2024 ASEE Annual Conference & Exposition

Emotionally Intelligent Machines in Education: Harnessing Generative AI for Authentic Human-Machine Synergy in the Classroom

Presented at Multidisciplinary Engineering Division (MULTI) Technical Session 10

This paper delves into the realm of Generative AI focused on Artificial Emotional Intelligence
(AEI) to enhance cooperative and genuine human-machine interplay. It underscores the imperative of assimilating AEI in diverse sectors including education and usage of it in classrooms.

With the surge of interest in Generative AI, the quest to equip machines with emotional comprehension has accelerated, aiming for machines that can seamlessly interact with humans. Contemporary AI, while advanced, falls short in grasping emotions and discerning social cues, limiting their aptitude for genuine human connection. These social cues encompass verbal and non-verbal gestures, such as facial nuances, voice modulations, and body language, employed by humans to transmit emotions and thoughts.

Deploying AEI machines that can adeptly maneuver the intricacies of human sentiments presents many challenges. One is the development of machine learning models proficient in detecting and decoding human emotions with precision. Emotions, by nature, are intricate and heavily contextual. Machines need to ascertain these sentiments analogous to human processing, incorporating contextual, verbal, and non-verbal cues. Moreover, the task of designing natural language algorithms for exact sentiment analysis is large. Sentiment interpretation is intricate due to the inherent vagueness of language and its reliance on varied contexts, from situational to cultural nuances. Despite the challenges, lies the promising prospect of revolutionizing human-machine engagement. Machines adept in emotional recognition can pave the way for more organic and fulfilling human-AI interactions.

This preliminary exploration sheds light on the technical adversities and potential in AEI development, while weighing its repercussions on human-machine dynamics. It sets the stage for future AEI research, emphasizing the significance of interdisciplinary studies to bring in a truly human-centric and accountable AI paradigm. The research question at hand is: Can Generative AI, enriched by cross-disciplinary insights, take an intuitive leap to discern human emotions, driving us towards a more empathetic and ethical AI future?

Authors
  1. Nicu Ahmadi Texas A&M University [biography]
Download paper (1.72 MB)

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