Thursday, November 21 |
07:00 - 08:45 |
Breakfast ↓ Breakfast is served daily between 7 and 9am in the Vistas Dining Room, the top floor of the Sally Borden Building. (Vistas Dining Room) |
08:45 - 09:10 |
Andrew Toivonen: Low-latency gravitational-wave data products intended for multi-messenger searches in the fourth observing run of the International Gravitational-Wave Network ↓ With the fourth observing run of the International Gravitational-Wave Network (O4) underway, the search for gravitational-wave counterparts, including gamma-ray bursts and kilonovae, continues. Observations of gravitational waves and their counterparts, like with GW170817 and AT 2017gfo, are crucial for our understanding of the neutron star equation of state and of r-process nucleosynthesis expected to take place in the ejecta of compact binary mergers with at least one neutron star. Here, we present a summary of open public alerts in the first half of O4, the current data products used to classify compact binary mergers, and those under current development. These include, amongst others, exciting proposed data products designed to maximize multi-messenger follow-up opportunities, such as estimates of the likelihood that a candidate will produce a kilonova, estimates of the mass ejecta and light curves produced by such a kilonova, as well as estimates for the binary viewing angle. (TCPL 201) |
09:10 - 09:35 |
Miquel Miravet-Tenés: Bayesian real-time classification of EM bright events ↓ Because of the electromagnetic (EM) radiation produced during the merger, compact binary coalescences with neutron stars may result in multi-messenger observations. To follow up on the gravitational-wave (GW) signal with EM telescopes, it is critical to promptly identify the properties of these sources. This identification must rely on the properties of the progenitor source, such as the component masses and spins, as determined by low-latency detection pipelines in real-time. The output of these pipelines, however, might be biased, which could decrease the accuracy of parameter recovery. In this work, we revisit this problem and discuss two new implementations of supervised machine learning algorithms, K-nearest neighbors and random forest, which can predict the presence of a neutron star and post-merger matter remnant in low-latency searches. Additionally, we present a novel approach for calculating the Bayesian probabilities for these two metrics. Our scheme is designed to provide the astronomy community with well-defined probabilities. This would deliver a more direct and easily interpretable product to assist EM telescopes in deciding whether to follow up on GW events in real-time. (TCPL 201) |
09:35 - 10:00 |
Sushant Sharma Chaudhary: Estimation of CBC parameters' intervals in Low-Latency: A machine learning approach ↓ Low-latency pipelines analyzing gravitational waves from Compact Binary Coalescence (CBC) events rely on matched filtering techniques, where the best matching template that yields the highest signal-to-noise ratio (SNR) is identified as the gravitational wave (GW) candidate. However, limitations in the template bank, waveform modeling, and non-stationary detector noise often cause discrepancies between the template parameters and the true event parameters, particularly for events with higher chirp masses. This work aims to quantify the extent of these discrepancies across the parameter space using machine learning. We present a Quantile Regression Neural Network (QRNN) model that provides dynamic confidence bounds on key parameters such as chirp mass, mass ratio, and total mass, using the best matching template parameters as inputs. The model demonstrated over 95% accuracy on the testing set and performed similarly during the recent LVK Mock Data Challenge (MDC) when input parameters were within the training range. Additionally, incorporating these bounds as priors for online parameter estimation (PE) in 100 MDC events resulted in similar skymap statistics while reducing the number of likelihood iterations by over 10%, directly decreasing the overall time required for PE runs. (TCPL 201) |
10:00 - 10:30 |
Coffee Break (TCPL Foyer) |
10:30 - 11:30 |
Jessica McIver: Roundtable discussion: Addressing demands of analyses in O5 and beyond (TCPL 201) |
11:30 - 13:00 |
Lunch ↓ Lunch is served daily between 11:30am and 1:30pm in the Vistas Dining Room, the top floor of the Sally Borden Building. (Vistas Dining Room) |
13:00 - 15:00 |
Ik Siong Heng: Roundtable discussion: Applications of machine learning in gravitational wave data analysis (TCPL 201) |
15:00 - 15:30 |
Coffee Break (TCPL Foyer) |
15:30 - 16:00 |
Mairi Sakellariadou: Searching for gravitational waves using dictionary learning ↓ I will highlight a sparse dictionary learning approach, as a novel tool for reconstruction of merger waveforms in the presence of Galactic confusion noise [1], rapid detection of GWs from BBHs [2], and reconstruction of longf-duration GWs from extreme mass ratio inspirals[3]. references: [1] Dictionary Learning: A Novel Approach to Detecting Binary Black Holes in the Presence of Galactic Noise with LISA, Phys.Rev.Lett. 130 (2023) 9, 091401, e-Print: 2210.06194 [gr-qc]; [2] Rapid detection of gravitational waves from binary black hole mergers using sparse dictionary learning, e-Print: 2405.17721 [gr-qc]; [3] High-speed reconstruction of long-duration gravitational waves from extreme-mass-ratio inspirals using sparse dictionary learning, Phys.Rev.D 110 (2024) 6, 064074. (TCPL 201) |
16:00 - 16:30 |
Melissa Lopez: Detection of anomalies amongst LIGO’s glitch populations with autoencoder ↓ Non-gaussian, transient bursts of noise in gravitational wave (GW) interferometers, also known as glitches, hinder the detection and parameter estimation of short- and long-lived GW signals in the main detector strain. Glitches, come in a wide range of frequency-amplitude-time morphologies and may be caused by environmen- tal or instrumental processes, so a key step towards their mitigation is to understand their population. Current approaches for their identification use supervised models to learn their morphology in the main strain with a fixed set of classes, but do not consider relevant information provided by auxiliary channels that monitor the state of the interferometers. In this work, we present an unsupervised algorithm to find anomalous glitches. Firstly, we encode a subset of auxiliary channels from LIGO Livingston in the fractal dimension, which mea- sures the complexity of the signal. For this aim, we speed up the fractal dimension calculation to near-real time. Secondly, we learn the underlying distribution of the data using an autoencoder with cyclic periodic convolutions. In this way, we learn the underlying distribution of glitches and we uncover unknown glitch morphologies, and overlaps in time between different glitches and misclassifications. This led to the discovery of 6.6% anomalies in the input data. The results of this investigation stress the learnable structure of auxiliary channels encoded in fractal dimension and provide a flexible framework for glitch discovery. (TCPL 201) |
16:30 - 17:00 |
Francesco Di Renzo: Data quality and event validation in LIGO-Virgo-KAGRA fourth joint observational campaign ↓ The success of gravitational wave astronomy hinges on precise data quality assessment and the meticulous validation of detected events. This presentation highlights the critical role of these processes within the ongoing O4 observational campaign by the LIGO, Virgo, and KAGRA collaborations. We begin by introducing detector data and the concept of data quality. Next, we examine how common data-quality issues impact the detection of astrophysical signals, affecting both their significance and the reliability of astrophysical parameter estimates. We then describe the statistical methods used to identify and mitigate these issues, followed by an overview of the event validation framework employed in O4 to confirm the astrophysical origins of candidate signals. Finally, we discuss how advances in signal processing and artificial intelligence are poised to enhance these procedures in future observational campaigns. (TCPL 201) |
17:00 - 17:30 |
Ryan Magee: Machine learning as a tool to bolster GW detection pipeline outputs ↓ Machine-learning applications within the gravitational-wave community have exploded in recent years. Many of these works have tackled big problems in the field, ranging from detection, to glitch classification, to near-instantaneous parameter estimation. Here, we instead motivate the application of ML to small problems where effective modeling is necessary, but a detailed understanding is not. In these scenarios, machine learning is a powerful tool that can enhance our understanding of local measurements. In particular, we examine two distinct applications of machine learning to detection pipeline outputs. First, we show that simple neural networks can accurately interpolate across the gravitational-wave signal space used by search pipelines, facilitating local signal-to-noise ratio maximization. Second, we show that the search response encodes the nature of observed transients, and that convolutional neural networks can accurately classify signals and noise in this parameterization. (TCPL 201) |
17:30 - 19:30 |
Dinner ↓ A buffet dinner is served daily between 5:30pm and 7:30pm in Vistas Dining Room, top floor of the Sally Borden Building. (Vistas Dining Room) |