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Bibliographic Details
Main Authors: Kim, Dongwon, Gong, Jinu, Kang, Joonhyuk
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.04764
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author Kim, Dongwon
Gong, Jinu
Kang, Joonhyuk
author_facet Kim, Dongwon
Gong, Jinu
Kang, Joonhyuk
contents Channel prediction has emerged as an effective solution for acquiring accurate channel state information (CSI) in the presense of channel aging. Existing methods have inherent limitations, with conventional Kalman filter (KF)-based approach being vulnerable to model mismatch and deep learning (DL)-based approaches producing overconfident predictions. To address these issues, we propose a DL-based conformal Bayes filter (DCBF) that integrates DL-based prediction, conformal quantile regression (CQR), and Bayesian filtering. The proposed framework enables principled fusion of calibrated priors and observations, yielding reliable channel predictions with the calibrated uncertainty. Simulation results demonstrate that DCBF significantly improves DL-based prediction and outperforms the KF-based method.
format Preprint
id arxiv_https___arxiv_org_abs_2603_04764
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle MIMO Channel Prediction via Deep Learning-based Conformal Bayes Filter
Kim, Dongwon
Gong, Jinu
Kang, Joonhyuk
Signal Processing
Channel prediction has emerged as an effective solution for acquiring accurate channel state information (CSI) in the presense of channel aging. Existing methods have inherent limitations, with conventional Kalman filter (KF)-based approach being vulnerable to model mismatch and deep learning (DL)-based approaches producing overconfident predictions. To address these issues, we propose a DL-based conformal Bayes filter (DCBF) that integrates DL-based prediction, conformal quantile regression (CQR), and Bayesian filtering. The proposed framework enables principled fusion of calibrated priors and observations, yielding reliable channel predictions with the calibrated uncertainty. Simulation results demonstrate that DCBF significantly improves DL-based prediction and outperforms the KF-based method.
title MIMO Channel Prediction via Deep Learning-based Conformal Bayes Filter
topic Signal Processing
url https://arxiv.org/abs/2603.04764