Yuri Maximov: Integration in extremely high dimensions
Data Fest Online 2020
Math Optimization Track
In this talk we discuss how to compute an integral (or find an expected value of a function) in a high dimensional space. To this end, we first discuss an importance sampling technique which stands for a Monte-Carlo type approximation to the integral by changing the probability measure. Secondly, we describe various importance sampling methods from the (convex and non-convex) optimization perspective, and explore the importance sampling extensions and limitations. Later on, we consider applications of the importance sampling to Beyesian statistics, stochastic optimization, and optimal control. At the end of the talk, I explain how the importance sampling helps to predict, detect, and mitigate energy system’s blackouts.
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4 days ago 00:04:50 1
Я ношу свое сердце / Молодежный Симфонический Оркестр