Synthetic Emotions for Empathic Building
Abstract
:1. Introduction
2. Theoretical Background
2.1. Thayer’s Emotion Model
2.2. Emotional-Based AI Systems
3. Fuzzy Grey Cognitive Maps
3.1. Fundamentals
- If the stability is reached, the FGCM inference process stop. It achieves a steady pattern of nodes’ states, the so-called grey fixed-point attractor, or grey hidden pattern. This steady grey vector state shows the impact of the initial grey vector state on the final state of each FGCM grey node.
- In addition, the grey vector state could keep cycling between some fixed states. This situation is known as the limit grey cycle.
- A third possible state with a continuous activation function would be a grey chaotic attractor. It is when, instead of a steady-state, the FGCMs keep generating different grey vector states for each iteration.
3.2. FGCM Advantages over FCM
4. Proposal
Methodology
5. Experiments and Discussion
5.1. Experiment 1
5.2. Experiment 2
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Node () | Label | Description |
---|---|---|
Arousal | State of being awake or reactive to stimuli | |
Valence | The intrinsic attractiveness (positive valence) or aversiveness (negative valence) of an emotion | |
Reward/Punishment | Reward is related with the queue’s purpose | |
Stress | A person’s response to a stressor such as noise or uncomfortable temperature | |
Waiting expectations | Waiting time | |
Noise | Environmental noise | |
Uncomfortable | Temperature higher or lower than comfortable | |
Scarce service time | Waiting time for each person | |
Few queue length | People in the queue |
Steady State | Greyness | ||||||
---|---|---|---|---|---|---|---|
Slope | c1 | c2 | Emotion | c1 | c2 | ||
F | tanh | 1 | [0.0, ] | [, 0.0] | neutral | ||
F | tanh | 3 | [0.0, ] | [, 0.0] | neutral | ||
F | tanh | 5 | [0.0, 0.1360] | [−0.0819, −0.0] | ligth nervous | ||
T | tanh | 1 | [0.0380, 0.1766] | [0.1308, 0.4200] | ligth pleased | ||
T | tanh | 3 | [0.3275, 0.9073] | [0.8188, 0.9958] | med-strong happy | ||
T | tanh | 5 | [0.7331, 0.9990] | [0.9953, 0.9999] | strongly happy |
Steady State | Greyness | ||||||
---|---|---|---|---|---|---|---|
Slope | c1 | c2 | Emotion | c1 | c2 | ||
F | tanh | 1.0 | [, 0.0] | [0.0, ] | neutral | ||
F | tanh | 3.0 | [, 0.0] | [0.0, ] | neutral | ||
F | tanh | 5.0 | [−0.1360, 0.0] | [0.0, 0.0820] | almost neutral | ||
T | tanh | 1.0 | [−0.4135, −0.1936] | [0.1794, 0.6163] | medium peaceful | ||
T | tanh | 3.0 | [−0.9966, −0.9274] | [0.8990, 0.9999] | strongly peaceful | ||
T | tanh | 5.0 | [−1.0, −0.9993] | [0.9978, 1.0] | strongly peaceful |
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Salmeron, J.L.; Ruiz-Celma, A. Synthetic Emotions for Empathic Building. Mathematics 2021, 9, 701. https://doi.org/10.3390/math9070701
Salmeron JL, Ruiz-Celma A. Synthetic Emotions for Empathic Building. Mathematics. 2021; 9(7):701. https://doi.org/10.3390/math9070701
Chicago/Turabian StyleSalmeron, Jose L., and Antonio Ruiz-Celma. 2021. "Synthetic Emotions for Empathic Building" Mathematics 9, no. 7: 701. https://doi.org/10.3390/math9070701
APA StyleSalmeron, J. L., & Ruiz-Celma, A. (2021). Synthetic Emotions for Empathic Building. Mathematics, 9(7), 701. https://doi.org/10.3390/math9070701