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Possible Solutions from the Cognitive Neuroscience of Emotion David Sander Geneva Emotion Research Group University of Geneva A role for CN in designing emotion-oriented systems? Levels of analyses in CN Problems, and CN directions Artificial emotions Recognition of facial expression What is CN? The emergence of a discipline Cognitive Neuroscience Institute (Dartmouth): 1982 Journal of Cognitive Neuroscience: 1988 Cognitive Neuroscience Society: 1993 Institute of Cognitive Neuroscience (London): 1996 « the task of cognitive neuroscience is to map the information-processing structure of the human mind and to discover how this computational organization is implemented in the physical organization of the brain » Tooby & Cosmides (2000) Levels of analyses in CN The perils of sitting on a one-legged stool (Kosslyn & Intrilligator, 1992) Only one paradigmatic leg a “stability peril” for the model Informationprocessing model B E H A V I O R Many Psychological models are “sitting” only on a behavioral account Levels of analyses in CN The perils of sitting on a one-legged stool (Kosslyn & Intrilligator, 1992) Only one paradigmatic leg a “stability peril” for the model Informationprocessing model B R A I N Many Neurobiological and some neuropsychological models are “sitting” only on a brain account Levels of analyses in CN The perils of sitting on a one-legged stool (Kosslyn & Intrilligator, 1992) Only one paradigmatic leg a “stability peril” for the model Informationprocessing model C O M P U T A T I O N Many Artificial Intelligence models are “sitting” only on a computational account The advantage of sitting on a three-legged stool Three paradigmatic legs more stability for the model Informationprocessing model C O M P U T A T I O N B E H A V I O R B R A I N Ideal CN models are “sitting” on behavioral, brain, and computational accounts Cognitive Neuroscience Triangle Behavior Computation Analyses Models Brain Neural Activity (Neurophysiology) Areas & Connections (Neuroanatomy) Problems, and CN directions: Problem 1 Emotion-oriented system, but... ...oriented towards which level? Behavioral An artificial behaviorally believable output response given a natural input, whatever the plausibility of the architecture Other (?) Computational (or representational) Neural Problem 1 Natural Processes versus Artificilal Efficiency Is it important to know how the human brain computes emotion in order to develop a “humaine” emotion-oriented system? Appraisal of a threat, Autonomic activity, Withdrawing, Expression, and Feeling of being afraid Behavioral plausible output: “humaine” Autonomic activity, emotion-oriented Withdrawing, system Expression of fear. Problem 1 Emotion-oriented system, but... ...oriented towards which level? Behavioral An artificial behaviorally believable output response given a natural input, whatever the plausibility of the architecture CN is useless Computational (or representational) An artificial system that is constrained by the functional architecture designed by CN results Problem 2 Selecting the functional architecture to be implemented in an artificial emotion system i. Dissociation of emotional processes ii. Implementation of emotional processes in the brain iii. Time course of emotional processes Problem 2: selecting the functional architecture Three main approaches: Basic Emotions Approach Dimensional Approach Systems-level Approach Problem 2: selecting the functional architecture CN and Basic Emotions Most of the past Cognitive Neuroscience researches on emotion focused on the attempt to find specific brain regions implementing discrete basic emotions: “The various classes of emotion are mediated by separate neural systems (...)” (LeDoux, 1996) Problem 2: selecting the functional architecture CN and Basic Emotions Öhman & Mineka (2001): «The amygdala is a fear module… Basica!y, the fear module is a device for activating defensive behaviour and associated psychophysiological responses and emotional feelings to threatening stimuli.» Panksepp (2003) 237-239 Problem 2: selecting the functional architecture CN and the Dimensional Approach Some recent Cognitive Neuroscience researches were interested in dissociating the dimensions of Valence and Intensity (Anderson et al., 2003; Small et al., 2003). (!! Intensity≠ Activation !!) Valence versus Intensity Anderson et al. (2003), Nature Neuroscience Problem 2: selecting the functional architecture CN at the systems-level Some CN researchers take into consideration the complexity of emotion by parsing its subcomponents at the systems-level and, sometimes, by attempting to model the interactions between the proposed processes: Action tendencies (e.g., Davidson) Somatic signals (e.g., Damasio) Feeling (e.g., Lane) Action tendencies (e.g., Davidson, 1995) Perception/Production distinction between perception of the emotional value of a stimulus versus the production of expressive behavior Anterior activation asymmetry model Left anterior region associated with approachrelated emotions Right anterior region associated with withdrawalrelated emotions Somatic signals (e.g., Damasio, 1998) A critical function of somaticrelated signals and their integration with the other brain signals. Feeling Feeling as an integration of some emotional signals The conscious experience is integrated via a convergence zone that could be the Anterior Cingulate and/or the Medial Prefrontal Cortex (Reiman. 1997; Lane, 2000). The subjective feeling is integrated via the synchronization of other components (Scherer, 2003). Binding through synchronization was proposed for the visual system for example. Appraisal Theory Relevant (e.g., unpleasant, goal obstructive), Difficult to cope with Event Appraisal Processes Emotional Expression Autonomic activation Action Tendencies “Withdrawal” Subjective Feeling “I am a$aid” Cognitive Neuroscience of Appraisal Processes High level exteroceptive processing Sensory cortices Sensory Thalamus Coarse exteroceptive processing Integrative cortices Intrinsic pleasantness Motivational bases (reward) Relevance detection Sander & Scherer, in prep. Goal representation Hippo OFC Ventral Striatum Amy Normative Significance DLPFC Con d e p text end enc e Event Implication Action tendency MPFC ACC Regulation, coping Somatosensoryrelated cortical Somatic maps and subcortical structures Emotional expression Neuroendocrine/Autonomic/Somatic NS Body state Problem 3 Recognition of facial expression (from Haxby et al., 2000) Colliculus-pulvinar-amygdala Pathway Visual Cortex LGB: Lateral Geniculate Body V1 SC: Superior Colliculus V1: Primary Visual Cortex Pulvinar Amygdala SC LGB Retina Recognition of a facial expression of fear Stimulus 120 ms: Fast early processing of highly relevant events A, amygdala; FFA, fusiform face area; INS, insula; O, orbitofrontalcortex; SC, superior colliculus; SCx, striate cortex; SS, somatosensorycortex; STG, superior temporal gyrus; T, thalamus. From Adolphs (2002). Current Opinion in Neurobiology 170 ms: - detailed perception; - emotional reaction involving the body > 300ms: Conceptual knowledge of the emotion signaled by the face Emotion-oriented system, but... ...oriented towards which level? Behavioral An artificial behaviorally believable output response given a natural input, whatever the plausibility of the architecture CN is useless Computational (or representational) Neural An artificial system that is constrained by the An artificial system that functional architecture is constrained by the designed by CN results functional architecture and natural neural networks properties CN can help CN can help Problem 4 Multimodal integration Timing: Results suggest that audio-visual emotional binding is early in time (110 ms post-stimulus) Integrative structure Amygdala response to congruent fearful voices and faces Dolan et al. (2001) ->Test of multimodal emotion display in ECA using brain-imaging Problem 5 Influence of dynamism in the facial expression on perceived emotion Emotion morphs depicted expression changes of ‘getting scared’ or ‘getting angry’ in real-time. Brain regions implicated in processing facial affect, including the amygdala and fusiform gyrus, showed greater responses to dynamic versus static emotional expressions. Labar et al. (2003) Conclusion Cognitive Neuroscience can help to find solutions for emotionoriented systems mainly if they are focused on the computational, and/or the neural levels. Artificial emotions: A decisive choice between: as many systems as emotions different systems for approach-related versus withdrawalrelated emotions a system for intensity, a system for valence (but, only feeling) a system for each emotional component Recognition of emotional expression: Modeling two pathways (one for coarse and fast processing, and one for detailed proc.). A computational model of emotional processes would benefit from modeling other closely related cognitive processes, such as attention.