Best of both worlds: integrating principled matched-filtering searches with AI/ML tools

ORAL

Abstract

In the infinite data and compute limit, machine learning (ML) methods can be optimal, however this idealistic situation is scarcely realized in practice. On the other hand, principled data-analysis methods are robust, but they make simplistic assumptions (e.g., the noise is roughly Gaussian). I will present how ML algorithms can enhance matched-filtering pipelines by: (i) generating optimal template banks (ii) weighting templates to downplay unphysical binary configurations (iii) mitigating non-Gaussian noise. Incorporating these advancements in the IAS search pipeline, I will present new detections of black holes in the astrophysically significant pair-instability mass gap and IMBH mass ranges.

Publication: arXiv:2312.06631

Presenters

  • Digvijay S Wadekar

    • Johns Hopkins University

Authors

  • Digvijay S Wadekar

    • Johns Hopkins University
  • Matias Zaldarriaga

    • Institute for Advanced Study
  • Tejaswi Venumadhav

    • University of California, Santa Barbara
  • Javier Roulet

    • Caltech
  • Mark Ho-Yeuk Cheung

    • Johns Hopkins University
  • Ajit Mehta

    • UC Santa Barbara
  • Barak Zackay

    • Weizmann Institute of Science
  • Jonathan Mushkin

    • Weizmann Institute of Science
    • Weizmann institute of science
  • Emanuele Berti

    • Johns Hopkins University