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Towards Parallel Selective Attention Using Psychophysiological States as the Basis for Functional Cognition.

Asma KanwalSagheer AbbasTaher M GhazalAllah DittaHani AlquhayzMuhammad Adnan Khan
Published in: Sensors (Basel, Switzerland) (2022)
Attention is a complex cognitive process with innate resource management and information selection capabilities for maintaining a certain level of functional awareness in socio-cognitive service agents. The human-machine society depends on creating illusionary believable behaviors. These behaviors include processing sensory information based on contextual adaptation and focusing on specific aspects. The cognitive processes based on selective attention help the agent to efficiently utilize its computational resources by scheduling its intellectual tasks, which are not limited to decision-making, goal planning, action selection, and execution of actions. This study reports ongoing work on developing a cognitive architectural framework, a Nature-inspired Humanoid Cognitive Computing Platform for Self-aware and Conscious Agents (NiHA). The NiHA comprises cognitive theories, frameworks, and applications within machine consciousness (MC) and artificial general intelligence (AGI). The paper is focused on top-down and bottom-up attention mechanisms for service agents as a step towards machine consciousness. This study evaluates the behavioral impact of psychophysical states on attention. The proposed agent attains almost 90% accuracy in attention generation. In social interaction, contextual-based working is important, and the agent attains 89% accuracy in its attention by adding and checking the effect of psychophysical states on parallel selective attention. The addition of the emotions to attention process produced more contextual-based responses.
Keyphrases
  • working memory
  • healthcare
  • mental health
  • decision making
  • endothelial cells
  • emergency department
  • deep learning
  • mild cognitive impairment
  • multiple sclerosis
  • machine learning
  • electronic health record