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Universal Inference Meets Random Projections: A Scalable Test for Log-Concavity

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DataCite Commons2024-05-31 更新2024-08-19 收录
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https://tandf.figshare.com/articles/dataset/Universal_inference_meets_random_projections_a_scalable_test_for_log-concavity/25690427
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Shape constraints yield flexible middle grounds between fully nonparametric and fully parametric approaches to modeling distributions of data. The specific assumption of log-concavity is motivated by applications across economics, survival modeling, and reliability theory. However, there do not currently exist valid tests for whether the underlying density of given data is log-concave. The recent universal inference methodology provides a valid test. The universal test relies on maximum likelihood estimation (MLE), and efficient methods already exist for finding the log-concave MLE. This yields the first test of log-concavity that is provably valid in finite samples in any dimension, for which we also establish asymptotic consistency results. Empirically, we find that a random projections approach that converts the <i>d</i>-dimensional testing problem into many one-dimensional problems can yield high power, leading to a simple procedure that is statistically and computationally efficient.
提供机构:
Taylor & Francis
创建时间:
2024-04-25
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