Supplementary Material: Bayesian Affect Control Theory of Self
نویسندگان
چکیده
This note describes some additional information that complements the main BayesAct-S model described in [2] 1 Comparing Situational and Fundamental Self Sentiments In the paper we use the following function to measure inauthenticity: ia(s) = ln ( Pr(ss) Pr(sf ) ) (1) However, the original statement of the theory in [1] hypothesises that inauthenticity is a difference, from which we derived that ia = ss − sf 1 1− η (2) Where ia, ss and sf represent the accumulated inauthenticity, situational self-sentiment, and fundamental self sentiment at the current time. If we use this equation to compare Pr(ss) with Pr(sf ), we end up with a convolution that gives the distribution over inauthenticity: Pr(ia) = Pr(ss − sf 1 1− η ) = Pr(ss) ∗ Pr(−(1− η) sf ) (3) In this case, Pr(ia) is a probability distribution in a three dimensional space with dimensions that correspond to EPA, but the values represented are sentiment differences, not sentiments.
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Bayesian Affect Control Theory of Self
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