0000000000984614

AUTHOR

Giovanni Pezzulo

showing 15 related works from this author

Human Sensorimotor Communication: A Theory of Signaling in Online Social Interactions

2013

Although the importance of communication is recognized in several disciplines, it is rarely studied in the context of online social interactions and joint actions. During online joint actions, language and gesture are often insufficient and humans typically use non-verbal, sensorimotor forms of communication to send coordination signals. For example, when playing volleyball, an athlete can exaggerate her movements to signal her intentions to her teammates (say, a pass to the right) or to feint an adversary. Similarly, a person who is transporting a table together with a co-actor can push the table in a certain direction to signal where and when he intends to place it. Other examples of ``si…

media_common.quotation_subjectComputational models of cognition imitation interaction signaling joint actionlcsh:MedicineContext (language use)Motor Activity050105 experimental psychology03 medical and health sciencesNonverbal communication0302 clinical medicineHumansInterpersonal Relations0501 psychology and cognitive sciencesChemistry (relationship)lcsh:Sciencemedia_commonCognitive sciencePhysicsInternetMultidisciplinaryTheoryCommunicationlcsh:R05 social sciencesSomatosensory CortexModels TheoreticalBiomechanical PhenomenaAction (philosophy)Communicative actionlcsh:QImitation030217 neurology & neurosurgeryResearch ArticleGesturePLoS ONE
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Action simulation in the human brain: Twelve questions

2013

Although the idea of action simulation is nowadays popular in cognitive science, neuroscience and robotics, many aspects of the simulative processes remain unclear from empirical, computational, and neural perspectives. In the first part of the article, we provide a critical review and assessment of action simulation theories advanced so far in the wider literature of embodied and motor cognition. We focus our analysis on twelve key questions, and discuss them in the context of human and (occasionally) primate studies. In the second part of the article, we describe an integrative neuro-computational account of action simulation, which links the neural substrate (as revealed in neuroimaging …

forward modelNeural substrateInternal modelContext (language use)050105 experimental psychology03 medical and health sciences0302 clinical medicineMotor cognitionaction understandingmotor control0501 psychology and cognitive sciencesaction simulationGeneral PsychologyCognitive scienceMirror neuron system intentiona understanding human-robot interactioninternal modelbusiness.industry05 social sciencesMotor controlRoboticsinternal model; motor control; action simulation; action understanding; forward modelAction (philosophy)Embodied cognitionPsychology (miscellaneous)Artificial intelligencePsychologybusiness030217 neurology & neurosurgeryNew Ideas in Psychology
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Bounded Seed-AGI

2014

Four principal features of autonomous control systems are left both unaddressed and unaddressable by present-day engineering methodologies: (1) The ability to operate effectively in environments that are only partially known at design time; (2) A level of generality that allows a system to re-assess and re-define the fulfillment of its mission in light of unexpected constraints or other unforeseen changes in the environment; (3) The ability to operate effectively in environments of significant complexity; and (4) The ability to degrade gracefully—how it can continue striving to achieve its main goals when resources become scarce, or in light of other expected or unexpected constraining fact…

GeneralityWork (electrical)Computer scienceArtificial general intelligenceBlueprintbusiness.industryBounded functionPrincipal (computer security)Control (management)Dynamic priority schedulingSoftware engineeringbusinessSelf programming AGI
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What should I do next? Using shared representations to solve interaction problems

2011

Studies on how “the social mind” works reveal that cognitive agents engaged in joint actions actively estimate and influence another’s cognitive variables and form shared representations with them. (How) do shared representations enhance coordination? In this paper, we provide a probabilistic model of joint action that emphasizes how shared representations help solving interaction problems. We focus on two aspects of the model. First, we discuss how shared representations permit to coordinate at the level of cognitive variables (beliefs, intentions, and actions) and determine a coherent unfolding of action execution and predictive processes in the brains of two agents. Second, we discuss th…

Computer sciencejoint actionModels PsychologicalBayesian inference050105 experimental psychology03 medical and health sciencesUser-Computer Interface0302 clinical medicineCognitionJoint action Graphical models Human-Robot Interaction Shared representationsHumans0501 psychology and cognitive sciencesInterpersonal RelationsCooperative BehaviorProblem SolvingConstellationCognitive scienceSettore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniFocus (computing)Communicationbusiness.industryGeneral Neuroscience05 social sciencesStatistical modelCognitionpredictionTower (mathematics)Joint actionAction (philosophy)businesssignaling030217 neurology & neurosurgery
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Intentional strategies that make co-actors more predictable: The case of signaling

2013

AbstractPickering & Garrod (P&G) explain dialogue dynamics in terms of forward modeling and prediction-by-simulation mechanisms. Their theory dissolves a strict segregation between production and comprehension processes, and it links dialogue to action-based theories of joint action. We propose that the theory can also incorporate intentional strategies that increase communicative success: for example, signaling strategies that help remaining predictable and forming common ground.

Cognitive scienceComprehensionJoint actionBehavioral NeuroscienceNeuropsychology and Physiological PsychologyAction (philosophy)PhysiologyComputer scienceDynamics (music)Computational Models of Cognition Behavioral Sciences NeuroscienceProduction (economics)Common ground
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The intentional stance as structure learning: a computational perspective on mindreading

2015

Recent theories of mindreading explain the recognition of action, intention, and belief of other agents in terms of generative architectures that model the causal relations between observables (e.g., observed movements) and their hidden causes (e.g., action goals and beliefs). Two kinds of probabilistic generative schemes have been proposed in cognitive science and robotics that link to a "theory theory" and "simulation theory" of mindreading, respectively. The former compares perceived actions to optimal plans derived from rationality principles and conceptual theories of others' minds. The latter reuses one's own internal (inverse and forward) models for action execution to perform a look…

General Computer ScienceRationalityIntentionModels PsychologicalRecognition (Psychology)050105 experimental psychologyStructure learning03 medical and health sciences0302 clinical medicineMindreadingTheory-theoryHumansLearning0501 psychology and cognitive sciencesComputer SimulationCausal modelCognitive scienceSettore ING-INF/05 - Sistemi Di Elaborazione Delle Informazionibusiness.industry05 social sciencesComputer Science (all)Recognition PsychologySimulated realityAlgorithmIntentional stanceGenerative modelOnline learningFolk psychologyArtificial intelligencebusinessPsychology030217 neurology & neurosurgeryGenerative grammarAlgorithmsGenerative modelIntentional stanceHumanBiotechnology
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Avoiding accidents at the champagne reception: A study of joint lifting and balancing

2017

Using a lifting and balancing task, we contrasted two alternative views of planning joint actions: one postulating that joint action involves distinct predictions for self and other, the other postulating that joint action involves coordinated plans between the coactors and reuse of bimanual models. We compared compensatory movements required to keep a tray balanced when 2 participants lifted glasses from each other’s trays at the same time (simultaneous joint action) and when they took turns lifting (sequential joint action). Compared with sequential joint action, simultaneous joint action made it easier to keep the tray balanced. Thus, in keeping with the view that bimanual models are reu…

Action predictionAdultPsychology (all)joint actionaction synchronicityMotor Activity050105 experimental psychologyTask (project management)03 medical and health sciencesYoung Adult0302 clinical medicineHuman–computer interaction0501 psychology and cognitive sciencesaction predictionCooperative BehaviorGeneral PsychologySettore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniCommunicationbusiness.industry05 social sciencespredictionbalancingJoint actionAction (philosophy)Action planJoint (building)businessPsychology030217 neurology & neurosurgeryPsychomotor PerformanceHuman
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Sensorimotor Coarticulation in the Execution and Recognition of Intentional Actions

2017

Humans excel at recognizing (or inferring) another's distal intentions, and recent experiments suggest that this may be possible using only subtle kinematic cues elicited during early phases of movement. Still, the cognitive and computational mechanisms underlying the recognition of intentional (sequential) actions are incompletely known and it is unclear whether kinematic cues alone are sufficient for this task, or if it instead requires additional mechanisms (e.g., prior information) that may be more difficult to fully characterize in empirical studies. Here we present a computationally-guided analysis of the execution and recognition of intentional actions that is rooted in theories of m…

Psychology (all)joint actionKinematicsDistal action050105 experimental psychologydistal actions03 medical and health sciences0302 clinical medicineEmpirical researchPsychology0501 psychology and cognitive sciencescoarticulationCoarticulationGeneral PsychologyOriginal ResearchSettore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniCognitive scienceaction recognitionsequential actionbusiness.industry05 social sciencesSocial benefitsMotor controlCognitionObserver (special relativity)Action recognitionArtificial intelligenceplanningPsychologybusiness030217 neurology & neurosurgeryFrontiers in Psychology
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You cannot speak and listen at the same time: a probabilistic model of turn-taking.

2017

Turn-taking is a preverbal skill whose mastering constitutes an important precondition for many social interactions and joint actions. However, the cognitive mechanisms supporting turn-taking abilities are still poorly understood. Here, we propose a computational analysis of turn-taking in terms of two general mechanisms supporting joint actions: action prediction (e.g., recognizing the interlocutor's message and predicting the end of turn) and signaling (e.g., modifying one's own speech to make it more predictable and discriminable). We test the hypothesis that in a simulated conversational scenario dyads using these two mechanisms can recognize the utterances of their co-actors faster, wh…

EngineeringGeneral Computer ScienceInterpersonal RelationComplex systemTurn-taking050105 experimental psychology[INFO.INFO-CL]Computer Science [cs]/Computation and Language [cs.CL]Precondition[INFO.INFO-AI]Computer Science [cs]/Artificial Intelligence [cs.AI]03 medical and health sciences[SCCO]Cognitive science0302 clinical medicineHearingProduction (economics)HumansSpeech0501 psychology and cognitive sciences[INFO]Computer Science [cs]Interpersonal RelationsDialogueComputingMilieux_MISCELLANEOUSCognitive scienceSettore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniModels Statisticalbusiness.industry[SCCO.NEUR]Cognitive science/Neuroscience05 social sciencesComputer Science (all)Statistical modelCognitionTurn-takingJoint actionSignalingAction (philosophy)Dynamics (music)[SCCO.PSYC]Cognitive science/PsychologyArtificial intelligencebusiness030217 neurology & neurosurgeryHumanBiotechnologyAction predictionBiological cybernetics
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The role of synergies within generative models of action execution and recognition: A computational perspective

2015

Controlling the body – given its huge number of degrees of freedom – poses severe computational challenges. Mounting evidence suggests that the brain alleviates this problem by exploiting “synergies”, or patterns of muscle activities (and/or movement dynamics and kinematics) that can be combined to control action, rather than controlling individual muscles of joints [1–10]. D’Ausilio et al. [11] explain how this view of motor organization based on synergies can profoundly change the way we interpret studies of action recognition in humans and monkeys, and in particular the controversy on the “granularity” of the mirror neuron system (MNs): whether it encodes either (lower) kinematic aspects…

Computer sciencebusiness.industryDegrees of freedomProbabilistic logicGeneral Physics and AstronomyInferenceMotor control[SCCO.COMP]Cognitive science/Computer scienceRoboticsGenerative model[SCCO]Cognitive scienceAction (philosophy)Artificial Intelligence[SCCO.PSYC]Cognitive science/PsychologyArtificial intelligenceGeneral Agricultural and Biological SciencesbusinessMirror neuronComputingMilieux_MISCELLANEOUS
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Simulation and anticipation as tools for coordinating with the future

2013

A key goal in designing an artificial intelligence capable of performing complex tasks is a mechanism that allows it to efficiently choose appropriate and relevant actions in a variety of situations and contexts. Nowhere is this more obvious than in the case of building a general intelligence, where the contextual choice and application of actions must be done in the presence of large numbers of alternatives, both subtly and obviously distinct from each other. We present a framework for action selection based on the concurrent activity of multiple forward and inverse models. A key characteristic of the proposed system is the use of simulation to choose an action: the system continuously sim…

Settore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniMechanism (biology)Computer sciencebusiness.industryAction selectionOutcome (game theory)AnticipationVariety (cybernetics)Domain (software engineering)Action SelectionAction (philosophy)Anticipation (artificial intelligence)Key (cryptography)Artificial intelligencebusinessMachine learning techniquesSimulation
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The future of sensorimotor communication research

2019

Joint actionCognitive scienceArtificial IntelligenceGeneral Physics and AstronomyKinematicsGeneral Agricultural and Biological SciencesPsychologySocial relationPhysics of Life Reviews
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Autonomous acquisition of natural language

2014

An important part of human intelligence is the ability to use language. Humans learn how to use language in a society of language users, which is probably the most effective way to learn a language from the ground up. Principles that might allow an artificial agents to learn language this way are not known at present. Here we present a framework which begins to address this challenge. Our auto-catalytic, endogenous, reflective architecture (AERA) supports the creation of agents that can learn natural language by observation. We present results from two experiments where our S1 agent learns human communication by observing two humans interacting in a realtime mock television interview, using…

Natural languageCommunicationComputer Science (all)Robótica e Informática IndustrialKnowledge acquisitionAutonomy
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Motor simulation via coupled internal models using sequential Monte Carlo

2011

We describe a generative Bayesian model for action understanding in which inverse-forward internal model pairs are considered 'hypotheses' of plausible action goals that are explored in parallel via an approximate inference mechanism based on sequential Monte Carlo methods. The reenactment of internal model pairs can be considered a form of motor simulation, which supports both perceptual prediction and action understanding at the goal level. However, this procedure is generally considered to be computationally inefficient. We present a model that dynamically reallocates computational resources to more accurate internal models depending on both the available prior information and the predic…

Settore ING-INF/05 - Sistemi Di Elaborazione Delle InformazionipredictionMotor Simulation Mirror Neuron System Prediction Roboticssimulation
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The role of synergies within generative models of action execution and recognition: A computational perspective. Comment on "Grasping synergies: A mo…

2015

Controlling the body – given its huge number of degrees of freedom – poses severe computational challenges. Mounting evidence suggests that the brain alleviates this problem by exploiting “synergies”, or patterns of muscle activities (and/or movement dynamics and kinematics) that can be combined to control action, rather than controlling individual muscles of joints [1–10]. D’Ausilio et al. [11] explain how this view of motor organization based on synergies can profoundly change the way we interpret studies of action recognition in humans and monkeys, and in particular the controversy on the “granularity” of the mirror neuron system (MNs): whether it encodes either (lower) kinematic aspects…

Settore ING-INF/05 - Sistemi Di Elaborazione Delle InformazionisynergiesMirror NeuronHand Strengthgenerative modelsAnimalArtificial IntelligenceMotor ActivityHuman
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