Improving AI confidence measurements for autonomous driving

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Highly reliable AI applications in self-driving cars

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New research from Bar-Ilan University addresses a fundamental question: Can deep learning architectures achieve significantly above-average confidence for a significant portion of their input while maintaining average overall confidence? By addressing this, we achieved a milestone in the field of artificial intelligence (AI).

The results of this study provide a clear “YES” to this question and represent significant advances in AI’s ability to identify and respond to different confidence levels in classification tasks. By leveraging deep architecture's trust level insights, the research team opens new avenues for real-world applications ranging from self-driving cars to medicine.

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Credit: Professor Ido Kanter, Bar-Ilan University

New research from Bar-Ilan University addresses a fundamental question: Can deep learning architectures achieve significantly above-average confidence for a significant portion of their input while maintaining average overall confidence? By addressing this, we achieved a milestone in the field of artificial intelligence (AI).

The results of this study provide a clear “YES” to this question and represent significant advances in AI’s ability to identify and respond to different confidence levels in classification tasks. By leveraging deep architecture's trust level insights, the research team opens new avenues for real-world applications ranging from self-driving cars to medicine.

This research today Physical A By a team of researchers led by Professor Ido Kanter of the Department of Physics at Bar-Ilan University and the Gonda (Goldschmied) Multidisciplinary Brain Research Center.

Undergraduate student and research contributor Ella Koresh highlights the practical implications of this research. “Understanding the trust level of AI systems allows us to develop applications that prioritize safety and reliability,” she explains. “For example, in the case of self-driving cars, if the reliability of road sign identification is very high, the system can make decisions autonomously. However, in scenarios where the reliability level is low, the system Encourage intervention and ensure careful and informed decision-making.

Increasing the level of trust in AI systems will have profound implications across a variety of domains, from AI-based writing and image classification to critical decision-making processes in healthcare and self-driving cars. This research sets new standards for AI performance and safety by enabling AI systems to make more nuanced and reliable decisions when faced with uncertainty.


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