X

Vous n'êtes pas connecté

Maroc Maroc - EURASIAREVIEW.COM - A la une - 09/Nov 01:02

Beyond Deep Learning: Advancing Affective Computing With Diverse AI Methodologies

Affective computing, a field focused on understanding and emulating human emotions, has seen significant advancements thanks to deep learning. However, researchers at the Technical University of Munich caution that an over-reliance on deep learning may hinder progress by overlooking other emerging trends in artificial intelligence. Their review, published in Intelligent Computing, a Science Partner Journal, advocate using a variety of AI methodologies to tackle ongoing challenges in affective computing. Affective computing uses various signals, such as facial expressions, voice and language cues, alongside physiological signals and wearable sensors to analyze and synthesize affect. While deep learning has significantly improved tasks like emotion recognition through innovations in transfer learning, self-supervised learning and transformer architectures, it also presents challenges, including poor generalization, cultural adaptability issues and a lack of interpretability. To address these limitations, the authors outline a comprehensive framework for developing embodied agents capable of interacting with multiple users in many different contexts. A key to this vision is the assessment of users’ goals, mental states and interrelationships for the purpose of facilitating longer interactions. The authors recommend integrating the following nine components, which they describe in detail, to improve human-agent interactions: 1. Graphs that map user relationships and context. 2. Capsules that model hierarchies for understanding affective interactions. 3. Neurosymbolic Engines that facilitate reasoning about interactions using affective primitives. 4. Symbols that establish common knowledge and rules for interaction. 5. Embodiment that enables collaborative learning in constrained environments. 6. Personalization that tailors interactions to individual user characteristics. 7. Generative AI that creates responses across multiple modalities. 8. Causal models that differentiate causes and effects for higher-order reasoning. 9. Spiking neural networks that enhance deployment of deep neural networks in resource-limited settings. The authors also describe several next-generation neural networks, resurgent themes and new frontiers in affective computing. Next-generation neural networks are advancing beyond traditional deep learning models to address limitations in capturing complex data structures, spatial relationships and energy efficiency. Capsule networks enhance convolutional networks by preserving spatial hierarchies, improving the modeling of complex entities, such as human body parts, which is vital in healthcare and emotion recognition. Geometric deep learning extends deep learning to non-Euclidean structures, allowing for a better understanding of complex data interactions. It has been particularly useful in sentiment and facial analysis. Mimicking the threshold-based firing of biological neurons, spiking neural networks offer a more energy-efficient alternative for real-time applications, making them suitable for environments with limited resources. Traditional AI concepts, adapted to new contexts, can improve affective computing applications. Neurosymbolic systems show particular promise, combining the pattern recognition of deep learning with symbolic reasoning from traditional AI to improve the explainability and robustness of deep learning models. As these models enter real-world settings, they must conform to social norms, enhancing their ability to interpret emotions across cultures. Embodied cognition furthers this goal by situating AI agents in physical or simulated contexts, supporting natural interactions. Through reinforcement learning, embodied agents can achieve better situatedness and interactivity, which is especially beneficial in complex fields such as healthcare and education. In addition, three substantial ideas have emerged in affective computing in recent years: generative models, personalization, and causal reasoning. Advances in generative models, especially diffusion-based processes, enable AI to produce contextually relevant emotional expressions across various media, paving the way for interactive, embodied agents. Moving beyond one-size-fits-all models, personalization adapts responses based on user personalized characteristics while maintaining data privacy through federated learning. By incorporating causal reasoning, affective computing systems can not only associate but also intervene and counterfactualize in emotional contexts, enhancing their adaptability and transparency. The future of affective computing could hinge on combining innovation and a variety of AI methodologies. Moving beyond a deep learning-centric approach could pave the way for more sophisticated, culturally aware, and ethically designed systems. The integration of multiple approaches promises a future where technology not only understands but also enriches human emotions, marking a significant leap towards truly intelligent and empathetic AI.

Articles similaires

Sorry! Image not available at this time

Beyond deep learning: Advancing affective computing with diverse AI methodologies

techxplore.com - 08/Nov 18:31

Affective computing, a field focused on understanding and emulating human emotions, has seen significant advancements thanks to deep learning....

Exploring New Frontiers in Affective Computing

medindia.net - 10/Nov 14:14

Advancing affective computing by integrating diverse AI methods beyond deep learning to enhance emotional understanding and overcome current...

Huawei’s Ascend 910C: A Bold Challenge to NVIDIA in the AI Chip Market

unite.ai - 05/Nov 16:00

The Artificial Intelligence (AI) chip market has been growing rapidly, driven by increased demand for processors that can handle complex AI tasks. The...

Sorry! Image not available at this time

New tool recovers compromised deep-learning models so researchers can understand what went wrong

techxplore.com - 04/Nov 17:10

Imagine being a passenger in a self-driving car as the vehicle starts veering off the road. It's not a faulty sensor causing the dangerous...

Sorry! Image not available at this time

Neurotechnology Unveils Enhanced NCheck Multi-Biometric Attendance Management Solution

constructionlinks.ca - 04/Nov 11:00

NCheck leverages Neurotechnology’s proprietary facial, fingerprint and iris recognition technology to provide a secure, all-in-one employee and...

Sorry! Image not available at this time

Salesforce’s New Agentforce AI Agents Tackle Complex Tasks Independently

bizwatchkenya.com - 31/Oct 16:56

Salesforce , has announced the general availability of Agentforce, a new layer on the Salesforce Platform that enables companies to build and deploy...

Sorry! Image not available at this time

AI-powered system detects toxic gases with speed and precision

techxplore.com - 05/Nov 14:54

Researchers at the University of Virginia School of Engineering and Applied Science developed an AI-powered system that mimics the human sense of...

Sorry! Image not available at this time

How OpenAI’s New AI Agents Are Shaping the Future of Coding

itsecuritynews.info - 08/Nov 19:34

  OpenAI is taking the challenge of bringing into existence the very first powerful AI agents designed specifically to revolutionise the future of...

Sorry! Image not available at this time

Unique memristor design with analog switching shows promise for high-efficiency neuromorphic computing

techxplore.com - 07/Nov 11:30

The growing use of artificial intelligence (AI)-based models is placing greater demands on the electronics industry, as many of these models require...

Mave Raises $2 Million in Pre-seed Funding; Launches Beta Program for its AI Assistant for Real Estate Agents and Brokers

reitreport.ca - 29/Oct 03:01

Funding enables Mave to accelerate the development of its AI assistant which makes agents more effective and productive by handling their back-end...