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Composable Sketches for Functions of Frequencies: Beyond the Worst Case

  • Edith Cohen
  • , Ofir Geri
  • , Rasmus Pagh
  • Google
  • Stanford University

Publikation: Konference artikel i Proceeding eller bog/rapport kapitelKonferencebidrag i proceedingsForskningpeer review

Abstract

Recently there has been increased interest in using machine learning techniques to improve classical algorithms. In this paper we study when it is possible to construct compact, composable sketches for weighted sampling and statistics estimation according to functions of data frequencies. Such structures are now central components of large-scale data analytics and machine learning pipelines. However, many common functions, such as thresholds and p th frequency moments with p>2 , are known to require polynomial size sketches in the worst case. We explore performance beyond the worst case under two different types of assumptions. The first is having access to noisy advice on item frequencies. This continues the line of work of Hsu et al. (ICLR 2019), who assume predictions are provided by a machine learning model. The second is providing guaranteed performance on a restricted class of input frequency distributions that are better aligned with what is observed in practice. This extends the work on heavy hitters under Zipfian distributions in a seminal paper of Charikar et al. (ICALP 2002). Surprisingly, we show analytically and empirically that "in practice" small polylogarithmic-size sketches provide accuracy for "hard" functions.
OriginalsprogEngelsk
TitelProceedings of the 37 th International Conference on Machine Learning
ForlagML Research Press
Publikationsdato2020
StatusUdgivet - 2020
BegivenhedInternational Conference on Machine Learning - VIRTUAL
Varighed: 13 jul. 202018 jul. 2020
Konferencens nummer: 37

Konference

KonferenceInternational Conference on Machine Learning
Nummer37
ByVIRTUAL
Periode13/07/202018/07/2020

Emneord

  • machine learning
  • classical algorithms
  • weighted sampling
  • statistics estimation
  • data frequencies
  • compact sketches
  • large-scale data analytics
  • polylogarithmic-size sketches
  • noisy advice
  • Zipfian distributions

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