815 research outputs found

    CPCP violation in charmed hadron decays into neutral kaons

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    We find a new CPCP violating effect in charmed hadron decays into neutral kaons, which is induced by the interference between the Cabibbo-favored and doubly Cabibbo-suppressed amplitudes with the K0−K‾0K^{0}-\overline K^{0} mixing. It is estimated to be of order of O(10−3)\mathcal{O}(10^{-3}), much larger than the direct CPCP asymmetry, but missed in the literature. To reveal this new CPCP violation effect, we propose a new observable, the difference of the CPCP asymmetries in the D+→π+KS0D^{+}\to \pi^{+}K_S^0 and Ds+→K+KS0D_{s}^{+}\to K^{+} K_S^0 modes. Once the new effect is determined by experiments, the direct CPCP asymmetry then can be extracted and used to search for new physics.Comment: 6 pages, 3 figures. Contribution to the proceeding of The 15th International Conference on Flavor Physics & CP Violation, 5-9 June 2017, Prague, Czech Republi

    All that Matters does not Matter: The Politics of Dehyphenation in Wayson Choy\u27s All That Matters

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    Implications on the first observation of charm CPV at LHCb

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    Very recently, the LHCb Collaboration observed the CPCP violation (CPV) in the charm sector for the first time, with ΔACPdir≡ACP(D0→K+K−)−ACP(D0→π+π−)=(−1.54±0.29)×10−3\Delta A_{CP}^{\rm dir}\equiv A_{CP}(D^0\to K^+K^-)-A_{CP}(D^0\to \pi^+\pi^-)=(-1.54\pm0.29)\times10^{-3}. This result is consistent with our prediction of ΔACPSM=(−0.57∼−1.87)×10−3\Delta A_{CP}^{\rm SM}=(-0.57\sim -1.87)\times 10^{-3} obtained in the factorization-assisted topological-amplitude (FAT) approach in [PRD86,036012(2012)]. It implies that the current understanding of the penguin dynamics in charm decays in the Standard Model is reasonable. Motivated by the success of the FAT approach, we further suggest to measure the D+→K+K−π+D^+\to K^+K^-\pi^+ decay, which is the next potential mode to reveal the CPV of the same order as 10−310^{-3}.Comment: 10 page

    Large-scale Multi-label Learning with Missing Labels

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    The multi-label classification problem has generated significant interest in recent years. However, existing approaches do not adequately address two key challenges: (a) the ability to tackle problems with a large number (say millions) of labels, and (b) the ability to handle data with missing labels. In this paper, we directly address both these problems by studying the multi-label problem in a generic empirical risk minimization (ERM) framework. Our framework, despite being simple, is surprisingly able to encompass several recent label-compression based methods which can be derived as special cases of our method. To optimize the ERM problem, we develop techniques that exploit the structure of specific loss functions - such as the squared loss function - to offer efficient algorithms. We further show that our learning framework admits formal excess risk bounds even in the presence of missing labels. Our risk bounds are tight and demonstrate better generalization performance for low-rank promoting trace-norm regularization when compared to (rank insensitive) Frobenius norm regularization. Finally, we present extensive empirical results on a variety of benchmark datasets and show that our methods perform significantly better than existing label compression based methods and can scale up to very large datasets such as the Wikipedia dataset
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