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SOME APPLICATIONS OF BP-THEOREM IN APPROXIMATION THEORY 被引量:1

SOME APPLICATIONS OF BP-THEOREM IN APPROXIMATION THEORY
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摘要 In this paper we apply Bishop-Phelps property to show that if X is a Banach space and G _ X is the maximal subspace so that G⊥ : {x* ∈ X* |x* (y) = 0; y ∈ G} is an L-summand in X*, then L1 (Ω, G) is contained in a maximal proximinal subspace of L1(Ω,X). In this paper we apply Bishop-Phelps property to show that if X is a Banach space and G _ X is the maximal subspace so that G⊥ : {x* ∈ X* |x* (y) = 0; y ∈ G} is an L-summand in X*, then L1 (Ω, G) is contained in a maximal proximinal subspace of L1(Ω,X).
出处 《Analysis in Theory and Applications》 2011年第3期220-223,共4页 分析理论与应用(英文刊)
关键词 Bishop-Phelps theorem support point proximinality L-projection Bishop-Phelps theorem, support point, proximinality, L-projection
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参考文献6

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