36 research outputs found

    Reliable Beamforming at Terahertz Bands: Are Causal Representations the Way Forward?

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    Future wireless services, such as the metaverse require high information rate, reliability, and low latency. Multi-user wireless systems can meet such requirements by utilizing the abundant terahertz bandwidth with a massive number of antennas, creating narrow beamforming solutions. However, existing solutions lack proper modeling of channel dynamics, resulting in inaccurate beamforming solutions in high-mobility scenarios. Herein, a dynamic, semantically aware beamforming solution is proposed for the first time, utilizing novel artificial intelligence algorithms in variational causal inference to compute the time-varying dynamics of the causal representation of multi-modal data and the beamforming. Simulations show that the proposed causality-guided approach for Terahertz (THz) beamforming outperforms classical MIMO beamforming techniques.Comment: Accepted at IEEE ICASSP 202

    Causal Reasoning: Charting a Revolutionary Course for Next-Generation AI-Native Wireless Networks

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    Despite the basic premise that next-generation wireless networks (e.g., 6G) will be artificial intelligence (AI)-native, to date, most existing efforts remain either qualitative or incremental extensions to existing ``AI for wireless'' paradigms. Indeed, creating AI-native wireless networks faces significant technical challenges due to the limitations of data-driven, training-intensive AI. These limitations include the black-box nature of the AI models, their curve-fitting nature, which can limit their ability to reason and adapt, their reliance on large amounts of training data, and the energy inefficiency of large neural networks. In response to these limitations, this article presents a comprehensive, forward-looking vision that addresses these shortcomings by introducing a novel framework for building AI-native wireless networks; grounded in the emerging field of causal reasoning. Causal reasoning, founded on causal discovery, causal representation learning, and causal inference, can help build explainable, reasoning-aware, and sustainable wireless networks. Towards fulfilling this vision, we first highlight several wireless networking challenges that can be addressed by causal discovery and representation, including ultra-reliable beamforming for terahertz (THz) systems, near-accurate physical twin modeling for digital twins, training data augmentation, and semantic communication. We showcase how incorporating causal discovery can assist in achieving dynamic adaptability, resilience, and cognition in addressing these challenges. Furthermore, we outline potential frameworks that leverage causal inference to achieve the overarching objectives of future-generation networks, including intent management, dynamic adaptability, human-level cognition, reasoning, and the critical element of time sensitivity

    Towards convergent approximate message passing by alternating constrained minimization of Bethe free energy

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    Deterministic annealing for hybrid beamforming design in multi-cell MU-MIMO systems

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    Rate maximization under partial CSIT for multi-stage/hybrid BF under limited dynamic range for OFDM full-duplex systems

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    A massive MIMO stochastic geometry analysis of various beamforming designs with partial CSIT

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    A rate splitting strategy for mitigating intra-cell pilot contamination in massive MIMO

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    Hybrid beamforming design in multi-cell MU-MIMO systems with per-RF or per-antenna power constraints

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    Massive MISO IBC reduced order zero forcing beamforming - A multi-antenna stochastic geometry perspective

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