A General Class of Model-Free Dense Precision Matrix Estimators
A General Class of Model-Free Dense Precision Matrix Estimators
We introduce prototype consistent model-free, dense precision matrix estimators that have broad application in economics. Using quadratic form concentration inequalities and novel algebraic characterizations of confounding dimension reductions, we are able to: (i) obtain non-asymptotic bounds for precision matrix estimation errors and also (ii) consistency in high dimensions; (iii) uncover the existence of an intrinsic signal-to-noise -- underlying dimensions tradeoff; and (iv) avoid exact population sparsity assumptions. In addition to its desirable theoretical properties, a thorough empirical study of the S&P 500 index shows that a tuning parameter-free special case of our general estimator exhibits a doubly ascending Sharpe Ratio pattern, thereby establishing a link with the famous double descent phenomenon dominantly present in recent statistical and machine learning literature.
Mehmet Caner Agostino Capponi Mihailo Stojnic
经济学
Mehmet Caner Agostino Capponi Mihailo Stojnic.A General Class of Model-Free Dense Precision Matrix Estimators[EB/OL].(2025-07-07)[2025-07-21].https://arxiv.org/abs/2507.04663.点此复制
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