Domain adaptation with an ensemble of CNN and transformer models trained on DES detects 20,180 LSBGs and 434 UDGs in KiDS DR5, with structural parameters and environmental trends consistent with known samples.
Restricted Admissible Limit for Domains of Finite Type
3 Pith papers cite this work. Polarity classification is still indexing.
abstract
We investigate the boundary behavior of holomorphic functions with respect to a family of curves in a domain of finite type. This work is a generalization of \u{C}irka's classical result on the unit ball and it supplements the result by Cima and Krantz on the Lindel\"{o}f principle for general domains. See [KRA2] for some recent developments in this subject
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TOPPO reformulates PPO with critic balancing to address gradient ill-conditioning in multi-task RL and reports stronger mean and tail performance than SAC baselines on Meta-World+ using fewer parameters and steps.
PKA extends Ross's variance method with runtime analysis deriving an acceleration factor, proves Ross is optimal only for single-sample batches, generalizes to covariance, and reports up to 454x speedups versus baselines.
citing papers explorer
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From DES to KiDS: Domain adaptation for cross-survey detection of low-surface-brightness galaxies
Domain adaptation with an ensemble of CNN and transformer models trained on DES detects 20,180 LSBGs and 434 UDGs in KiDS DR5, with structural parameters and environmental trends consistent with known samples.
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TOPPO: Rethinking PPO for Multi-Task Reinforcement Learning with Critic Balancing
TOPPO reformulates PPO with critic balancing to address gradient ill-conditioning in multi-task RL and reports stronger mean and tail performance than SAC baselines on Meta-World+ using fewer parameters and steps.
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Extending Sheldon M. Ross's Method for Efficient Large-Scale Variance Computation
PKA extends Ross's variance method with runtime analysis deriving an acceleration factor, proves Ross is optimal only for single-sample batches, generalizes to covariance, and reports up to 454x speedups versus baselines.