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Deconvolution and Inference Using Maximum Entropy. Tiffany Summerscales Penn State University. Motivation: Supernova Astronomy with Gravitational Waves. Problem 1: How do we recover a burst waveform?
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Deconvolution and Inference Using Maximum Entropy Tiffany Summerscales Penn State University Stats for GW Data Analysis
Motivation: Supernova Astronomy with Gravitational Waves • Problem 1: How do we recover a burst waveform? • Problem 2: When our models are incomplete, how do we associate the waveform with source physics? • Example - The physics involved in core-collapse supernovae remains largely uncertain • Progenitor structure and rotation, equation of state • Simulations generally do not incorporate all known physics • General relativity, neutrinos, convective motion, non-axisymmetric motion Stats for GW Data Analysis
Maximum Entropy • Problem 1: How do we recover the waveform? (deconvolution) • The detection process modifies the signal from its initial form hi • Detector response R includes projection onto the beam pattern as well as unequal response to various frequencies • Possible solution: maximum entropy – Bayesian approach to deconvolution used in radio astronomy, medical imaging, etc. • Want to maximize where I is any additional information such as noise levels, detector responses, etc Stats for GW Data Analysis
Maximum Entropy Cont. • The likelihood, assuming Gaussian noise is • Maximizing only the likelihood will cause fitting of noise • Set the prior • S related to Shannon Information Entropy • Entropy is a unique measure of uncertainty associated with a set of propositions • Entropy related to the log of the number of ways quanta of energy can be distributed in time to form the waveform • Maximizing entropy - being non-committal as possible about the signal within the constraints of what is known • Model m is the scale that relates entropy variations to signal amplitude • Maximizing equivalent to minimizing Stats for GW Data Analysis
Maximum Entropy Cont. • Minimize • is a Lagrange parameter that balances being faithful to the signal (minimizing 2) and avoiding overfitting (maximizing entropy) • associated with constraint which can be formally established. In summary: half the data contain information about the signal. • Example: Stats for GW Data Analysis
Maximum Entropy Performance, Weaker Signal • Weak feature recovery is possible • Maximum entropy an answer to deconvolution problem Stats for GW Data Analysis
Cross Correlation • Problem 2: When our models are incomplete, how do we associate the waveform with source physics? • Cross Correlation - select the model associated with the waveform having the greatest cross correlation with the recovered signal • Gives a qualitative indication of the source physics Stats for GW Data Analysis
Simulated Detection • Select Ott et al. waveform • 2D core-collapse simulations restricted to the iron core, general relativity and neutrinos neglected • Simulations for a sampling of progenitor masses, amounts of differential rotation and angular momentum, and magnetic effects • Scale waveform amplitude to correspond to a supernova occurring at various distances. • Project onto LIGO Hanford 4-km and Livingston 4-km detector beam patterns with optimum sky location and orientation for Hanford • Convolve with detector responses and add white noise typical of amplitudes in most recent science run • Recover initial signal via maximum entropy and calculate cross correlations with all waveforms in catalog Stats for GW Data Analysis
Extracting Bounce Type • Calculated maximum cross correlation between recovered signal and catalog of waveforms • Highest cross correlation between recovered signal and original waveform (solid line) • Plot at right shows highest cross correlations between recovered signal and a waveform of each type. • Recovered signal has most in common with waveform of same bounce type (supranuclear bounce) Stats for GW Data Analysis
Extracting Mass • Plot at right shows cross correlation between reconstructed signal and waveforms from models with progenitors that differ only by mass • The reconstructed signal is most similar to the waveform with the same mass • Similar results for progenitor rotational parameters Stats for GW Data Analysis
Conclusions • Problem 1: How do we reconstruct waveforms from data? • Maximum entropy - Bayesian approach to deconvolution, successfully reconstructs signals • Problem 2: When our models are incomplete, how do we associate the waveform with source physics? • Cross correlation between reconstructed and catalog waveforms provides a qualitative comparison between waveforms associated with different models • Assigning confidences is still an open question • Maximum Entropy References: Maisinger, Hobson & Lasenby (2004) MNRAS 347, 339 Narayan & Nityananda (1986) ARA&A 24, 127 MacKay (1992) Neural Comput 4, 415 Stats for GW Data Analysis