比利时vs摩洛哥足彩
,
university of california san diego
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math 278b - mathematics of information, data, and signals seminar:
piotr indyk
mit
learning-based sampling and streaming
abstract:
classical algorithms typically provide "one size fits all" performance, and do not leverage properties or patterns in their inputs. a recent line of work aims to address this issue by developing algorithms that use machine learning predictions to improve their performance. in this talk i will present two examples of this type, in the context of streaming and sampling algorithms. in particular, i will show how to use machine learning predictions to improve the performance of (a) low-memory streaming algorithms for frequency estimation (iclr’19), and (b) sampling algorithms for estimating the support size of a distribution (iclr’21). both algorithms use an ml-based predictor that, given a data item, estimates the number of times the item occurs in the input data set. \\ \\ the talk will cover material from papers co-authored with t eden, cy hsu, d katabi, s narayanan, r rubinfeld, s silwal, t wagner and a vakilian.
host: rayan saab
june 10, 2021
11:30 am
zoom link: https://msu.zoom.us/j/96421373881 (passcode: first prime number $>$ 100)
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