{"conference":{"location":"Baltimore, MD, United States","end_date":"2022-07-23","start_date":"2022-07-17","name":"ICML: International Conference on Machine Learning"},"citation":{"short":"R. Venkataramanan, K. Kögler, M. Mondelli, in:, Proceedings of the 39th International Conference on Machine Learning, ML Research Press, 2022.","ama":"Venkataramanan R, Kögler K, Mondelli M. Estimation in rotationally invariant generalized linear models via approximate message passing. In: Proceedings of the 39th International Conference on Machine Learning. Vol 162. ML Research Press; 2022.","ista":"Venkataramanan R, Kögler K, Mondelli M. 2022. Estimation in rotationally invariant generalized linear models via approximate message passing. Proceedings of the 39th International Conference on Machine Learning. ICML: International Conference on Machine Learning vol. 162, 22.","apa":"Venkataramanan, R., Kögler, K., & Mondelli, M. (2022). Estimation in rotationally invariant generalized linear models via approximate message passing. In Proceedings of the 39th International Conference on Machine Learning (Vol. 162). Baltimore, MD, United States: ML Research Press.","chicago":"Venkataramanan, Ramji, Kevin Kögler, and Marco Mondelli. “Estimation in Rotationally Invariant Generalized Linear Models via Approximate Message Passing.” In Proceedings of the 39th International Conference on Machine Learning, Vol. 162. ML Research Press, 2022.","ieee":"R. Venkataramanan, K. Kögler, and M. Mondelli, “Estimation in rotationally invariant generalized linear models via approximate message passing,” in Proceedings of the 39th International Conference on Machine Learning, Baltimore, MD, United States, 2022, vol. 162.","mla":"Venkataramanan, Ramji, et al. “Estimation in Rotationally Invariant Generalized Linear Models via Approximate Message Passing.” Proceedings of the 39th International Conference on Machine Learning, vol. 162, 22, ML Research Press, 2022."},"_id":"12540","article_number":"22","language":[{"iso":"eng"}],"has_accepted_license":"1","author":[{"full_name":"Venkataramanan, Ramji","last_name":"Venkataramanan","first_name":"Ramji"},{"last_name":"Kögler","first_name":"Kevin","full_name":"Kögler, Kevin","id":"94ec913c-dc85-11ea-9058-e5051ab2428b"},{"orcid":"0000-0002-3242-7020","full_name":"Mondelli, Marco","id":"27EB676C-8706-11E9-9510-7717E6697425","first_name":"Marco","last_name":"Mondelli"}],"publication":"Proceedings of the 39th International Conference on Machine Learning","acknowledgement":"The authors would like to thank the anonymous reviewers for their helpful comments. KK and MM were partially supported by the 2019 Lopez-Loreta Prize.","file_date_updated":"2023-02-13T10:53:11Z","project":[{"_id":"059876FA-7A3F-11EA-A408-12923DDC885E","name":"Prix Lopez-Loretta 2019 - Marco Mondelli"}],"ddc":["000"],"volume":162,"intvolume":" 162","year":"2022","date_published":"2022-01-01T00:00:00Z","publication_status":"published","abstract":[{"text":"We consider the problem of signal estimation in generalized linear models defined via rotationally invariant design matrices. Since these matrices can have an arbitrary spectral distribution, this model is well suited for capturing complex correlation structures which often arise in applications. We propose a novel family of approximate message passing (AMP) algorithms for signal estimation, and rigorously characterize their performance in the high-dimensional limit via a state evolution recursion. Our rotationally invariant AMP has complexity of the same order as the existing AMP derived under the restrictive assumption of a Gaussian design; our algorithm also recovers this existing AMP as a special case. Numerical results showcase a performance close to Vector AMP (which is conjectured to be Bayes-optimal in some settings), but obtained with a much lower complexity, as the proposed algorithm does not require a computationally expensive singular value decomposition.","lang":"eng"}],"department":[{"_id":"MaMo"}],"type":"conference","file":[{"checksum":"67436eb0a660789514cdf9db79e84683","relation":"main_file","creator":"dernst","access_level":"open_access","file_name":"2022_PMLR_Venkataramanan.pdf","content_type":"application/pdf","date_updated":"2023-02-13T10:53:11Z","date_created":"2023-02-13T10:53:11Z","file_size":2341343,"success":1,"file_id":"12547"}],"date_updated":"2024-09-10T13:03:17Z","article_processing_charge":"No","status":"public","quality_controlled":"1","title":"Estimation in rotationally invariant generalized linear models via approximate message passing","date_created":"2023-02-10T13:49:04Z","user_id":"2DF688A6-F248-11E8-B48F-1D18A9856A87","oa_version":"Published Version","oa":1,"publisher":"ML Research Press"}