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GGI October 2007. Red, Blue, and Green Things With Antennae. Peter Skands CERN & Fermilab In collaboration with W. Giele, D. Kosower. Giele, Kosower, PS : hep-ph/0707.3652 ; Sjöstrand, Mrenna, PS : hep-ph/0710.3820). Aims. We’d like a simple formalism for parton showers that allows:
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GGI October 2007 Red, Blue, and Green ThingsWith Antennae Peter Skands CERN & Fermilab In collaboration with W. Giele, D. Kosower Giele, Kosower, PS : hep-ph/0707.3652 ; Sjöstrand, Mrenna, PS : hep-ph/0710.3820)
Aims • We’d like a simple formalism for parton showers that allows: • Extensive analytical control, including systematic uncertainty estimates • Combining the virtues of CKKW (Tree-level matching with arbitrarily many partons) with those of MC@NLO (Loop-level matching) • To eventually go beyond Leading-NC+Leading-Log? • Two central ingredients • A general QCD cascade based on exponentiated antennae • a generalized “ARIADNE” • Extending the ideas of subtraction-based ME/PS matching • “MC@NLO” with antennae • Plus works for more than 1 hard leg Simultaneous matching to several tree- or 1-loop matrix elements Red, Blue, and Green Things with Antennae
Principal virtues Stochastic error O(N-1/2) independent of dimension Universally applicable Fully exclusive final states (for better or for worse – cf. the name ‘Pythia’ … ) no separate calculation needed for each observable Have become indispensable for experimental studies. Exclusivity possible to calculate a detector response event by event. Monte Carlo Basics • High-dimensional problem (phase space) • Monte Carlo integration • + Formulation of fragmentation as a “Markov Chain”: • Parton Showers: iterative application of perturbatively calculable splitting kernels for n n+1 partons ( = resummation of soft/collinear logarithms) Ordered evolution. • Hadronization:iteration of X X + hadron, at present according to phenomenological models, based on known properties of QCD, on lattice, and on fits to data. Red, Blue, and Green Things with Antennae
Basics • Iterative (Markov chain) formulation = parton shower • Generates leading “soft/collinear” corrections to any process, to infinite order in the coupling • The chain is ordered in an “evolution variable”: e.g. parton virtuality, jet-jet angle, transverse momentum, … • a series of successive factorizations the lower end of which can be matched to a hadronization description at some fixed low hadronization scale ~ 1 GeV Red, Blue, and Green Things with Antennae
Improved Event Generators • Step 1: A comprehensive look at the uncertainty • Vary the evolution variable (~ factorization scheme) • Vary the radiation function (finite terms not fixed) • Vary the kinematics map (angle around axis perp to 23 plane in CM) • Vary the renormalization scheme (argument of αs) • Vary the infrared cutoff contour (hadronization cutoff) • Step 2: Systematically improve it • Understand the importance of each and how it is canceled by • Matching to fixed order matrix elements • Higher logarithms, subleading color, etc, are included • Step 3: Write a generator • Make the above explicit (while still tractable) in a Markov Chain context matched parton shower MC algorithm Subject of this talk Red, Blue, and Green Things with Antennae
Example: Z decays • Dependence on evolution variable Red, Blue, and Green Things with Antennae
Example: Z decays • Dependence on evolution variable Using αs(pT), pThad = 0.5 GeV αs(mZ) = 0.137 Nf = 2 for all plots Note: the default Vincia antenna functions reproduce the Z3 parton matrix element; Pythia8 includes matching to Z3 Beyond the 3rd parton, Pythia’s radiation function is slightly larger, and its kinematics and hadronization cutoff contour are also slightly different Red, Blue, and Green Things with Antennae
The main sources of uncertainty • Things I can tell you about: • Non-singular terms in the radiation functions • The choice of renormalization scale • (The hadronization cutoff) • Things I can’t (yet) tell you about • Effects of sub-leading logarithms • Effects of sub-leading colours • Polarization effects Red, Blue, and Green Things with Antennae
VINCIA shower Final-state QCD cascades At GGI completed (massless) quarks Plug-in to PYTHIA 8.1 (C++) + working on initial state … So far: 2 different shower evolution variables: pT-ordering (~ ARIADNE, PYTHIA 8) Mass-ordering (~ PYTHIA 6, SHERPA) For each: an infinite family of antenna functions Laurent series in the branching invariants: singular part fixed by QCD, finite terms arbitrary Shower cutoff contour: independent of evolution variable IR factorization “universal” Phase space mappings: 2 different choices implemented Antenna-like (ARIADNE angle) or Parton-shower-like: Emitter + longitudinal Recoiler VINCIA VIRTUAL NUMERICAL COLLIDER WITH INTERLEAVED ANTENNAE Giele, Kosower, PS : hep-ph/0707.3652 Gustafson, Phys. Lett. B175 (1986) 453 1 Dipoles – a dual description of QCD 2 3 Lönnblad, Comput. Phys. Commun. 71 (1992) 15. Red, Blue, and Green Things with Antennae
The Pure Shower Chain “X + nothing” “X+something” Dipole branching phase space Giele, Kosower, PS : hep-ph/0707.3652 • Shower-improved distribution of an observable: • Shower Operator, S (as a function of “time” t=1/Q) • n-parton Sudakov • Focus on antenna-dipole showers Red, Blue, and Green Things with Antennae
Dipole-Antenna Functions Giele, Kosower, PS : hep-ph/0707.3652 • Starting point: “GGG” antenna functions, e.g., • Generalize to arbitrary Laurent series (at GGI): • Can make shower systematically “softer” or “harder” • Will see later how this variation is explicitly canceled by matching • quantification of uncertainty • quantification of improvement by matching • (In principle, could also “fake” other showers) Gehrmann-De Ridder, Gehrmann, Glover, JHEP 09 (2005) 056 yar = sar / si si = invariant mass of i’th dipole-antenna Singular parts fixed, finite terms arbitrary Red, Blue, and Green Things with Antennae
Matching Fixed Order (all orders) Pure Shower (all orders) Matched shower (including simultaneous tree- and 1-loop matching for any number of legs) Loop-level “virtual” matching term for X+k Tree-level “real” matching term for X+k Red, Blue, and Green Things with Antennae
Tree-level matching to X+1 • First order real radiation term from parton shower • Matrix Element (X+1 at LO ; above thad) Matching Term: • variations in finite terms (or dead regions) in A canceled by matching at this order • (If A too hard, correction can become negative negative weights) • Subtraction can be automated from ordinary tree-level ME’s + no dependence on unphysical cut or preclustering scheme (cf. CKKW) -not a complete order: normalization changes (by integral of correction), but still LO Inverse kinematics map = clustering Red, Blue, and Green Things with Antennae
1-loop matching to X • NLO “virtual term” from parton shower (= expanded Sudakov: exp=1 - … ) • Matrix Elements (unresolved real plus genuine virtual) • Matching condition same as before (almost): • May be automated ?, anyway: A is not shower-specific • Currently using Gehrmann-Glover (global) antenna functions • You can choose anything as long as you can write it as a Laurent series Tree-level matching just corresponds to using zero • (This time, too small A correction negative) Red, Blue, and Green Things with Antennae
From to ! • The unknown finite terms are a major source of uncertainty • DGLAP has some, GGG have others, ARIADNE has yet others, etc… • They are arbitrary (and in general process-dependent) Using αs(MZ)=0.137, μR=1/4mdipole, pThad = 0.5 GeV Red, Blue, and Green Things with Antennae
Tree-level matching to X+1 • First order real radiation term from parton shower • Matrix Element (X+1 at LO ; above thad) Matching Term: • variations in finite terms (or dead regions) in A canceled by matching at this order • (If A too hard, correction can become negative negative weights) Red, Blue, and Green Things with Antennae
Phase Space Population Positive correction Negative correction Red, Blue, and Green Things with Antennae
From to ! • The unknown finite terms are a major source of uncertainty • DGLAP has some, GGG have others, ARIADNE has yet others, etc… • They are arbitrary (and in general process-dependent) Using αs(MZ)=0.137, μR=1/4mdipole, pThad = 0.5 GeV Red, Blue, and Green Things with Antennae
Note about “NLO” matching • Shower off virtual matching term uncanceled O(α2) contribution to 3-jet observables (only canceled by 1-loop 3-parton matching) • While normalization is improved, shapes are not (shape still LO) Using αs(MZ)=0.137, μR=1/4mdipole, pThad = 0.5 GeV Red, Blue, and Green Things with Antennae
What to do next? • Go further with tree-level matching • Demonstrate it beyond first order (include H,Z 4 partons) • May require “true Markov” evolution and/or “sector” antenna functions? • Automated tree-level matching (w. Rikkert Frederix (MadGraph) + …?) • Go further with one-loop matching • Demonstrate it beyond first order (include 1-loop H,Z 3 partons) • Should start to see cancellation of ordering variable and renormalization scale • Should start to see stabilization of shapes as well as normalizations • Extend the formalism to the initial state • Extend to massive particles • Massive antenna functions, phase space, and evolution • Investigate possibilities for going beyond traditional LL showers: • Subleading colour, NLL, and polarization Red, Blue, and Green Things with Antennae
Last Slide Thanks to the organizers • A. Brandhuber (Queen Mary University, London), • V. Del Duca (INFN, Torino), • N. Glover (IPPP, Durham), • D. Kosower (CEA, Saclay), • E. Laenen (Nikhef, Amsterdam), • G. Passarino (University of Torino), • W. Spence (Queen Mary University, London), • G. Travaglini (Queen Mary University, London), • D. Zeppenfeld (University of Karlsruhe) Red, Blue, and Green Things with Antennae