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CMS-B2G-21-002 ; CERN-EP-2021-253
Search for resonances decaying to three W bosons in the hadronic final state in proton-proton collisions at $\sqrt{s} = $ 13 TeV
Phys. Rev. D 106 (2022) 012002
Abstract: A search for Kaluza-Klein excited vector boson resonances, W$ _{\mathrm{KK}} $, decaying in cascade to three W bosons via a scalar radion R, W$ _{\mathrm{KK}} $ $\to$ WR $\to$ WWW, with two or three massive jets is presented. The search is performed with proton-proton collision data recorded at $\sqrt{s} = $ 13 TeV, collected by the CMS experiment at the CERN LHC, during 2016-2018, corresponding to an integrated luminosity of 138 fb$^{-1}$. Two final states are simultaneously probed, one where the two W bosons produced by the R decay are reconstructed as separate, large-radius, massive jets, and one where they are merged in a single large-radius jet. The data observed are in agreement with the standard model expectations. Limits are set on the product of the W$ _{\mathrm{KK}} $ resonance cross section and branching fraction to three W bosons in an extended warped extra-dimensional model and are the first of their kind at the LHC.
Figures & Tables Summary References CMS Publications
Figures

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Figure 1:
Schematic diagrams of the decay of a KK excitation of a W boson (W$ _{\mathrm {KK}} $) to the final states considered in this analysis. Left: three individually reconstructed W bosons; right: one individually reconstructed W boson and two W bosons reconstructed as a single large-radius jet, which is predominant for $ {{m}_{\mathrm{R}}} \le 0.2\, {{m}_{{\mathrm{W} _{\mathrm {KK}}}}} $.

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Figure 2:
Variables discriminating between signal and background in simulation. Left column, upper to lower rows: the distributions of ${m_{\mathrm {jj}}}$, ${m^{\text {max}}_{\text {j}}}$, and deep-WH (for highest-mass jet with $ {m^{\text {max}}_{\text {j}}} > $ 100 GeV) for preselected events with $ {N_{\text {j}}} =$ 2. Right column, upper to lower rows: the distributions of ${m_{\mathrm {jjj}}}$, ${m^{\text {max}}_{\text {j}}}$, and deep-W (for highest-mass jet with 60 $ < {m^{\text {max}}_{\text {j}}} < $ 100 GeV) for preselected events with $ {N_{\text {j}}} =$ 3. The signal processes are scaled to 500 times their theoretical cross section for visibility.

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Figure 2-a:
The distribution of ${m_{\mathrm {jj}}}$ for preselected events with $ {N_{\text {j}}} =$ 2. The signal processes are scaled to 500 times their theoretical cross section for visibility.

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Figure 2-b:
The distribution of ${m_{\mathrm {jjj}}}$ for preselected events with $ {N_{\text {j}}} =$ 3. The signal processes are scaled to 500 times their theoretical cross section for visibility.

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Figure 2-c:
The distribution of ${m^{\text {max}}_{\text {j}}}$ for preselected events with $ {N_{\text {j}}} =$ 2. The signal processes are scaled to 500 times their theoretical cross section for visibility.

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Figure 2-d:
The distribution of ${m^{\text {max}}_{\text {j}}}$ for preselected events with $ {N_{\text {j}}} =$ 3. The signal processes are scaled to 500 times their theoretical cross section for visibility.

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Figure 2-e:
The distribution of deep-WH (for highest-mass jet with $ {m^{\text {max}}_{\text {j}}} > $ 100 GeV) for preselected events with $ {N_{\text {j}}} =$ 2. The signal processes are scaled to 500 times their theoretical cross section for visibility.

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Figure 2-f:
The distribution of deep-W (for highest-mass jet with 60 $ < {m^{\text {max}}_{\text {j}}} < $ 100 GeV) for preselected events with $ {N_{\text {j}}} =$ 3. The signal processes are scaled to 500 times their theoretical cross section for visibility.

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Figure 3:
Schematic of the 2D jet mass regions for two-jet events (left) and 3D jet mass regions for three-jet events (right), indicating the location of the six orthogonal signal regions SR1-6, indicated by the colored areas. The SR4 and SR5 differ by the requirement of exactly three and two W-tagged jets, respectively.

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Figure 4:
Measured scale factors (SFs) for the deep-W and deep-WH discriminants. Upper row: SFs for W (dark blue), $\mathrm{t} ^2$ (light blue), and q/g (yellow) matched jets in the low-$ {m_{\text {j}}}$ bins, LL (left) and LH (right), as functions of the deep-W discriminant value. Lower row: SFs for $\mathrm{t} ^2$ (light blue), $\mathrm{t} ^{3,4}$ (green), and q/g (yellow) matched jets in the high-$ {m_{\text {j}}}$ bins, HL (left) and HH (right), as functions of the deep-WH discriminant value. For each discriminant value bin, the sum of the SF-corrected jet yields is required to be equal to the observed data. The statistical and parton shower (PS) uncertainties are shown by the shaded bands.

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Figure 4-a:
Measured scale factors (SFs) for W (dark blue), $\mathrm{t} ^2$ (light blue), and q/g (yellow) matched jets in the low-$ {m_{\text {j}}}$ bins, LL, as functions of the deep-W discriminant value. For each discriminant value bin, the sum of the SF-corrected jet yields is required to be equal to the observed data. The statistical and parton shower (PS) uncertainties are shown by the shaded bands.

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Figure 4-b:
Measured scale factors (SFs) for W (dark blue), $\mathrm{t} ^2$ (light blue), and q/g (yellow) matched jets in the low-$ {m_{\text {j}}}$ bins, LH, as functions of the deep-W discriminant value. For each discriminant value bin, the sum of the SF-corrected jet yields is required to be equal to the observed data. The statistical and parton shower (PS) uncertainties are shown by the shaded bands.

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Figure 4-c:
Measured scale factors (SFs) for $\mathrm{t} ^2$ (light blue), $\mathrm{t} ^{3,4}$ (green), and q/g (yellow) matched jets in the high-$ {m_{\text {j}}}$ bins, HL, as functions of the deep-WH discriminant value. For each discriminant value bin, the sum of the SF-corrected jet yields is required to be equal to the observed data. The statistical and parton shower (PS) uncertainties are shown by the shaded bands.

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Figure 4-d:
Measured scale factors (SFs) for $\mathrm{t} ^2$ (light blue), $\mathrm{t} ^{3,4}$ (green), and q/g (yellow) matched jets in the high-$ {m_{\text {j}}}$ bins, HH, as functions of the deep-WH discriminant value. For each discriminant value bin, the sum of the SF-corrected jet yields is required to be equal to the observed data. The statistical and parton shower (PS) uncertainties are shown by the shaded bands.

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Figure 5:
DeepAK8 discriminants of the jet with highest mass in the single-lepton sideband. The deep-W spectra in the LL (upper left) and LH (upper right) samples are presented together with the deep-WH spectra in the HL (lower left) and HH (lower right) samples. The W boson jets are shown in dark blue, $\mathrm{t} ^2$ in light blue, $\mathrm{t} ^{3,4}$ in green, q/g in yellow, and the "Rest'' jet types (jets not matching any of the categories) in gray. Before corrections (red), discrepancies between the prediction and the data can be observed, in particular at low and high discriminant values. The corrected distributions after application of the scale factors (SFs) are shown in dark green. The lower panels show the data-to-simulation ratios before and after corrections. The SF uncertainties are indicated by the shaded bands.

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Figure 5-a:
Spectrum of the deep-W discriminant for the jet with highest mass in the LL single-lepton sideband sample. The W boson jets are shown in dark blue, $\mathrm{t} ^2$ in light blue, $\mathrm{t} ^{3,4}$ in green, q/g in yellow, and the "Rest'' jet types (jets not matching any of the categories) in gray. Before corrections (red), discrepancies between the prediction and the data can be observed, in particular at low and high discriminant values. The corrected distributions after application of the scale factors (SFs) are shown in dark green. The lower panel shows the data-to-simulation ratio before and after corrections. The SF uncertainties are indicated by the shaded bands.

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Figure 5-b:
Spectrum of the deep-W discriminant for the jet with highest mass in the LH single-lepton sideband sample. The W boson jets are shown in dark blue, $\mathrm{t} ^2$ in light blue, $\mathrm{t} ^{3,4}$ in green, q/g in yellow, and the "Rest'' jet types (jets not matching any of the categories) in gray. Before corrections (red), discrepancies between the prediction and the data can be observed, in particular at low and high discriminant values. The corrected distributions after application of the scale factors (SFs) are shown in dark green. The lower panel shows the data-to-simulation ratio before and after corrections. The SF uncertainties are indicated by the shaded bands.

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Figure 5-c:
Spectrum of the deep-WH discriminant for the jet with highest mass in the HL single-lepton sideband sample. The W boson jets are shown in dark blue, $\mathrm{t} ^2$ in light blue, $\mathrm{t} ^{3,4}$ in green, q/g in yellow, and the "Rest'' jet types (jets not matching any of the categories) in gray. Before corrections (red), discrepancies between the prediction and the data can be observed, in particular at low and high discriminant values. The corrected distributions after application of the scale factors (SFs) are shown in dark green. The lower panel shows the data-to-simulation ratio before and after corrections. The SF uncertainties are indicated by the shaded bands.

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Figure 5-d:
Spectrum of the deep-WH discriminant for the jet with highest mass in the HH single-lepton sideband sample. The W boson jets are shown in dark blue, $\mathrm{t} ^2$ in light blue, $\mathrm{t} ^{3,4}$ in green, q/g in yellow, and the "Rest'' jet types (jets not matching any of the categories) in gray. Before corrections (red), discrepancies between the prediction and the data can be observed, in particular at low and high discriminant values. The corrected distributions after application of the scale factors (SFs) are shown in dark green. The lower panel shows the data-to-simulation ratio before and after corrections. The SF uncertainties are indicated by the shaded bands.

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Figure 6:
Comparison between data (black markers) and simulated background events (histograms) of the deep-W (WH) distributions for the highest-mass jet after SF application. The control regions CR1, CR2, CR3 are shown in the left column, upper to lower rows, while CR45 and CR6 are presented right column, upper and middle rows, respectively. The lower panels show the data-to-simulation ratio.

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Figure 6-a:
Comparison between data (black markers) and simulated background events (histograms) of the deep-W distributions for the highest-mass jet after SF application in the CR1 control region. The lower panel shows the data-to-simulation ratio.

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Figure 6-b:
Comparison between data (black markers) and simulated background events (histograms) of the deep-W distributions for the highest-mass jet after SF application in the CR45 control region. The lower panel shows the data-to-simulation ratio.

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Figure 6-c:
Comparison between data (black markers) and simulated background events (histograms) of the deep-WH distributions for the highest-mass jet after SF application in the CR2 control region. The lower panel shows the data-to-simulation ratio.

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Figure 6-d:
Comparison between data (black markers) and simulated background events (histograms) of the deep-W distributions for the highest-mass jet after SF application in the CR6 control region. The lower panel shows the data-to-simulation ratio.

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Figure 6-e:
Comparison between data (black markers) and simulated background events (histograms) of the deep-WH distributions for the highest-mass jet after SF application in the CR3 control region. The lower panel shows the data-to-simulation ratio.

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Figure 7:
Shape comparison for different jet types in simulation. Left : the ${m^{\text {max}}_{\text {j}}}$ distributions for SR1-3 events without deep-W (WH) constraints. Center and right : the deep-W and deep-WH distributions normalized to unity for the shown components, respectively. The $\mathrm{t} ^{3,4}$ jets from the preselected sample, normalized to unity, are superimposed to compare shapes with the ${\mathrm{R} ^{3\mathrm{q}}}$ and ${\mathrm{R} ^{4\mathrm{q}}}$ distributions.

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Figure 7-a:
The ${m^{\text {max}}_{\text {j}}}$ distributions for SR1-3 events without deep-W (WH) constraints.

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Figure 7-b:
The deep-W distributions normalized to unity for the shown components. The $\mathrm{t} ^{3,4}$ jets from the preselected sample, normalized to unity, are superimposed to compare shapes with the ${\mathrm{R} ^{3\mathrm{q}}}$ and ${\mathrm{R} ^{4\mathrm{q}}}$ distributions.

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Figure 7-c:
The deep-WH distributions normalized to unity for the shown components. The $\mathrm{t} ^{3,4}$ jets from the preselected sample, normalized to unity, are superimposed to compare shapes with the ${\mathrm{R} ^{3\mathrm{q}}}$ and ${\mathrm{R} ^{4\mathrm{q}}}$ distributions.

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Figure 8:
Invariant mass distributions of the reconstructed triboson systems for control regions in data (black markers) and simulated events (histograms). The ${m_{\mathrm {jj}}}$ distributions for CR1, CR2, CR3 are presented in the left column, upper to lower rows, respectively; the ${m_{\mathrm {jjj}}}$ distributions for control regions CR45 and CR6 are presented in the right column, upper and middle rows, respectively. The simulation is corrected by SFs, and the QCD multijet background is scaled to the data yields.

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Figure 8-a:
Invariant mass ${m_{\mathrm {jj}}}$ distributions of the reconstructed triboson systems for the CR1 control region in data (black markers) and simulated events (histograms). The simulation is corrected by SFs, and the QCD multijet background is scaled to the data yields.

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Figure 8-b:
Invariant mass ${m_{\mathrm {jjj}}}$ distributions of the reconstructed triboson systems for the CR45 control region in data (black markers) and simulated events (histograms). The simulation is corrected by SFs, and the QCD multijet background is scaled to the data yields.

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Figure 8-c:
Invariant mass ${m_{\mathrm {jj}}}$ distributions of the reconstructed triboson systems for the CR2 control region in data (black markers) and simulated events (histograms). The simulation is corrected by SFs, and the QCD multijet background is scaled to the data yields.

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Figure 8-d:
Invariant mass ${m_{\mathrm {jjj}}}$ distributions of the reconstructed triboson systems for the CR6 control region in data (black markers) and simulated events (histograms). The simulation is corrected by SFs, and the QCD multijet background is scaled to the data yields.

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Figure 8-e:
Invariant mass ${m_{\mathrm {jj}}}$ distributions of the reconstructed triboson systems for the CR3 control region in data (black markers) and simulated events (histograms). The simulation is corrected by SFs, and the QCD multijet background is scaled to the data yields.

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Figure 9:
Post-fit distributions of the invariant mass of the reconstructed triboson system (${m_{\mathrm {jj}}}$, ${m_{\mathrm {jjj}}}$) in data (black markers) and simulation (histograms) for all SRs (SRs 1-3 in the left column and SRs 4-6 in the right column). Systematic uncertainties are indicated by the shaded bands. Signal examples are superimposed, normalized to the theoretical prediction for the production cross section of $ {{m}_{{\mathrm{W} _{\mathrm {KK}}}}} = $ 2.5 TeV with $ {{m}_{\mathrm{R}}} = $ 0.2 TeV (solid light blue line) and 1.25 TeV (dashed purple line). The bottom panels show the pull distributions, indicating the difference between the data and background prediction, divided by the statistical uncertainty in the background, with error bars representing the statistical uncertainty and shaded bands showing the one standard deviation systematic uncertainty, normalized by the statistical uncertainty.

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Figure 9-a:
Post-fit distributions of the invariant mass of the reconstructed triboson system (${m_{\mathrm {jj}}}$) in data (black markers) and simulation (histograms) for SR1. Systematic uncertainties are indicated by the shaded bands. Signal examples are superimposed, normalized to the theoretical prediction for the production cross section of $ {{m}_{{\mathrm{W} _{\mathrm {KK}}}}} = $ 2.5 TeV with $ {{m}_{\mathrm{R}}} = $ 0.2 TeV (solid light blue line) and 1.25 TeV (dashed purple line). The bottom panel shows the pull distributions, indicating the difference between the data and background prediction, divided by the statistical uncertainty in the background, with error bars representing the statistical uncertainty and shaded bands showing the one standard deviation systematic uncertainty, normalized by the statistical uncertainty.

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Figure 9-b:
Post-fit distributions of the invariant mass of the reconstructed triboson system (${m_{\mathrm {jjj}}}$) in data (black markers) and simulation (histograms) for SR4. Systematic uncertainties are indicated by the shaded bands. Signal examples are superimposed, normalized to the theoretical prediction for the production cross section of $ {{m}_{{\mathrm{W} _{\mathrm {KK}}}}} = $ 2.5 TeV with $ {{m}_{\mathrm{R}}} = $ 0.2 TeV (solid light blue line) and 1.25 TeV (dashed purple line). The bottom panel shows the pull distributions, indicating the difference between the data and background prediction, divided by the statistical uncertainty in the background, with error bars representing the statistical uncertainty and shaded bands showing the one standard deviation systematic uncertainty, normalized by the statistical uncertainty.

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Figure 9-c:
Post-fit distributions of the invariant mass of the reconstructed triboson system (${m_{\mathrm {jj}}}$) in data (black markers) and simulation (histograms) for SR2. Systematic uncertainties are indicated by the shaded bands. Signal examples are superimposed, normalized to the theoretical prediction for the production cross section of $ {{m}_{{\mathrm{W} _{\mathrm {KK}}}}} = $ 2.5 TeV with $ {{m}_{\mathrm{R}}} = $ 0.2 TeV (solid light blue line) and 1.25 TeV (dashed purple line). The bottom panel shows the pull distributions, indicating the difference between the data and background prediction, divided by the statistical uncertainty in the background, with error bars representing the statistical uncertainty and shaded bands showing the one standard deviation systematic uncertainty, normalized by the statistical uncertainty.

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Figure 9-d:
Post-fit distributions of the invariant mass of the reconstructed triboson system (${m_{\mathrm {jjj}}}$) in data (black markers) and simulation (histograms) for SR5. Systematic uncertainties are indicated by the shaded bands. Signal examples are superimposed, normalized to the theoretical prediction for the production cross section of $ {{m}_{{\mathrm{W} _{\mathrm {KK}}}}} = $ 2.5 TeV with $ {{m}_{\mathrm{R}}} = $ 0.2 TeV (solid light blue line) and 1.25 TeV (dashed purple line). The bottom panel shows the pull distributions, indicating the difference between the data and background prediction, divided by the statistical uncertainty in the background, with error bars representing the statistical uncertainty and shaded bands showing the one standard deviation systematic uncertainty, normalized by the statistical uncertainty.

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Figure 9-e:
Post-fit distributions of the invariant mass of the reconstructed triboson system (${m_{\mathrm {jj}}}$) in data (black markers) and simulation (histograms) for SR3. Systematic uncertainties are indicated by the shaded bands. Signal examples are superimposed, normalized to the theoretical prediction for the production cross section of $ {{m}_{{\mathrm{W} _{\mathrm {KK}}}}} = $ 2.5 TeV with $ {{m}_{\mathrm{R}}} = $ 0.2 TeV (solid light blue line) and 1.25 TeV (dashed purple line). The bottom panel shows the pull distributions, indicating the difference between the data and background prediction, divided by the statistical uncertainty in the background, with error bars representing the statistical uncertainty and shaded bands showing the one standard deviation systematic uncertainty, normalized by the statistical uncertainty.

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Figure 9-f:
Post-fit distributions of the invariant mass of the reconstructed triboson system (${m_{\mathrm {jjj}}}$) in data (black markers) and simulation (histograms) for SR6. Systematic uncertainties are indicated by the shaded bands. Signal examples are superimposed, normalized to the theoretical prediction for the production cross section of $ {{m}_{{\mathrm{W} _{\mathrm {KK}}}}} = $ 2.5 TeV with $ {{m}_{\mathrm{R}}} = $ 0.2 TeV (solid light blue line) and 1.25 TeV (dashed purple line). The bottom panel shows the pull distributions, indicating the difference between the data and background prediction, divided by the statistical uncertainty in the background, with error bars representing the statistical uncertainty and shaded bands showing the one standard deviation systematic uncertainty, normalized by the statistical uncertainty.

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Figure 10:
Expected (red dashed lines) and observed (solid black line) lower limits at 95% CL on the W$ _{\mathrm {KK}} $ and R resonance masses for the particular parameters of the explored model. The colored area indicates the observed upper limit on the product of the signal cross section and the branching fraction to three W bosons. The blue dashed line indicates the border between the merged and resolved decay topologies probed. A signal with ${{m}_{\mathrm{R}}}$ lower than 180 GeV is not considered in this search to maintain on-shell W bosons, while for $ {{m}_{{\mathrm{W} _{\mathrm {KK}}}}} > $ 3 TeV, we only consider $ {{m}_{\mathrm{R}}} > $ 0.06 ${{m}_{{\mathrm{W} _{\mathrm {KK}}}}} $.
Tables

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Table 1:
Summary of the selection requirements for each of the signal regions.

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Table 2:
Matching criteria used to place a jet in one of the SM jet categories (left four columns) or merged radion jet categories (right two columns). Each column lists the $\Delta R$ conditions demanded between the reconstructed jet (j) and the generator-level parton in order to match a jet with a particular jet substructure. Lower indexes enumerate partons and indicate the particle from whose decay they originate (e.g., $\mathrm{t} \to \mathrm{b} _\mathrm{t} \mathrm{q} _{1\mathrm{W}}\mathrm{q} _{2\mathrm{W}}$). Schematic diagrams for each jet type are shown below each column.

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Table 3:
Sources of systematic uncertainties accounted for in the analysis. The first three sets of uncertainty sources originate from the tagger calibration. It is also indicated whether the uncertainties are evaluated for background (B) and/or signal (S), whether the uncertainty affects shape and/or rate, and the total number of nuisance parameters used per source.
Summary
A search for resonances decaying in cascade via a radion R to three W bosons, ${\mathrm{W}_{\mathrm{KK}}} \to \mathrm{W}\mathrm{R} \to \mathrm{W}\mathrm{W}\mathrm{W}$, in the all-hadronic final state has been presented. The search is performed in proton-proton collision data at a center-of-mass energy of 13 TeV, corresponding to a total integrated luminosity of 138 fb$^{-1}$. The final states include two or three massive, large-radius jets containing the decay products of the hadronically decaying W bosons. The two-jet case corresponds to events where the radion decay products are reconstructed as a single merged jet. The three-jet case corresponds to events where each W boson from the radion decay is reconstructed as a single merged jet. In this analysis and the analysis in the single-lepton channel reported in Ref. [10], previously unexplored signatures are probed, using novel jet substructure techniques. In particular, a dedicated radion tagger based on a neural network, targeting simultaneously three different radion decay topologies, has been developed. This tagger has been calibrated with a novel "matrix method''. These techniques are also applicable to the identification of $\mathrm{H} \to4\mathrm{q}$ and $\mathrm{H} \to \mathrm{q}\mathrm{q}{\ell} \nu$ decays of Lorentz-boosted Higgs bosons. Exclusion limits are set on the product of the production cross section and the branching fraction to three W bosons in an extended warped extra-dimensional model. This result, together with an analysis in the single-lepton channel [10], are the first of their kind, and constrain the parameters of this model for the first time.
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Compact Muon Solenoid
LHC, CERN