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Attorney General Ken Paxton routs veteran incumbent Cornyn in Texas Senate primary
Attorney General Ken Paxton defeated veteran incumbent Cornyn in the Texas Senate primary. This race is significant as it will influence whether Democrats can regain control of the US Senate before the end of the Trump presidency.
Attorney General Ken Paxton routs veteran incumbent Cornyn in Texas Senate primary
Attorney General Ken Paxton defeated veteran incumbent Cornyn in the Texas Senate primary. This race is significant as it will influence whether Democrats can regain control of the US Senate before the end of the Trump presidency.
Attorney General Ken Paxton routs veteran incumbent Cornyn in Texas Senate primary
Attorney General Ken Paxton defeated veteran incumbent Cornyn in the Texas Senate primary. This race is significant as it will influence whether Democrats can regain control of the US Senate before the end of the Trump presidency.
Aligning Shared and Routed Experts for Cross-Subject EEG Generalization
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Boundary-compatible interacting approximations of quasilinear PDEs on bounded domains
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Structural Decoupling: A Scaffold-Flow Theory of Generalization and Alignment
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STAR: Rethinking MoE Routing as Structure-Aware Subspace Learning
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Block coordinate descent for joint delay-energy optimization in multi-hop D2D networks
Announce Type: cross Abstract: In multi-hop device-to-device (D2D) networks, the optimization of network-level metrics is particularly difficult due to the tight coupling between network-layer routing and physical-layer resource allocation. Departing from traditional average-performance metrics, this paper addresses the joint optimization of routing paths, transmission power, and bandwidth allocation. We formulate a generalized cost function to minimize the maximum transmission time (i.e.,...
Optimal Online Equitable Allocation with Indivisible Resources
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