face classifications , 2004, Cogn. Sci..

[19]  Charles M Judd,et al.  Compensation Versus Halo: The Unique Relations Between the Fundamental Dimensions of Social Judgment , 2008, Personality & social psychology bulletin.

[20]  A. Todorov,et al.  The functional basis of face evaluation , 2008, Proceedings of the National Academy of Sciences.

[21]  Andrew D. Engell,et al.  Understanding evaluation of faces on social dimensions , 2008, Trends in Cognitive Sciences.

[22]  A. Ahumada Perceptual Classification Images from Vernier Acuity Masked by Noise , 1996 .

[23]  C. Judd,et al.  Fundamental dimensions of social judgment: understanding the relations between judgments of competence and warmth. , 2005, Journal of personality and social psychology.

[24]  A. Todorov,et al.  EvaluaTiNg faCES ON TruSTwOrThiNESS afTEr miNimal TimE ExpOSurE , 2009 .

[25]  A. van Knippenberg,et al.  Biased allocation of faces to social categories. , 2011, Journal of personality and social psychology.

[26]  Amy J. C. Cuddy,et al.  Universal dimensions of social cognition: warmth and competence , 2007, Trends in Cognitive Sciences.

[27]  Alexander Todorov,et al.  Data-driven methods for modeling social perception , 2011 .

[28]  Philippe G Schyns,et al.  Accurate statistical tests for smooth classification images. , 2005, Journal of vision.

[29]  V. Yzerbyt,et al.  Not Competent but Warm... Really? Compensatory Stereotypes in the French-speaking World , 2005 .

[30]  Janine Willis,et al.  First Impressions , 2006, Psychological science.

[31]  Dario L. Ringach,et al.  Reverse correlation in neurophysiology , 2004, Cogn. Sci..