Word associations contribute to machine learning in automatic scoring of degree of emotional tones in dream reports |
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Authors: | Amini Reza Sabourin Catherine De Koninck Joseph |
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Affiliation: | School of Psychology, University of Ottawa, Ottawa, Ontario, Canada K1N 6N5 |
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Abstract: | Scientific study of dreams requires the most objective methods to reliably analyze dream content. In this context, artificial intelligence should prove useful for an automatic and non subjective scoring technique. Past research has utilized word search and emotional affiliation methods, to model and automatically match human judges’ scoring of dream report’s negative emotional tone. The current study added word associations to improve the model’s accuracy. Word associations were established using words’ frequency of co-occurrence with their defining words as found in a dictionary and an encyclopedia. It was hypothesized that this addition would facilitate the machine learning model and improve its predictability beyond those of previous models. With a sample of 458 dreams, this model demonstrated an improvement in accuracy from 59% to 63% (kappa = .485) on the negative emotional tone scale, and for the first time reached an accuracy of 77% (kappa = .520) on the positive scale. |
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Keywords: | Dream content Dream emotions Emotional tone Artificial intelligence Automatic analysis Cognition Word association Emotion progression |
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