LGAIITNCMLNov 22, 2023

Learning principle and mathematical realization of the learning mechanism in the brain

arXiv:2311.13341v1h-index: 3
Originality Highly original
AI Analysis

This work addresses foundational problems in deep learning and cognitive neuroscience by providing a unified mathematical understanding of learning mechanisms.

The authors tackled the lack of a clear explanation for why deep learning works by constructing a mathematical framework called the learning principle, which unifies all types of learning as estimating input data probability, and they applied it to improve supervised learning and enable unsupervised learning without prior knowledge.

While deep learning has achieved remarkable success, there is no clear explanation about why it works so well. In order to discuss this question quantitatively, we need a mathematical framework that explains what learning is in the first place. After several considerations, we succeeded in constructing a mathematical framework that can provide a unified understanding of all types of learning, including deep learning and learning in the brain. We call it learning principle, and it follows that all learning is equivalent to estimating the probability of input data. We not only derived this principle, but also mentioned its application to actual machine learning models. For example, we found that conventional supervised learning is equivalent to estimating conditional probabilities, and succeeded in making supervised learning more effective and generalized. We also proposed a new method of defining the values of estimated probability using differentiation, and showed that unsupervised learning can be performed on arbitrary dataset without any prior knowledge. Namely, this method is a general-purpose machine learning in the true sense. Moreover, we succeeded in describing the learning mechanism in the brain by considering the time evolution of a fully or partially connected model and applying this new method. The learning principle provides solutions to many unsolved problems in deep learning and cognitive neuroscience.

Foundations

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