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== Project Goal == == Project goal ==
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== Exemplary Results == ==== Basic structure ====

==== Code version ====
 1. CAGMon Etude Alpha
   * for the basic test and evaluation of the LASSO regression method in LIGO
 2. CAGMon Etude Beta
  * added coefficient trend plots with LASSO beta, coherence, MIC, PCC, and Kendall's tau
 3. CAGMon Etude Delta
  * fixed a critical problem that sucked enormous memory when it used the matplotlib module
 4. CAGmon Etude Eta
  * fixed memory issues
  * fixed minor bugs
  * added the range limitation of stride
 5. CAGmon Etude Flat (latest version)
  * added the script of HTML summary page
  * added coefficient distribution plots

== Exemplary results ==
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==== Presentation Materials ==== ==== Presentation materials ====

CAGMon etude

Descripstion

The CAGMon etude is a study version of CAGMon that evaluates the dependence between the primary and auxiliary channels.

Project goal

The goal of this project is to find a systematic way of identifying the abnormal glitches in the gravitational-wave data using various methods of correlation analysis. Usually, the community such as LIGO, Virgo, and KAGRA uses a conventional way of finding glitches in auxiliary channels of the detector - Klein-Welle, Omicron, Ordered Veto Lists, etc. However, some different ways can be possible to find and monitor them in a (quasi-) realtime. Also, the method can point out which channel is responsible for the found glitch. In this project, we study its possible to apply three different correlation methods - maximal information coefficient, Pearson's correlation coefficient, and Kendall's tau coefficient - in the gravitational wave data from the KAGRA detector.

Participants

  • John.J Oh (NIMS)
  • Young-Min Kim (UNIST)
  • Pil-Jong Jung (NIMS)

Methods and Frameworks

Maximal Information Coefficient (MIC)

\[ r=\frac{\sum_{i=1}{n} (x_i - \bar{x})(y_i-\bar{y})}{\sqrt{\sum_{i=1}{n} (x_i-\bar{x})2} \sqrt{\sum_{i=1}{n} (y_i -\bar{y})^2}} \]

Pearson's Correlation Coefficient (PCC)

Kendall's tau Coefficient

Code development

Basic structure

Code version

  1. CAGMon Etude Alpha
    • for the basic test and evaluation of the LASSO regression method in LIGO
  2. CAGMon Etude Beta
    • added coefficient trend plots with LASSO beta, coherence, MIC, PCC, and Kendall's tau
  3. CAGMon Etude Delta
    • fixed a critical problem that sucked enormous memory when it used the matplotlib module
  4. CAGmon Etude Eta
    • fixed memory issues
    • fixed minor bugs
    • added the range limitation of stride
  5. CAGmon Etude Flat (latest version)
    • added the script of HTML summary page
    • added coefficient distribution plots

Exemplary results

Beyond

References

Presentation materials

Papers

PJJung/CAGMonEtude (last edited 2021-07-28 08:43:57 by PJJung)