Maven: A Multimodal Foundation Model for Supernova Science

Published: 11 Oct 2024, Last Modified: 07 Nov 2024Neurips 2024 Workshop FM4Science PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Foundation model, self-supervised learning, supernovae, contrastive learning
TL;DR: We present Maven, a foundation model for supernova science, which reaches state-of-the-art performance in multiple downstream tasks.
Abstract: A common setting in astronomy is the availability of a small number of high-quality observations, and larger amounts of either lower-quality observations or synthetic data from simplified models. Time-domain astrophysics is a canonical example of this imbalance, with the number of supernovae observed photometrically outpacing the number observed spectroscopically by multiple orders of magnitude. At the same time, no data-driven models exist to understand these photometric and spectroscopic observables in a common context. Contrastive learning objectives, which have grown in popularity for aligning distinct data modalities in a shared embedding space, provide a potential solution to extract information from these modalities. We present Maven, the first foundation model for supernova science. To construct Maven, we first pre-train our model to align photometry and spectroscopy from 0.5M synthetic supernovae using a contrastive objective. We then fine-tune the model on 4,702 observed supernovae from the Zwicky Transient Facility. Maven reaches state-of-the-art performance on both classification and redshift estimation, despite the embeddings not being explicitly optimized for these tasks. Through ablation studies, we show that pre-training with synthetic data improves overall performance. In the upcoming era of the Vera C. Rubin Observatory, Maven serves as a Rosetta Stone for leveraging large, unlabeled and multimodal time-domain datasets.
Submission Number: 95
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