Feb. 5, 2024, 6:42 a.m. | Jeremy Wayland Corinna Coupette Bastian Rieck

cs.LG updates on arXiv.org arxiv.org

Echoing recent calls to counter reliability and robustness concerns in machine learning via multiverse analysis, we present PRESTO, a principled framework for mapping the multiverse of machine-learning models that rely on latent representations. Although such models enjoy widespread adoption, the variability in their embeddings remains poorly understood, resulting in unnecessary complexity and untrustworthy representations. Our framework uses persistent homology to characterize the latent spaces arising from different combinations of diverse machine-learning methods, (hyper)parameter configurations, and datasets, allowing us to measure …

adoption analysis complexity concerns cs.lg embeddings framework machine machine learning mapping math.at multiverse presto reliability robustness stat.ml via

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