Measurements of the branching fractions of $\Lambda_{c}^{+} \rightarrow p \pi^{-} \pi^{+}$, $\Lambda_{c}^{+} \rightarrow p K^{-} K^{+}$, and $\Lambda_{c}^{+} \rightarrow p \pi^{-} K^{+}$
LHCb collaboration: R. Aaij, B. Adeva, M. Adinolfi, Z. Ajaltouni, S., Akar, J. Albrecht, F. Alessio, M. Alexander, A. Alfonso Albero, S. Ali, G., Alkhazov, P. Alvarez Cartelle, A.A. Alves Jr, S. Amato, S. Amerio, Y. Amhis,, L. An, L. Anderlini, G. Andreassi, M. Andreotti

TL;DR
This paper presents the most precise measurements to date of the branching fractions of specific $\Lambda_c^+$ decays relative to a reference decay, using LHCb proton-proton collision data at 7 TeV.
Contribution
The study provides the first high-precision measurements of the branching ratios of $\Lambda_c^+$ decays to $p \pi^-\pi^+$, $p ext{K}^- ext{K}^+$, and $p \pi^- ext{K}^+$ relative to the $\Lambda_c^+ ightarrow p K^- \pi^+$ decay.
Findings
Measured branching ratio of $\Lambda_c^+ ightarrow p \\pi^- \\pi^+$ is (7.44 ± 0.08 ± 0.18)%
Measured branching ratio of $\Lambda_c^+ ightarrow p K^- K^+$ is (1.70 ± 0.03 ± 0.03)%
Measured branching ratio of $\Lambda_c^+ ightarrow p \\pi^- \\text{K}^+$ is (0.165 ± 0.015 ± 0.005)%
Abstract
The ratios of the branching fractions of the decays , , and with respect to the Cabibbo-favoured decay are measured using proton-proton collision data collected with the LHCb experiment at a 7 TeV centre-of-mass energy and corresponding to an integrated luminosity of 1.0 fb: \begin{align*} \frac{\mathcal{B}(\Lambda_{c}^{+} \rightarrow p \pi^{-} \pi^{+})}{\mathcal{B}(\Lambda_{c}^{+} \rightarrow p K^{-} \pi^{+})} & = (7.44 \pm 0.08 \pm 0.18)\,\%, \frac{\mathcal{B}(\Lambda_{c}^{+} \rightarrow p K^{-} K^{+})}{\mathcal{B}(\Lambda_{c}^{+} \rightarrow p K^{-} \pi^{+})} &= (1.70 \pm 0.03 \pm 0.03)\,\%, \frac{\mathcal{B}(\Lambda_{c}^{+} \rightarrow p \pi^{-} K^{+})}{\mathcal{B}(\Lambda_{c}^{+} \rightarrow p…
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