General stochastic separation theorems with optimal bounds
Bogdan Grechuk, Alexander N. Gorban, Ivan Y. Tyukin

TL;DR
This paper establishes optimal bounds for stochastic separability in high-dimensional data, providing theoretical tools to improve AI robustness, correct errors, and analyze neural memory phenomena.
Contribution
It derives general stochastic separation theorems with optimal probability estimates for broad classes of distributions, relaxing standard assumptions.
Findings
Optimal probability bounds for Fisher separability in high dimensions
Applicability to error correction and vulnerability analysis in AI
Insights into neural memory and sparse coding phenomena
Abstract
Phenomenon of stochastic separability was revealed and used in machine learning to correct errors of Artificial Intelligence (AI) systems and analyze AI instabilities. In high-dimensional datasets under broad assumptions each point can be separated from the rest of the set by simple and robust Fisher's discriminant (is Fisher separable). Errors or clusters of errors can be separated from the rest of the data. The ability to correct an AI system also opens up the possibility of an attack on it, and the high dimensionality induces vulnerabilities caused by the same stochastic separability that holds the keys to understanding the fundamentals of robustness and adaptivity in high-dimensional data-driven AI. To manage errors and analyze vulnerabilities, the stochastic separation theorems should evaluate the probability that the dataset will be Fisher separable in given dimensionality and for…
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