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Extrapolating continuous color emotions through deep learning

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arxiv 2009.04519 v1 pith:NNBXQ7EG submitted 2020-08-05 q-bio.QM cs.LGphysics.bio-ph

Extrapolating continuous color emotions through deep learning

classification q-bio.QM cs.LGphysics.bio-ph
keywords colorsemotionsassociationscolordeeplearningtypicallyassociate
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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By means of an experimental dataset, we use deep learning to implement an RGB extrapolation of emotions associated to color, and do a mathematical study of the results obtained through this neural network. In particular, we see that males typically associate a given emotion with darker colors while females with brighter colors. A similar trend was observed with older people and associations to lighter colors. Moreover, through our classification matrix, we identify which colors have weak associations to emotions and which colors are typically confused with other colors.

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