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Generalized pseudolikelihood methods for inverse covariance estimation

Authors :
Ali, A
Singh, Aarti1
Zhu, Xiaojin Jerry
Ali, A
Khare, K
Oh, SY
Rajaratnam, B
Ali, A
Singh, Aarti1
Zhu, Xiaojin Jerry
Ali, A
Khare, K
Oh, SY
Rajaratnam, B
Source :
Proceedings of the 20th International Conference on Artificial Intelligence and Statistics, AISTATS 2017; vol 54, 280-288; 2640-3498
Publication Year :
2017

Abstract

Copyright 2017 by the author(s). We introduce PseudoNet, a new pseudolikelihood-based estimator of the inverse covariance matrix, that has a number of useful statistical and computational properties. We show, through detailed experiments with synthetic as well as real-world finance and wind power data, that PseudoNet outperforms related methods in terms of estimation error and support recovery, making it well-suited for use in a downstream application, where obtaining low estimation error can be important. We also show, under regularity conditions, that PseudoNet is consistent. Our proof assumes the existence of accurate estimates of the diagonal entries of the underlying inverse covariance matrix; we additionally provide a two-step method to obtain these estimates, even in a high-dimensional setting, going beyond the proofs for related methods. Unlike other pseudolikelihood-based methods, we also show that PseudoNet does not saturate, i.e., in high dimensions, there is no hard limit on the number of nonzero entries in the PseudoNet estimate. We present a fast algorithm as well as screening rules that make computing the PseudoNet estimate over a range of tuning parameters tractable.

Details

Database :
OAIster
Journal :
Proceedings of the 20th International Conference on Artificial Intelligence and Statistics, AISTATS 2017; vol 54, 280-288; 2640-3498
Notes :
application/pdf, Proceedings of the 20th International Conference on Artificial Intelligence and Statistics, AISTATS 2017 vol 54, 280-288 2640-3498
Publication Type :
Electronic Resource
Accession number :
edsoai.on1287415458
Document Type :
Electronic Resource